METHOD AND SYSTEM FOR AUTOMATED GRADING AND TRADING OF NUMISMATICS AND TRADING CARDS
20230044043 · 2023-02-09
Assignee
Inventors
Cpc classification
International classification
Abstract
A method, system and platform for implementing an automated grading system that can reliably and efficiently grade a trading object such as numismatics and trading cards are disclosed. Via adopting industry-standard grading scales, the present computer-assisted numismatics and sports trading card platform utilizes various techniques, such as laser scanning, machine vision, smartphone IOS and Android native installed object recognition, neural network models, blockchain, NFT with smart contracts, digital fingerprints identified as intellectual property and royalties to enable consistent grading and trading of a large quantity of trading objects. It can further enable authenticity verification, and transactions of the graded trading objects.
Claims
1. A computer-implemented method for automated grading of a trading object, comprising: scanning a plurality of reference objects; generating a plurality of reference images and correlating the reference images to a standard grading system; generating a reference database based on the correlated reference images; receiving one or more images of a trading object; and determining a grading score of the trading object based on the one or more images and the reference database.
2. The computer-implemented method of claim 1, wherein the correlated reference images comprise height, color and pixelation measures of the trading object.
3. The computer-implemented method of claim 1, wherein the generating a plurality of reference images and correlating the reference images to a standard grading system further comprises generating a plurality of reference height and color data and correlating the reference height and color data to a standard grading system.
4. The computer-implemented method of claim 1, wherein the trading object is one of a coin, a sport trading card, or a predetermined trading object.
5. The computer-implemented method of claim 2, wherein the plurality of reference images comprises one or more of laser scanning images, machine vision images and mobile computing device images.
6. The computer-implemented method of claim 1, wherein the grading score is further associated with a grading chart and digital fingerprint to visualize grading factors.
7. The computer-implemented method of claim 1, wherein the standard grading system comprises one of a ANA/NGC/PCGS/Sheldon Grading Scale, a Beckett/PSA Grading Scale, or an industry-standard grading system.
8. The computer-implemented method of claim 1, wherein the one or more images of the trading object are captured by a mobile computing device.
9. A computer system, comprising: at least one processor; and memory including instructions that, when executed by the at least one processor, cause the computer system to: scan a plurality of reference objects; generate a plurality of reference images and correlate the reference images to a standard grading system; generate a reference database based on the correlated reference images comprising height, color and pixelation measurement data; receive one or more images of a trading object; and determine, using a neural network model, a grading score of the trading object based on the one or more images and the reference database.
10. The computer system of claim 9, wherein the neural network model is a deep neural network (DNN) that has been trained with pre-processed datasets.
11. The computer system of claim 9, wherein the plurality of reference images comprises one or more of laser scanning images, machine vision images and mobile computing device images.
12. The computer system of claim 9, wherein the grading score is further associated with a grading chart and digital fingerprint to visualize grading factors.
13. The computer system of claim 9, further comprising instructions that, when executed by the at least one processor, cause the computer system to: enable a transaction of the trading object via at least one of a conventional marketplace or a NFT/Metaverse auction or a storefront platform.
14. The computer system of claim 13, further comprising instructions that, when executed by the at least one processor, cause the computer system to: provide data validation for the transaction of the trading object.
15. The computer system of claim 9 further comprising instructions that, when executed by the at least one processor, cause the computer system to: generate a population report of the trading object based on one or more databases.
16. The computer system of claim 15, further comprising instructions that, when executed by the at least one processor, cause the computer system to: retrieve sales data of at least one similar trading object.
17. The computer system of claim 16, further comprising instructions that, when executed by the at least one processor, cause the computer system to: determine an appraisal price of the trading object at least based on the grading score, the population report and the sales data.
18. A computer-implemented method for automated grading of a trading object, comprising: capturing, via at least one camera of a mobile device, one or more images of a trading object; transmitting the one or more images of the trading object to a server; and receiving a grading score of the trading object from the server, wherein the server is configured to: scanning a plurality of reference objects; generating a plurality of reference images comprising height, color and pixelation measurement data and correlating the reference images to a standard grading system; generating a reference database based on the correlated reference images; and determining the grading score of the trading object.
19. The computer-implemented method of claim 18, wherein the grading score is determined by a neural network model that has been trained with pre-processed datasets.
