Patent classifications
G06V10/993
INFORMATION PROCESSING SYSTEM, INFORMATION PROCESSING METHOD, AND COMPUTER PROGRAM
An information processing system (10) includes: an acquisition unit (50) configured to sequentially acquire a plurality of elements included in sequential data; a first calculation unit (110) configured to calculate, for each of the plurality of elements, a first indicator indicating which one of a plurality of classes the element belongs to; a weight calculation unit (130) configured to calculate, for each of the plurality of elements, a weight according to a confidence related to calculation of the first indicator; a second calculation unit (120) configured to calculate, based on the first indicators each weighted with the weight, a second indicator indicating which one of the plurality of classes the sequential data belongs to; and a classification unit (60) configured to classify the sequential data as any one of the plurality of classes, based on the second indicator. According to such an information processing system, sequential data can be appropriately classified.
Method, Apparatus, System and Electronic Device for Selecting Intelligent Analysis Algorithm
A method, an apparatus, a system, and an electronic device for selecting an intelligent analysis algorithm. The method includes: acquiring image data of a monitoring scene (S101); analyzing the image data to obtain scene contents contained in the image data (S102); determining an intelligent analysis algorithm corresponding to each of the scene contents (S103); and selecting a target intelligent analysis algorithm(s) from intelligent analysis algorithms corresponding to the scene contents according to a load capacity of a compute node used for loading the intelligent analysis algorithms, wherein a total algorithm load of the target intelligent analysis algorithm(s) is not greater than the load capacity of the compute node (S104). The method for selecting an intelligent analysis algorithm realizes an automatic selection of the intelligent analysis algorithm, which can reduce the manual workload, improve the selection efficiency of the intelligent analysis algorithm, reduce overload of the compute node, reduce abnormal analysis results caused by the overload of the compute node, and reduce an improper selection of the intelligent analysis algorithm due to the low degree of professionalism of the construction personnel, which affects the analysis effect.
ABSOLUTE GEOSPATIAL ACCURACY MODEL FOR REMOTE SENSING WITHOUT SURVEYED CONTROL POINTS
Estimating absolute geospatial accuracy in input images without the use of surveyed control points is disclosed. For example, the absolute geospatial accuracy of a satellite images may be estimated without the use of control points (GCPs). The absolute geospatial accuracy of the input images may be estimated based on a statistical measure of relative accuracies between pairs of overlapping images. The estimation of the absolute geospatial accuracy may include determining a root mean square error of the relative accuracies between pairs of overlapping images. For example, the absolute geospatial accuracy of the input images may be estimated by determining a root mean square error of the shears of respective pairs of overlapping images. The estimated absolute geospatial accuracy may be used to curate GCPs, evaluate a digital elevation map, generate a heatmap, or determine whether the adjust the images until a target absolute geospatial accuracy is met.
METHOD FOR CALCULATING A QUALITY MEASURE FOR ASSESSING AN OBJECT DETECTION ALGORITHM
A method for calculating a quality measure of a computer-implemented object detection algorithm, which may be used, in particular, for enabling the object detection algorithm for semi-automated, highly-automated or fully-automated robots. The method includes: assigning ascertained object detections to annotations, the object detections and/or the annotations corresponding to bounding boxes; determining deviations, in particular, distances of the annotations with respect to their assigned object detections; calculating the quality measure of the object detection algorithm based on the determined deviations, the quality measure representing a probability with which a deviation of an object detection from the annotation assigned to it exceeds or falls below a predefined threshold value.
AUTOMATED TELLER MACHINE FOR DETECTING SECURITY VULNERABILITIES BASED ON DOCUMENT NOISE REMOVAL
An Automated Teller Machine (ATM) for detecting security vulnerabilities by removing noise artifacts from documents receives a transaction request when a document is inserted into the ATM, where the document contains a noise artifact at least partially obstructing a portion of the document. The ATM generates an image of the document, where the image displays at least one data item comprising a sender's name, a receiver's name, and a number representing an amount. The ATM determines whether the noise artifact obstructs at least partially one data item. In response to determining that the noise artifact obstructs at least partially one data item, the ATM generates a test clean image of the document by removing the noise artifact from the image. In response to determining that the noise artifact is removed, the ATM approves the transaction request.
Information processing method, image processing apparatus, and storage medium that selectively perform upsampling to increase resolution to image data included in album data
An album creation application displays an image arrangement screen and an image selection screen, and image data selected by a user from among an image group is arranged in an image slot selected by the user on the image arrangement screen. Each of the image data, which is arranged in the respective image slots included in album data for which an order is confirmed, is analyzed so as to determine whether or not each of the image data is a target of high quality printing. Based on the analysis result, upsampling for increasing the resolution is selectively performed to the image data included in the album data. The album data is sent to an image printer.
System and method for re-identifying target object based on location information of CCTV and movement information of object
Embodiments relate to a method for re-identifying a target object based on location information of closed-circuit television (CCTV) and movement information of the target object and a system for performing the same, the method including detecting at least one object of interest in a plurality of source videos based on a preset condition of the object of interest, tracking the identified object of interest on the corresponding source video to generate a tube of the object of interest, receiving an image query including a target patch and location information of the CCTV, determining at least one search candidate area based on the location information of the CCTV and the movement information of the target object, re-identifying if the object of interest seen in the tube of the object of interest is the target object, and providing a user with the tube of the re-identified object of interest.
REGION OF INTEREST EXTRACTION FROM REFERENCE IMAGE USING OBJECT MAP
For each of a number of regions of interest (ROI) types, ROIs are extracted from a reference image based on an object map distinguishing symbol, raster, and vector objects within the reference image. Whether print quality of a printing device has degraded below a specified acceptable print quality level is assessed based on a comparison of the extracted ROIs within the reference image to corresponding ROIs within a test image corresponding to the reference image and printed by the printing device.
ELECTRONIC DEVICE FOR PERFORMING VIDEO QUALITY ASSESSMENT, AND OPERATION METHOD OF THE ELECTRONIC DEVICE
An electronic device is provided. The electronic device includes a memory storing one or more instructions, and a processor configured to execute the one or more instruction stored in the memory. The processor is configured to execute the one or more instructions to obtain a subjective assessment score for each of a plurality of sub-regions included in an input frame, the subjective assessment score being a Mean Opinion Score (MOS); obtain a location weight for each of the plurality of sub-regions, the location weight indicating characteristics according to a location of a display; obtain a weighted assessment score for each of the plurality of sub-regions, based on the subjective assessment score for each of the plurality of sub-regions and the location weight for each of the plurality of sub-regions; and obtain a final quality score for the entire video frame, based on the weighted assessment score for each of the plurality of sub-regions.
Multi-Image Sensor Module for Quality Assurance
Each of a plurality of co-located inspection camera modules captures raw images of objects passing in front of the co-located inspection camera modules which form part of a quality assurance inspection system. The inspection camera modules have either a different image sensor or lens focal properties and generate different feeds of raw images. The co-located inspection camera modules can reside within a single standalone module and be selectively switched amongst to activate the corresponding feed of raw images. The activated feed of raw images is provided to a consuming application or process for quality assurance analysis.