Patents by Inventor Sudhir Sundararam
Sudhir Sundararam 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).
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Patent number: 12236656Abstract: In some aspects, the disclosure is directed to methods and systems for detection and classification of stamps in documents. The system can receive image data and textual data of a document. The system can pre-process and filter that data, and covert the textual data to a term frequency inverse document frequency (TF-IDF) vector. The system can detect the presence of a stamp on the document. The system can extract a subset of the image data including the stamp. The system can extract text from the subset of the image data. The system can classify the stamp using the extracted text, the image data, and the TF-IDF vector. The system can store the classification in a database.Type: GrantFiled: November 17, 2023Date of Patent: February 25, 2025Assignee: Nationstar Mortgage LLCInventors: Won Lee, Goutam Venkatesh, Ankit Kumar Sinha, Sudhir Sundararam
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Publication number: 20240212380Abstract: In some aspects, the disclosure is directed to methods and systems for automatic context-based annotation by leveraging a priori knowledge from annotations in template documents. A large library of template documents may be generated and pre-processed in many implementations to identify annotations or other inclusions commonly present on documents related to or conforming to the template. Newly scanned documents may be compared to these templates, and when a similar template is identified, annotation locations and types from the template may be applied to the newly scanned document to recognize and classify annotations and inclusions. To increase efficiency and provide scalability, comparisons of scanned documents and template documents may be distributed amongst a plurality of computing devices for processing in parallel, with similarity results aggregated.Type: ApplicationFiled: March 11, 2024Publication date: June 27, 2024Applicant: Nationstar Mortgage LLC, d/b/a/ Mr. CooperInventors: Goutam Venkatesh, Sudhir Sundararam, Zach Rusk
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Publication number: 20240087280Abstract: In some aspects, the disclosure is directed to methods and systems for detection and classification of stamps in documents. The system can receive image data and textual data of a document. The system can pre-process and filter that data, and covert the textual data to a term frequency inverse document frequency (TF-IDF) vector. The system can detect the presence of a stamp on the document. The system can extract a subset of the image data including the stamp. The system can extract text from the subset of the image data. The system can classify the stamp using the extracted text, the image data, and the TF-IDF vector. The system can store the classification in a database.Type: ApplicationFiled: November 17, 2023Publication date: March 14, 2024Applicant: Nation Mortgage LLC, d/b/a Mr. CooperInventors: Won Lee, Goutam Venkatesh, Ankit Sinha, Sudhir Sundararam
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Patent number: 11928877Abstract: In some aspects, the disclosure is directed to methods and systems for automatic context-based annotation by leveraging a priori knowledge from annotations in template documents. A large library of template documents may be generated and pre-processed in many implementations to identify annotations or other inclusions commonly present on documents related to or conforming to the template. Newly scanned documents may be compared to these templates, and when a similar template is identified, annotation locations and types from the template may be applied to the newly scanned document to recognize and classify annotations and inclusions. To increase efficiency and provide scalability, comparisons of scanned documents and template documents may be distributed amongst a plurality of computing devices for processing in parallel, with similarity results aggregated.Type: GrantFiled: August 11, 2020Date of Patent: March 12, 2024Assignee: Nationstar Mortgage LLCInventors: Goutam Venkatesh, Sudhir Sundararam, Zach Rusk
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Patent number: 11830233Abstract: In some aspects, the disclosure is directed to methods and systems for detection and classification of stamps in documents. The system can receive image data and textual data of a document. The system can pre-process and filter that data, and covert the textual data to a term frequency inverse document frequency (TF-IDF) vector. The system can detect the presence of a stamp on the document. The system can extract a subset of the image data including the stamp. The system can extract text from the subset of the image data. The system can classify the stamp using the extracted text, the image data, and the TF-IDF vector. The system can store the classification in a database.Type: GrantFiled: June 2, 2022Date of Patent: November 28, 2023Assignee: Nationstar Mortgage LLCInventors: Won Lee, Goutam Venkatesh, Ankit Kumar Sinha, Sudhir Sundararam
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Publication number: 20220292803Abstract: In some aspects, the disclosure is directed to methods and systems for detection and classification of stamps in documents. The system can receive image data and textual data of a document. The system can pre-process and filter that data, and covert the textual data to a term frequency inverse document frequency (TF-IDF) vector. The system can detect the presence of a stamp on the document. The system can extract a subset of the image data including the stamp. The system can extract text from the subset of the image data. The system can classify the stamp using the extracted text, the image data, and the TF-IDF vector. The system can store the classification in a database.Type: ApplicationFiled: June 2, 2022Publication date: September 15, 2022Inventors: Won Lee, Goutam Venkatesh, Ankit Kumar Sinha, Sudhir Sundararam
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Patent number: 11361528Abstract: In some aspects, the disclosure is directed to methods and systems for detection and classification of stamps in documents. The system can receive image data and textual data of a document. The system can pre-process and filter that data, and covert the textual data to a term frequency inverse document frequency (TF-IDF) vector. The system can detect the presence of a stamp on the document. The system can extract a subset of the image data including the stamp. The system can extract text from the subset of the image data. The system can classify the stamp using the extracted text, the image data, and the TF-IDF vector. The system can store the classification in a database.Type: GrantFiled: August 11, 2020Date of Patent: June 14, 2022Assignee: Nationstar Mortgage LLCInventors: Won Lee, Goutam Venkatesh, Ankit Kumar Sinha, Sudhir Sundararam
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Publication number: 20220058496Abstract: In some aspects, the disclosure is directed to methods and systems for machine learning-based document classification using multiple classifiers. Various classifiers may be employed during different iterations of the method to advance the classification of a document. The document may be classified and labeled in response to a predetermined number of classifiers agreeing upon a meaningful label. Further, the meaningful label may only be applied to the document in the event that the classifiers predicted the document label with a confidence score in excess of a threshold value.Type: ApplicationFiled: August 20, 2020Publication date: February 24, 2022Inventors: Zach Rusk, Sudhir Sundararam, Jagadheeswaran Kathirvel
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Publication number: 20220051009Abstract: In some aspects, the disclosure is directed to methods and systems for automatic context-based annotation by leveraging a priori knowledge from annotations in template documents. A large library of template documents may be generated and pre-processed in many implementations to identify annotations or other inclusions commonly present on documents related to or conforming to the template. Newly scanned documents may be compared to these templates, and when a similar template is identified, annotation locations and types from the template may be applied to the newly scanned document to recognize and classify annotations and inclusions. To increase efficiency and provide scalability, comparisons of scanned documents and template documents may be distributed amongst a plurality of computing devices for processing in parallel, with similarity results aggregated.Type: ApplicationFiled: August 11, 2020Publication date: February 17, 2022Inventors: Goutam Venkatesh, Sudhir Sundararam, Zach Rusk
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Publication number: 20220051043Abstract: In some aspects, the disclosure is directed to methods and systems for detection and classification of stamps in documents. The system can receive image data and textual data of a document. The system can pre-process and filter that data, and covert the textual data to a term frequency inverse document frequency (TF-IDF) vector. The system can detect the presence of a stamp on the document. The system can extract a subset of the image data including the stamp. The system can extract text from the subset of the image data. The system can classify the stamp using the extracted text, the image data, and the TF-IDF vector. The system can store the classification in a database.Type: ApplicationFiled: August 11, 2020Publication date: February 17, 2022Inventors: Won Lee, Goutam Venkatesh, Ankit Kumar Sinha, Sudhir Sundararam