20. The computer-implemented method of claim 18, further comprising: determining an appraisal price of the trading object at least based on the grading score, digital fingerprint, a population report of the trading object based on one or more databases and sales data of at least one similar trading object.
Description
DESCRIPTION OF DRAWINGS
[0028] The patent or application file contains at least one drawing executed in color. Copies of this patent or patent application publication with color drawing(s) will be provided by the Office upon request and payment of the necessary fee.
[0029] The present subject matter is illustrated by way of example, and not by way of limitation, in the figures of the accompanying drawings in which:
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DETAILED DESCRIPTION
[0041] In the following description, for purposes of explanation, numerous specific details are set forth in order to provide a thorough understanding of the present subject matter. It will be apparent, however, to one skilled in the art that the present subject matter may be practiced without some of these specific details. In addition, the following description provides examples, and the accompanying drawings show various examples for the purposes of illustration. Moreover, these examples should not be construed in a limiting sense as they are merely intended to provide examples of embodiments of the subject matter rather than to provide an exhaustive list of all possible implementations. In other instances, well-known structures and devices are shown in block diagram form in order to avoid obscuring the details of the disclosed features of various described embodiments.
[0042] The present subject matter pertains to improved approaches to an automated computer-assisted numismatics and sports trading card platform and system by adopting industry-standard grading scales, the present computer-assisted numismatics and sports trading card platform utilizes various techniques, such as laser and machine vision object recognition, neural network models, blockchain, NFT with smart contract to enable consistent grading of a large quantity of trading objects. It can further enable authenticity verification and transactions of the graded trading objects via at least one of a conventional marketplace or a NFT/Metaverse auction or a storefront platform.
[0043] A method and system for implementing an automated, repeatable grading system that uses internationally accepted ANA, NGC, PCGS, Sheldon and Beckett and PSA Grading Scales are disclosed. The system comprises an automated computer-assisted Numismatics and Sports Trading Card platform using machine vision systems and other referenced technologies capable of consistently grading thousands of coins and sports trading cards per day, which will stabilize and promote growth within the industries referenced. The utilization of Smartphone IOS and Android, Blockchain technologies and NFT with smart contract, digital fingerprints, intellectual property and royalties targets encapsulated and raw coins or ungraded coins and ungraded sports trading cards, which can potentially enable millions of users/buyers/sellers with instant ability to determine identity, grade and value their objects. It further enables them to list, sell, authenticate the object and transaction preceding and post-sale and purchase the objects from a smartphone application.
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[0045] Server 101 can comprise a number of modules or units to implement functions of the present subject matter. According to some embodiments, server 101 can implement functions related to central processing 102, DNN model 103, reference data 104, trading object data 105, administrative intake, query and output 106, and pre/post sale data validation 107. Other relevant functions, such as DNN model training and data processing, can also be implemented by campaign management server 101.
[0046] Network 114 can comprise a single network or a combination of multiple networks, such as the Internet or intranets, wireless cellular networks, local area network (LAN), wide area network (WAN), WiFi, Bluetooth, near-field communication (NFC), etc. Network 114 can comprise a mixture of private and public networks or one or more local area networks (LANs) and wide-area networks (WANs) that may be implemented by various technologies and standards.
[0047] Mobile computing device 112 can be a personal, portable computing device that has at least one microphone for receiving voice commands and at least one network interface for wireless connection. Examples of mobile computing device 112 include a personal digital assistant, a mobile or a smartphone, a wearable device such as a smartwatch, a smart glass, a tablet computer, or an automobile. Mobile computing device 112 can have at least one microphone, and at least one camera as I/O (input/output) devices. Mobile computing device 112 can have at least one network interface configured to connect to network 114.
[0048] According to some embodiments, automated grading system 100 can receive a number of reference objects with known grading scores. Reference data 104, including reference images or data sources, can be generated based on these reference objects via various imaging techniques, such as laser scanning, machine vision and mobile computing device images. For example, a data source can comprise measured height and color, images and pixelation data and images captured by a laser scanner, machine vision system and smartphone IOS and Android device for 500 coins of the same basic type, e.g., all Wheat cents.
