Patents by Inventor Devang Jagdishchandra PATEL

Devang Jagdishchandra PATEL has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Publication number: 20230377356
    Abstract: This disclosure relates generally to method and system for detecting and extracting price region from digital flyers and promotions. In retail business, extracting price information from digital flyers is crucial for complex nature of flyers having large variety of formats, color scheme, font styles, variable text information and thereof. The method of the present disclosure detects a text region comprising a price information from a set of digital flyers and promotions received as input images. Further, each text region is converted into a two-color text comprising of a set of white pixels and a set of black pixels. Further, underlying price from the price region of the two-color text is detected and price is extracted from the price region of each input image. Additionally, the price region detection function detects price region accurately and extracts price values having an irregular font size.
    Type: Application
    Filed: March 14, 2023
    Publication date: November 23, 2023
    Applicant: Tata Consultancy Services Limited
    Inventors: AMIT KUMAR AGRAWAL, MANTU PRASAD GUPTA, DEVANG JAGDISHCHANDRA PATEL, PUSHP KUMAR JAIN
  • Patent number: 11810383
    Abstract: This disclosure relates generally to method and system for determining label value for labels in unstructured documents. Typical systems have challenge in understanding variations in layout of unstructured documents and extract information therefrom. The disclosed method and system facilitate systematically identifying sections and bounding boxes in the page images, taking image portion of the bounding boxes and extracting labels and label values therefrom. In case the label values are not present in the same bounding box having the label, the neighboring labels are examined for the matching label values. The system also obtains label-label value pairs from the document by utilizing a trained deep learning model, and compares the output with the label-label value pairs extracted earlier. An aggregated confidence score is assigned to the text in the bounding box.
    Type: Grant
    Filed: November 20, 2020
    Date of Patent: November 7, 2023
    Assignee: TATA CONSULTANCY SERVICES LIMITED
    Inventors: Devang Jagdishchandra Patel, Prabhat Ranjan Mishra, Ketkee Pandit, Ankita Gupta, Chirabrata Bhaumik, Dinesh Yadav, Amit Kumar Agrawal
  • Patent number: 11631233
    Abstract: Variation in received documents types and templates used for each document type poses challenge in developing a generic background noise removal approach for automatic text information extraction technique. Embodiments herein provide a method and a system for document classification and text information extraction. Time efficient and accurate text detection engine-based Region of Interest (ROI) technique is provided to accurately identify text region followed by a multi-layered neural network based architecture for enhanced classification accuracy to identify the type of document. A multistage image pre-processing approach is provided for efficient, effective, and accurate background noise removal from the classified document, which includes unsupervised clustering, identification, segmentation, masking, contour approximation, selective subtraction, and dynamic thresholding.
    Type: Grant
    Filed: March 19, 2021
    Date of Patent: April 18, 2023
    Assignee: TATA CONSULTANCY SERVICES LIMITED
    Inventors: Devang Jagdishchandra Patel, Prosenjit Mondal, Rajdeep Chatterjee, Prabhat Ranjan Mishra, Pushp Kumar Jain, Harinakshi Raina, Amit Kumar Agrawal, Anshika Jain, Ankita Gupta, Ketkee Pandit
  • Publication number: 20220343464
    Abstract: ROI (Region of Interest) detection is an important step in extracting relevant information from a document image. Such images are very high-resolution images in nature and size of images is in order of megabytes, which makes text detection pipeline very slow. Traditional methods detect and extract ROI from images, but these work only for specific image types. Other approaches include deep learning (DL) based methods for ROI detect which need intensive training and require high end computing infrastructure/resources with graphical processing unit (GPU) capabilities. Systems and methods of the present disclosure perform ROI extraction by partitioning input image into parts based on its visual perception and then classify the image in first or second category. Region of interest is extracted from a resized image based on the classification by applying image processing techniques. Further, the system determines whether the input image is a pre-cropped image or a normal scanned image.
    Type: Application
    Filed: August 3, 2021
    Publication date: October 27, 2022
    Applicant: Tata Consultancy Services Limited
    Inventors: AMIT KUMAR AGRAWAL, MANTU PRASAD GUPTA, TANMAY SUHAS JAGTAP, DEVANG JAGDISHCHANDRA PATEL, PUSHP KUMAR JAIN, DINESH YADAV, PRABHAT RANJAN MISHRA, RAJDEEP CHATTERJEE, PROSENJIT MONDAL
  • Publication number: 20220180113
    Abstract: Variation in received documents types and templates used for each document type poses challenge in developing a generic background noise removal approach for automatic text information extraction technique. Embodiments herein provide a method and a system for document classification and text information extraction. Time efficient and accurate text detection engine-based Region of Interest (ROI) technique is provided to accurately identify text region followed by a multi-layered neural network based architecture for enhanced classification accuracy to identify the type of document. A multistage image pre-processing approach is provided for efficient, effective, and accurate background noise removal from the classified document, which includes unsupervised clustering, identification, segmentation, masking, contour approximation, selective subtraction, and dynamic thresholding.
    Type: Application
    Filed: March 19, 2021
    Publication date: June 9, 2022
    Applicant: Tata Consultancy Services Limited
    Inventors: Devang Jagdishchandra PATEL, Prosenjit MONDAL, Rajdeep CHATTERJEE, Prabhat Ranjan MISHRA, Pushp Kumar JAIN, Harinakshi RAINA, Amit Kumar AGRAWAL, Anshika JAIN, Ankita GUPTA, Ketkee PANDIT
  • Publication number: 20210201018
    Abstract: This disclosure relates generally to method and system for determining label value for labels in unstructured documents. Typical systems have challenge in understanding variations in layout of unstructured documents and extract information therefrom. The disclosed method and system facilitate systematically identifying sections and bounding boxes in the page images, taking image portion of the bounding boxes and extracting labels and label values therefrom. In case the label values are not present in the same bounding box having the label, the neighboring labels are examined for the matching label values. The system also obtains label-label value pairs from the document by utilizing a trained deep learning model, and compares the output with the label-label value pairs extracted earlier. An aggregated confidence score is assigned to the text in the bounding box.
    Type: Application
    Filed: November 20, 2020
    Publication date: July 1, 2021
    Applicant: Tata Consultancy Services Limited
    Inventors: Devang Jagdishchandra PATEL, Prabhat Ranjan MISHRA, Ketkee PANDIT, Ankita GUPTA, Chirabrata BHAUMIK, Dinesh YADAV, Amit Kumar AGRAWAL