Patents by Inventor Lakshay Phatela
Lakshay Phatela 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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Publication number: 20240363103Abstract: Disclosed are systems and methods including software processes executed by a server that detect audio-based synthetic speech (“deepfakes”) in a call conversation. The server applies an NLP engine to transcribe call audio and analyze the text for anomalous patterns to detect synthetic speech. Additionally or alternatively, the server executes a voice “liveness” detection system for detecting machine speech, such as synthetic speech or replayed speech. The system performs phrase repetition detection, background change detection, and passive voice liveness detection in call audio signals to detect liveness of a speech utterance. An automated model update module allows the liveness detection model to adapt to new types of presentation attacks, based on the human provided feedback.Type: ApplicationFiled: November 9, 2023Publication date: October 31, 2024Applicant: Pindrop Security, Inc.Inventors: Umair Altaf, Sai Pradeep Peri, Lakshay Phatela, Payas Gupta, Yitao Sun, Svetlana Afanaseva, Kailash Patil, Elie Khoury, Bradley Magnetta, Vijay Balasubramaniyan, Tianxiang Chen
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Publication number: 20240363099Abstract: Disclosed are systems and methods including software processes executed by a server that detect audio-based synthetic speech (“deepfakes”) in a call conversation. The server applies an NLP engine to transcribe call audio and analyze the text for anomalous patterns to detect synthetic speech. Additionally or alternatively, the server executes a voice “liveness” detection system for detecting machine speech, such as synthetic speech or replayed speech. The system performs phrase repetition detection, background change detection, and passive voice liveness detection in call audio signals to detect liveness of a speech utterance. An automated model update module allows the liveness detection model to adapt to new types of presentation attacks, based on the human provided feedback.Type: ApplicationFiled: November 9, 2023Publication date: October 31, 2024Applicant: PINDROP SECURITY, INC.Inventors: Umair Altaf, Sai Pradeep Peri, Lakshay Phatela, Payas Gupta, Yitao Sun, Svetlana Afanaseva, Kailash Patil, Elie Khoury, Bradley Magnetta, Vijay Balasubramaniyan, Tianxiang Chen
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Publication number: 20240355323Abstract: Disclosed are systems and methods including software processes executed by a server that detect audio-based synthetic speech (“deepfakes”) in a call conversation. The server applies an NLP engine to transcribe call audio and analyze the text for anomalous patterns to detect synthetic speech. Additionally or alternatively, the server executes a voice “liveness” detection system for detecting machine speech, such as synthetic speech or replayed speech. The system performs phrase repetition detection, background change detection, and passive voice liveness detection in call audio signals to detect liveness of a speech utterance. An automated model update module allows the liveness detection model to adapt to new types of presentation attacks, based on the human provided feedback.Type: ApplicationFiled: November 9, 2023Publication date: October 24, 2024Applicant: PINDROP SECURITY, INC.Inventors: Umair Altaf, Sai Pradeep PERI, Lakshay PHATELA, Payas GUPTA, Yitao SUN, Svetlane AFANASEVA, Kailash PATIL, Elie KHOURY, Bradley MAGNETTA, Vijay BALASUBRAMANIYAN, Tianxiang CHEN
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Publication number: 20240355322Abstract: Disclosed are systems and methods including software processes executed by a server that detect audio-based synthetic speech (“deepfakes”) in a call conversation. The server applies an NLP engine to transcribe call audio and analyze the text for anomalous patterns to detect synthetic speech. Additionally or alternatively, the server executes a voice “liveness” detection system for detecting machine speech, such as synthetic speech or replayed speech. The system performs phrase repetition detection, background change detection, and passive voice liveness detection in call audio signals to detect liveness of a speech utterance. An automated model update module allows the liveness detection model to adapt to new types of presentation attacks, based on the human provided feedback.Type: ApplicationFiled: November 9, 2023Publication date: October 24, 2024Applicant: Pindrop Security, Inc.Inventors: Umair Altaf, Sai Pradeep Peri, Lakshay Phatela, Payas Gupta, Yitao Sun, Svetlana Afanaseva, Kailash Patil, Elie Khoury, Bradley Magnetta, Vijay Balasubramaniyan, Tianxiang Chen