[0049] According to some embodiments, the system can generate a reference database based on the image data and the corresponding grading scores and save it in data storage 113. Various object recognition techniques can be adopted for feature extraction and processing of the data sources. For example, the system can use an object-based approach to classify the segments of the reference images, wherein each segment comprises a group of pixels with similar spectral, spatial, and/or texture attributes. The reference database can comprise, for example, extracted features or characteristics of the reference images. According to some embodiments, the reference database can receive a grading query with image data of an ungraded trading object, and output its estimated grading score.
[0050] According to some embodiments, the system can train a DNN model 103 to predict or assign a grading score for the ungraded trading object. For example, the system can train the DNN model with pre-processed dataset, e.g., extracted feature vectors, based on the multiple data sources. Other artificial intelligence or machine learning models that can provide a framework to automate the grading process of a trading object can also be adopted. According to some embodiments, attributes learning/assignments as +/− values to base grades can be deployed to provide a framework to automate the grading process of a trading object.
[0051] According to some embodiments, a user 118 can use one or more cameras of mobile computing device 112 to snap images of a trading object 116, such as a coin, to generate trading object data 105. Through executing administrative intake 106, a grading application executing on the mobile computing device 112 can transmit trading object data 105 to server 101 via network 114. Next, the system can execute administrative query 106 to generate an output for the estimated grading score of trading object 116 via, for example, a trained DNN model 103.
[0052] According to some embodiments, in addition to the predicted grading score, server 101 can automatically provide a price estimation of the trading object at least based on the determined grade. Other factors, such as the estimated population or existing number of the trading object, the previous sales price of a similar trading object, can also be used to provide the price estimation. In addition, the present subject matter can enable online transactions or sales of a trading object. The present subject matter can also provide data validation for the transaction of the trading object.
[0053] In addition, server 101 can determine the authenticity of the ungraded trading object by verifying trading object data 105 with the authentic reference objects, or by another neural network model that has been trained with the requisite datasets.
[0054] According to some embodiments, the system can implement additional blockchain functionalities 120 related to the evaluation, trading and transactions of the trading object. Example of blockchain functionalities 120 can comprise NFT minting and applications, NFT marketplaces, crypto currency exchanges, smart contracts, royalties, Metaverse for commerce.
[0055] In addition, according to some embodiments, the system can adopt a DNN model with AI runtime engine for data and image processing including prediction, classification and clustering to identify candidate model architectures, relative levels of model performance and the relative influences of feature vector elements, all of which are designed for decompile, re-implement and reliably assign grading scores pursuant to multiple industry standard grading scales. Furthermore, the DNN model can enable prototype applications developed for IOS/Android applications on mobile devices. These applications can adopt native use of megapixel cameras and GUI functionalities for conventional markets or emerging markets such as NFTs, smart contracts, royalties, Blockchain, NFT marketplaces and metaverse, crypto currencies and crypto currency exchanges for commerce purpose.
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[0058] According to some embodiments, the system can further generate a digital fingerprint and grading report that can provides more grading details. In addition to the digital fingerprint and grading report other grading factors, such as the evaluated measurements, can be provided in the digital fingerprint and in the grading report.
[0059] According to some embodiments, the system can determine an appraisal price of the trading object based on a number of factors, such as the assigned grading score, a population report of the trading object based on one or more databases and sales data of at least one similar trading object. All these data can be retrieved from one or more databases associated with the system.
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[0062] At step 506, the system can generate a reference database based on the correlated reference images. To compile the reference database, various object recognition techniques can be adopted for feature extraction and processing of the data sources. For example, the system can use an object-based approach to classify the segments of the reference images, wherein each segment comprises a group of pixels with similar spectral, spatial, and/or texture attributes. The reference database can comprise, for example, extracted features or characteristics of the reference images.
[0063] According to some embodiments, a neural network model, e.g., a DNN model, can be trained with pre-processed datasets, e.g., feature vectors, based on the image data of the reference objects (input) and the known grading scores (output).
[0064] At step 508, the system can receive images of a trading object. For example, the trading object's image taken by a mobile computing device. At step 510, the system can determine a grading score of the trading object by query the established database. According to some embodiments, the trained model can be used to predict the grading score of the ungraded trading object.
