G06V30/26

System for Transportation and Shipping Related Data Extraction
20240296689 · 2024-09-05 ·

A system is discussed herein that is configured for extracting data from documents. In particular, the system may be utilized for automating and computerized checking of transit and shipping related documents. For example, the documents may include various data, such delivery dates, prices, inventory identification, personnel identification, container identification, customs documents, transport documents, a combination thereof, and the like.

Methods, systems, articles of manufacture and apparatus to label text on images

Methods, systems, articles of manufacture and apparatus are disclosed to label text on images. An example apparatus includes colorizer circuitry to apply color to text boxes corresponding to optical character recognition (OCR) data associated with an image, OCR manager circuitry to render an OCR text prompt associated with the OCR data, the OCR text prompt to be rendered proximate to respective ones of the text boxes, the OCR text prompt to display a text portion of the OCR data, and edit circuitry to (a) render an interface in response to selection of the OCR text prompt, the interface populated with the text portion of the OCR data, and (b) in response to an overwrite input to the interface, update the text portion of the OCR data in a memory corresponding to the image.

Methods, systems, articles of manufacture and apparatus to label text on images

Methods, systems, articles of manufacture and apparatus are disclosed to label text on images. An example apparatus includes colorizer circuitry to apply color to text boxes corresponding to optical character recognition (OCR) data associated with an image, OCR manager circuitry to render an OCR text prompt associated with the OCR data, the OCR text prompt to be rendered proximate to respective ones of the text boxes, the OCR text prompt to display a text portion of the OCR data, and edit circuitry to (a) render an interface in response to selection of the OCR text prompt, the interface populated with the text portion of the OCR data, and (b) in response to an overwrite input to the interface, update the text portion of the OCR data in a memory corresponding to the image.

System and method for generating best potential rectified data based on past recordings of data
12183100 · 2024-12-31 · ·

Various methods, apparatuses/systems, and media for data processing are disclosed. A processor receives a digital document; applies an optical character recognition (OCR) algorithm on said received digital document by utilizing an OCR tool; identifies defective data extracted by the OCR tool resulted from relatively inferior image quality of the received digital document; implements an auto rectification algorithm on the identified defective data; automatically generates, in response to implementing the auto rectification algorithm, corresponding auto-rectified data for each identified defective data; records the defective data and corresponding auto-rectified data at a field level; receives user input data on said recorded auto-rectified data; determines whether the auto-rectified data is correct or not; and populates, based on determining that the auto-rectified data is correct, a machine learning model with said received user input data to be utilized for subsequently received digital document.

System and method for generating best potential rectified data based on past recordings of data
12183100 · 2024-12-31 · ·

Various methods, apparatuses/systems, and media for data processing are disclosed. A processor receives a digital document; applies an optical character recognition (OCR) algorithm on said received digital document by utilizing an OCR tool; identifies defective data extracted by the OCR tool resulted from relatively inferior image quality of the received digital document; implements an auto rectification algorithm on the identified defective data; automatically generates, in response to implementing the auto rectification algorithm, corresponding auto-rectified data for each identified defective data; records the defective data and corresponding auto-rectified data at a field level; receives user input data on said recorded auto-rectified data; determines whether the auto-rectified data is correct or not; and populates, based on determining that the auto-rectified data is correct, a machine learning model with said received user input data to be utilized for subsequently received digital document.

Handwriting Recognition Method, Training Method and Training Device of Handwriting Recognition Model
20250005946 · 2025-01-02 ·

A handwriting recognition method including: determining an input text image according to a written text trace to be recognized; inputting the input text image into a handwriting recognition model to obtain prediction results of different spatial positions in the input text image. The handwriting recognition model includes an image feature extraction layer, a full connection layer and a Softmax layer, the image feature extraction layer is used for extracting a feature map of the input text image, the full connection layer is used for adjusting the number of the channels of the feature map to the number of characters supported by the handwriting recognition model, and the Softmax layer is used for obtaining the prediction probability values of the written text at different spatial positions; performing a multi-neighborhood merging on the prediction results of different spatial positions to obtain a recognition result.

Handwriting Recognition Method, Training Method and Training Device of Handwriting Recognition Model
20250005946 · 2025-01-02 ·

A handwriting recognition method including: determining an input text image according to a written text trace to be recognized; inputting the input text image into a handwriting recognition model to obtain prediction results of different spatial positions in the input text image. The handwriting recognition model includes an image feature extraction layer, a full connection layer and a Softmax layer, the image feature extraction layer is used for extracting a feature map of the input text image, the full connection layer is used for adjusting the number of the channels of the feature map to the number of characters supported by the handwriting recognition model, and the Softmax layer is used for obtaining the prediction probability values of the written text at different spatial positions; performing a multi-neighborhood merging on the prediction results of different spatial positions to obtain a recognition result.

System for transportation and shipping related data extraction

A system is discussed herein that is configured for extracting data from documents. In particular, the system may be utilized for automating and computerized checking of transit and shipping related documents. For example, the documents may include various data, such delivery dates, prices, inventory identification, personnel identification, container identification, customs documents, transport documents, a combination thereof, and the like.

System for transportation and shipping related data extraction

A system is discussed herein that is configured for extracting data from documents. In particular, the system may be utilized for automating and computerized checking of transit and shipping related documents. For example, the documents may include various data, such delivery dates, prices, inventory identification, personnel identification, container identification, customs documents, transport documents, a combination thereof, and the like.

METHODS, SYSTEMS, ARTICLES OF MANUFACTURE AND APPARATUS TO LABEL TEXT ON IMAGES

Methods, systems, articles of manufacture and apparatus are disclosed to label text on images. An example apparatus includes colorizer circuitry to apply color to text boxes corresponding to optical character recognition (OCR) data associated with an image, OCR manager circuitry to render an OCR text prompt associated with the OCR data, the OCR text prompt to be rendered proximate to respective ones of the text boxes, the OCR text prompt to display a text portion of the OCR data, and edit circuitry to (a) render an interface in response to selection of the OCR text prompt, the interface populated with the text portion of the OCR data, and (b) in response to an overwrite input to the interface, update the text portion of the OCR data in a memory corresponding to the image.