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Publication number: 20240355336Abstract: Disclosed are systems and methods including software processes executed by a server that detect audio-based synthetic speech (“deepfakes”) in a call conversation. The server applies an NLP engine to transcribe call audio and analyze the text for anomalous patterns to detect synthetic speech. Additionally or alternatively, the server executes a voice “liveness” detection system for detecting machine speech, such as synthetic speech or replayed speech. The system performs phrase repetition detection, background change detection, and passive voice liveness detection in call audio signals to detect liveness of a speech utterance. An automated model update module allows the liveness detection model to adapt to new types of presentation attacks, based on the human provided feedback.Type: ApplicationFiled: February 12, 2024Publication date: October 24, 2024Applicant: PINDROP SECURITY, INC.Inventors: Umair ALTAF, Sai Pradeep PERI, Lakshay PHATELA, Payas GUPTA, Yitao SUN, Svetlana AFANASEVA, Kailash PATIL, Elie KHOURY, Bradley MAGNETTA, Vijay BALASUBRAMANIYAN, Tianxiang CHEN
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Publication number: 20240355334Abstract: Disclosed are systems and methods including software processes executed by a server that detect audio-based synthetic speech (“deepfakes”) in a call conversation. The server applies an NLP engine to transcribe call audio and analyze the text for anomalous patterns to detect synthetic speech. Additionally or alternatively, the server executes a voice “liveness” detection system for detecting machine speech, such as synthetic speech or replayed speech. The system performs phrase repetition detection, background change detection, and passive voice liveness detection in call audio signals to detect liveness of a speech utterance. An automated model update module allows the liveness detection model to adapt to new types of presentation attacks, based on the human provided feedback.Type: ApplicationFiled: November 9, 2023Publication date: October 24, 2024Applicant: PINDROP SECURITY, INC.Inventors: Umair Altaf, Sai Pradeep PERI, Lakshay PHATELA, Payas GUPTA, Yitao SUN, Svetlana AFANASEVA, Kailash PATIL, Elie KHOURY, Bradley MAGNETTA, Vijay BALASUBRAMANIYAN, Tianxiang CHEN
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Publication number: 20240355337Abstract: Disclosed are systems and methods including software processes executed by a server that detect audio-based synthetic speech (“deepfakes”) in a call conversation. The server applies an NLP engine to transcribe call audio and analyze the text for anomalous patterns to detect synthetic speech. Additionally or alternatively, the server executes a voice “liveness” detection system for detecting machine speech, such as synthetic speech or replayed speech. The system performs phrase repetition detection, background change detection, and passive voice liveness detection in call audio signals to detect liveness of a speech utterance. An automated model update module allows the liveness detection model to adapt to new types of presentation attacks, based on the human provided feedback.Type: ApplicationFiled: November 9, 2023Publication date: October 24, 2024Applicant: PINDROP SECURITY, INC.Inventors: Umair Altaf, Sai Pradeep Peri, Lakshay Phatela, Payas Gupta, Yitao Sun, Svetlana Afanaseva, Kailash Patil, Elie Khoury, Bradley Magnetta, Vijay Balasubramaniyan, Tianxiang Chen
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Publication number: 20240355319Abstract: Disclosed are systems and methods including software processes executed by a server that detect audio-based synthetic speech (“deepfakes”) in a call conversation. The server applies an NLP engine to transcribe call audio and analyze the text for anomalous patterns to detect synthetic speech. Additionally or alternatively, the server executes a voice “liveness” detection system for detecting machine speech, such as synthetic speech or replayed speech. The system performs phrase repetition detection, background change detection, and passive voice liveness detection in call audio signals to detect liveness of a speech utterance. An automated model update module allows the liveness detection model to adapt to new types of presentation attacks, based on the human provided feedback.Type: ApplicationFiled: November 9, 2023Publication date: October 24, 2024Applicant: PINDROP SECURITY, INC.Inventors: Umair Altaf, Sai Pradeep Peri, Lakshay Phatela, Payas Gupta, Yitao Sun, Svetlana Afanaseva, Kailash Patil, Elie Khoury, Bradley Magnetta, Vijay Balasubramaniyan, Tianxiang Chen