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[0066] At step 606, the system can train a DNN model with pre-processed datasets, e.g., feature vectors, based on the image data of the reference objects (input) and the known grading scores (output). At step 608, the system can receive mobile phone images of a trading object and determine a grading score of a trading object with the trained DNN model.
[0067] At step 610, the system can further determine an appraisal price of the trading object based on a number of factors. For example, in addition to the assigned grading score, the system can generate or retrieve a population report of the trading object in a target market; the system can query one or more databases to obtain sales data of at least one similar trading object. All these factors can be used to determine the appraisal price. In addition, a neural network model can be trained with relevant sales data to predict the likely price of a trading object.
[0068] According to some embodiments, the system can determine the authenticity of the ungraded trading object by verifying the received image data with the authentic reference objects, or by another neural network model that has been trained with the requisite datasets.
[0069] According to some embodiments, the present method and system can decompile, re-implement and reliably assign grading scores in accordance with the following exemplary industry standards.
[0070] Coin Grading—The 1-70 Point Sheldon Coin Grading Scale
[0071] Numismatic coins are graded by the three leading third-party grading services: PCGS, NGC and ANACS. Each service will grade a coin between 1 and 70 based on the Sheldon Scale, developed by Dr. William Sheldon in 1949. It is the standard for the rare coin industry.
[0072] Sheldon Scale for Grading U.S. Coins
[0073] Poor-1 or P-1 (Poor)
[0074] Fair-2 or FR-2 (Fair)
[0075] AG-3 (About Good)
[0076] G-4 (Good)
[0077] G-6 (Good-plus)
[0078] VG-8 (Very Good)
[0079] F-12 (Fine)
[0080] VF-20 (Very Fine)
[0081] VF-30 (Good Very Fine)
[0082] EF-40 (Extremely Fine)
[0083] XF-45 (Choice Extremely Fine)
[0084] AU-50 (About Uncirculated)
[0085] AU-55 (Good About Uncirculated)
[0086] AU-58 (Choice About Uncirculated)
[0087] MS-60-MS-70 (Mint State)
[0088] Large value differences between even one grading level are common and particularly on condition rarities. Mint State in particular can jump between MS-63 and MS-64 and MS-65, depending on the coin issue.
[0089] Proofs—Proofs are a type of coins, and generally fall into the Proof-60-Proof-70 numerical grading, since most proofs have not been circulated.
[0090] In addition to grading numerically, attributes present are added for certified coins, including PL for Proof Like, DMPL/DPL for Deep Mirror Proof Like, DCAM/UC for Deep Cameo/Ultra Cameo as well as certain color attributes such as used in Lincoln Cents including Brown, Red Brown and Red. There are numerous additional attributes not referenced but are part of the overall grade and valuation metrics. Applied technologies capture and define all attributes and are assigned accordingly.
[0091] VAR—Range Variable Assigned to Respective Grade(s)
[0092] Nano level topography measurement outputs calibrated with existing PCGS, NGC encapsulated, and graded numismatics and Nano level outputs calibrated to PSA and Beckett graded and encapsulated sports trading cards with a minimum of 20 scan outputs per each grade within each respective system to ensure repeatability and grade accuracy. Scan outputs start at the highest possible encapsulated graded numismatics and/or encapsulated sports trading cards and ranges are established by comparative analysis of outputs from identified master samples. All master samples at each successive grade level are preserved and stored in a bank vault under the control of Coin and Card Auctions, Inc., as reference materials.
[0093] Card Grading—The PSA Grading Scale
[0094] Sports and trading cards, i.e., any collectible cards, are typically graded based on the PSA Grading Scale, which is developed by Professional Sports Authenticator (PSA). The following is an exemplary PSA grading scale that can be referenced to and incorporated into the present subject matter.
[0095] Psa Grading Scale
[0096] GEM-MT 10 (Gem Mint):
[0097] A PSA GEM-MT 10 is a virtually perfect card, from its four sharp corners and no creasing to its sharp focus and full original gloss intact. A card that earns this distinction must be free of any staining, though allowances are made for slight printing imperfections if they don't impair the card's overall appeal. The image must be centered on the card within a tolerance not to exceed 55/45 to 60/40 percent on the front and 75/25 percent on the reverse.
[0098] MINT 9 (Mint):
[0099] A PSA MINT 9 is a superb condition card that exhibits only one of the following minor flaws: a very slight wax stain on the reverse, a minor printing imperfection or slightly off-white borders. Centering must be approximately 60/40 to 65/35 or better on the front and 90/10 or better on the reverse.
[0100] NM-MT 8 (Near Mint-Mint):
[0101] A PSA NM-MT 8 is a super high-end card that appears Mint 9 at first glance, but upon closer inspection can exhibit one or more of the following: a very slight wax stain on the reverse, slightest fraying at one or two corners, a minor printing imperfection and/or slightly off-white borders. Centering must be approximately 65/35 or 70/30 or better on the front and 90/10 or better on the reverse.
[0102] NM 7 (Near Mint):
[0103] A PSA NM 7 is a card showing slight surface wear visible only upon close inspection. There may be slight fraying on some corners. Picture focus may be slightly out-of-register although a minor printing blemish is acceptable. Slight wax staining is acceptable on the back of the card only. Most of the original gloss is retained. Centering must be approximately 70/30 to 75/25 or better on the front and 90/10 or better on the reverse.
[0104] EX-MT 6 (Excellent-Mint):
[0105] A PSA EX-MT 6 card may have visible surface wear or a printing defect which does not detract from its overall appeal. A very slight scratch may be detected only upon close inspection. Corners may have slightly graduated fraying and picture focus may be slightly out-of-register. Card may show some loss of its original gloss, may have minor wax stain on reverse, may exhibit very slight notching on edges and may also show some off-whiteness on borders. Centering must be 80/20 or better on the front and 90/10 or better on the reverse.
[0106] EX 5 (Excellent):
[0107] On a PSA EX-5 card, minor rounding of the corners is becoming evident. Surface wear or printing defects are more visible. There may be minor chipping on edges. Loss of original gloss will also be more apparent. Focus of picture may be slightly out of register. Several light scratches may be visible upon close inspection but don't detract from the appeal of the card. Card may show some off-whiteness of borders. Centering must be 85/15 or better on the front and 90/10 or better on the back.
[0108] VG-EX 4 (Very Good-Excellent):
[0109] A PSA VG-EX 4 card's corners may be slightly rounded and surface wear is noticeable. The card may show light scuffing or scratches with some original gloss still intact. Borders may be slightly off-white and light creasing visible. Centering must be 85/15 or better on the front and 90/10 or better on the back.
[0110] VG 3 (Very Good):
[0111] A PSA VG 3 card reveals some rounding of the corners, although nothing extreme. Some surface wear is evident as well as light scuffing and/or scratches. The focus on the card may be somewhat off-register and much of the card's original gloss may be lost. Other elements that may lead to a grade of VG 3 include a slight stain may be showing on the obverse as well as wax staining on the reverse. Centering must be approximately 90/10 or better on the front and back.
[0112] GOOD 2 (Good):
[0113] A PSA Good 2 card's corners will show accelerated rounding and surface wear is obvious. There might also be several creases on the card as well as scratching, scuffing, light staining or even chipping on the obverse. As for the card's original gloss, it might be completely gone. The card may also show considerable discoloration. Centering must be approximately 90/10 or better on the front and back.
[0114] FR 1.5 (Fair):
[0115] A PSA Fair 1.5 card, denoting a half-grade, shows extreme wear possibly even affecting the framing of the picture. The surface of the card will no doubt show advanced signs of wear including scuffing, scratching, chipping, and staining. The picture on the card may possibly be out of register and its borders may have become brown and dirty. To receive a Fair grade, a card must be fully intact, which means no missing pieces whatsoever (major tear or missing corner, etc.). Centering must be 90/10 or better on the front and back.
[0116] PR 1 (Poor):
[0117] A PSA Poor 1 card will exhibit many of the same qualities of a PSA Fair 1.5 card although the defects may have advanced to such a serious stage that the card's eye appeal has completely vanished. A card with this designation may also be missing one or two small pieces (corners) and may exhibit major creasing. In addition, extreme discoloration or even dirtiness might make even it difficult to simply identify the issue.
EXEMPLARY TERMS, CONCEPTS AND TECHNOLOGIES
[0118] The following terms, concepts and technologies can be utilized as examples to implement one or more embodiments of the present subject matter. However, various unlisted terms, concepts and technologies can be adopted. In addition, the following description, for purposes of explanation, used specific nomenclature to provide a thorough understanding of the embodiments of the invention. However, it will be apparent to one skilled in the art that the specific details are not required in order to practice the embodiments of the invention.
[0119] Conventional Marketplace and NFT Marketplace/Metaverse
[0120] MySQL Database
[0121] Domain name: Coin and Card Auctions, Inc (primary) and multiple subdomains/domains
[0122] Application structure CUSTOM—Auction Format 500 User Storefronts per database per each domain plus unlimited non storefront users plus unlimited store (non-auction format) dealers/licensed businesses and NFT/Metaverse Marketplace
[0123] Platform—Linux OS
[0124] Tech Stack, Website, CRM, —Primary DNS or Sub domain with integrations to HubSpot, Shopify, Google Ads, Facebook, Google Search Counsel, Google Analytics, Hotjar, JustUno, Zapier, PandaDoc, Stripe, DNN and AI runtime engine
[0125] 3D Laser Scan topographies and pixilation imagery outputs conversions to ANA/NGC/PCGS and 70-point Sheldon Grading Scale and Beckett and 10-point PSA Grading Scale Equivalents.
[0126] Machine Vision Systems outputs interface and conversion to 3D Laser Scan equivalents of ANA/PCGS/NGC/Sheldon and Beckett and PSA Grading systems calculated as attributes with additional 10-12-pixel digital topography and pixilation imagery designed for NFT and smart contract over blockchain for pre and post database registration and validation at both pre and post listing, sale and purchase including data and images, estimated value, sales comparable, downloadable certification. chain and transfer of title.
[0127] UV-VIS spectrophotometer—Measure and compare outputs of Color measurements based on spectral reflectance with wavelength range from 380 nm to 780 nm equivalent to wavelengths sensed by the human eye standards of color as measurement converted within Sheldon and PSA grading numismatics and sports trading card grading guidelines to the respective attribute equivalent. Use of repeatable output precise nanometer color increments create spectral curve for unique identification used in conjunction with scan topographies. Spectral curve range of color identified as numismatics or sports trading card attribute equivalents assigned an attribute value as part of an overall final grade.
[0128] Gram Scale—used for weight analysis—compares known weight to actuals and converts to formulated range as component of grade attribute assignment
[0129] Glossmeter outputs measured as specular reflection gloss of coin(s) surfaces by projecting a beam of light at a fixed intensity and angle onto a surface and measuring the amount of reflected light at an equal but opposite angle. Gloss Range values based on 60° Value with High Gloss: >70 GU, Low Gloss: <10 GU, Medium Gloss: 10-70 GU converted to numismatics equivalents equal to PL, DMPL and other numismatics and or sports trading card grade equivalents as grade attributes.
[0130] X-Ray Fluorescence (XRF) technology converted to attribute values as a non-destructive analytical method used to determine elemental concentrations in various materials. Test used to determine gold, silver and/or alloys. Attributes assigned designed to detect counterfeits.
[0131] Magnet used in combination with XRF and 3D or Machine Vision and Digital scales to detect counterfeits. Each magnet output assigned an attribute value used in part to complete grading process.
[0132] Marketplace unique to numismatics and sports trading card industries. Set apart from competitors by smaller more versatile footprint configured with not more than 500 Storefront Users and unlimited non storefront and business owners. Configuration provides auction style venue to storefronts and non-storefronts at greatly reduced costs to consumer including a predetermined price monthly recurring for storefronts and a percentage of sales for non-storefronts. Storefronts enjoy a suite of value-added benefits including data mining producing comprehensive data accumulation across numerous websites at a single location, data scraping provides users the ability to bulk data capture existing user data on competitor websites with bulk posting and uploads to the Coin and Card Auction storefront without having to remove items from an existing venue. Custom marketing allows unique marketing options to storefront users with keyword specific paid marketing that funnels buyers or sellers directly to the storefront user's storefront. Storefronts can be sold by the storefront users and storefront values are similar in nature to a stand-alone business model valuation due to Coin and Card Auction proprietary marketing and management tools. The conventional and NFT/Metaverse marketplace is designed to operate on a blockchain and to assimilate, store and retrieve via query significant third-party grading data in accordance of the technologies applied as referenced above in this document.
[0133] Blockchain distributed layer technology—smart contract, royalties, and non-fungible tokens digitized data including but not limited to digitized topography, cryptocurrency and cryptocurrency exchanges and wallets, digital fingerprints and connective mechanisms and pixilated images and outputs.
[0134] Mobile applications include smartphone and other mobile devices containing a 10-12-megapixel camera or its equivalents. Users take images of raw or encapsulated coins and/or sports trading cards and (fee based) immediately retrieve identifying data from stored data contained in the database of the coin(s) and/or sports trading cards. Images taken by users are used to query stored data and compare images to Sheldon and or PSA Graded masters. Coins and or sports trading cards data is available for coin and/or sports trading card grade with downloadable certification. Smartcard and NFT technologies over blockchain provide a secure means to effect sale/transfer/purchase at point of sale and point of purchase along with chain of title and transfer of title. Both parties to any side of a transaction are able to validate the coin/sports trading card pre and post-sale independently of the other party simply by use of their own smartphone camera and a query against stored data on the databases.
[0135] Computer Assisted Numismatics Sports Trading Card Automated Grading Platform Technology developed is designed for a grading platform capable of grading for example, a minimum of 1,000 coins or sports trading cards per day. Each database while standalone is fully integrated and networked on a blockchain allowing consumers the ability to communicate freely worldwide. Blog, education, and open communications are designed to encourage user interaction and low pricing models are designed to increase user net operating income. The objective is to eventually move away from the auction format into a store format as the auction dynamics are self-destructive to growing the numismatics and sports trading card industries. Blockchain registered shared consumer/business royalties as a function of marketplace cost tied to intellectual properties unique to digital fingerprints creates a mechanism of perpetual royalties for commerce transaction on NFT/Metaverse for future generations to come. Each storefront offers its user the ability to embed a video to promote their business or products and each storefront has a unique custom-made individual graphic storefront design.
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[0140] Examples shown and described use certain spoken languages. Various embodiments work, similarly, for other languages or combinations of languages. Examples shown and described use certain domains of knowledge and capabilities. Various systems work similarly for other domains or combinations of domains.
[0141] Some systems are screenless, such as an earpiece, which has no display screen. Some systems are stationary, such as a vending machine. Some systems are mobile, such as an automobile. Some systems are portable, such as a mobile phone. Some systems are for implanting in a human body. Some systems comprise manual interfaces such as keyboards or touchscreens.
[0142] Some systems function by running software on general-purpose programmable processors (CPUs) such as ones with ARM or x86 architectures. Some power-sensitive systems and some systems that require especially high performance, such as ones for neural network algorithms, use hardware optimizations. Some systems use dedicated hardware blocks burned into field-programmable gate arrays (FPGAs). Some systems use arrays of graphics processing units (GPUs). Some systems use application-specific-integrated circuits (ASICs) with customized logic to give higher performance.
[0143] Some physical machines described and claimed herein are programmable in many variables, combinations of which provide essentially an infinite variety of operating behaviors. Some systems herein are configured by software tools that offer many parameters, combinations of which support essentially an infinite variety of machine embodiments.
[0144] Several aspects of implementations and their applications are described. However, various implementations of the present subject matter provide numerous features including, complementing, supplementing, and/or replacing the features described above. In addition, the foregoing description, for purposes of explanation, used specific nomenclature to provide a thorough understanding of the embodiments of the invention. However, it will be apparent to one skilled in the art that the specific details are not required in order to practice the embodiments of the invention.
[0145] It is to be understood that even though numerous characteristics and advantages of various embodiments of the present invention have been set forth in the foregoing description, together with details of the structure and function of various embodiments of the invention, this disclosure is illustrative only. In some cases, certain subassemblies are only described in detail with one such embodiment. Nevertheless, it is recognized and intended that such subassemblies may be used in other embodiments of the invention. Practitioners skilled in the art will recognize many modifications and variations. Changes may be made in detail, especially matters of structure and management of parts within the principles of the embodiments of the present invention to the full extent indicated by the broad general meaning of the terms in which the appended claims are expressed.
[0146] Having disclosed exemplary embodiments and the best mode, modifications and variations may be made to the disclosed embodiments while remaining within the scope of the embodiments of the invention as defined by the following claims.