Patents by Inventor Balan AYYAR

Balan AYYAR 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: 20240087365
    Abstract: A multisensor processing platform includes, in at least some embodiments, a face detector and embedding network for analyzing unstructured data to detect, identify and track any combination of objects (including people) or activities through computer vision algorithms and machine learning. In some embodiments, the unstructured data is compressed by identifying the appearance of an object across a series of frames of the data, aggregating those appearances and effectively summarizing those appearances of the object by a single representative image displayed to a user for each set of aggregated appearances to enable the user to assess the summarized data substantially at a glance. The data can be filtered into tracklets, groups and clusters, based on system confidence in the identification of the object or activity, to provide multiple levels of granularity.
    Type: Application
    Filed: January 19, 2021
    Publication date: March 14, 2024
    Applicant: PERCIPIENT.AI INC.
    Inventors: Timo PYLVAENAEINEN, Craig SENNABAUM, Mike HIGUERA, Ivan KOVTUN, Atul KANAUJIA, Alison HIGUERA, Jerome BERCLAZ, Rajendra SHAH, Balan AYYAR, Vasudev PARAMESWARAN
  • Publication number: 20230334291
    Abstract: A computer vision system configured for detection and recognition of objects in video and still imagery in a live or historical setting uses a teacher-student object detector training approach to yield a merged student model capable of detecting all of the classes of objects any of the teacher models is trained to detect. Further, training is simplified by providing an iterative training process wherein a relatively small number of images is labeled manually as initial training data, after which an iterated model cooperates with a machine-assisted labeling process and an active learning process where detector model accuracy improves with each iteration, yielding improved computational efficiency. Further, synthetic data is generated by which an object of interest can be placed in a variety of setting sufficient to permit training of models. A user interface guides the operator in the construction of a custom model capable of detecting a new object.
    Type: Application
    Filed: April 24, 2023
    Publication date: October 19, 2023
    Applicant: PERCIPIENT .AI INC.
    Inventors: Vasudev Parameswaran, Atui KANAUJIA, Simon CHEN, Jerome BERCLAZ, Ivan KOVTUN, Alison HIGUERA, Vidyadayini TALAPADY, Derek YOUNG, Balan AYYAR, Rajendra SHAH, Timo PYLVANAINEN
  • Patent number: 11636312
    Abstract: A computer vision system configured for detection and recognition of objects in video and still imagery in a live or historical setting uses a teacher-student object detector training approach to yield a merged student model capable of detecting all of the classes of objects any of the teacher models is trained to detect. Further, training is simplified by providing an iterative training process wherein a relatively small number of images is labeled manually as initial training data, after which an iterated model cooperates with a machine-assisted labeling process and an active learning process where detector model accuracy improves with each iteration, yielding improved computational efficiency. Further, synthetic data is generated by which an object of interest can be placed in a variety of setting sufficient to permit training of models. A user interface guides the operator in the construction of a custom model capable of detecting a new object.
    Type: Grant
    Filed: October 4, 2022
    Date of Patent: April 25, 2023
    Assignee: PERCIPIENT.AI INC.
    Inventors: Vasudev Parameswaran, Atul Kanaujia, Simon Chen, Jerome Berclaz, Ivan Kovtun, Alison Higuera, Vidyadayini Talapady, Derek Young, Balan Ayyar, Rajendra Shah, Timo Pylvanainen
  • Publication number: 20230023164
    Abstract: A computer vision system configured for detection and recognition of objects in video and still imagery in a live or historical setting uses a teacher-student object detector training approach to yield a merged student model capable of detecting all of the classes of objects any of the teacher models is trained to detect. Further, training is simplified by providing an iterative training process wherein a relatively small number of images is labeled manually as initial training data, after which an iterated model cooperates with a machine-assisted labeling process and an active learning process where detector model accuracy improves with each iteration, yielding improved computational efficiency. Further, synthetic data is generated by which an object of interest can be placed in a variety of setting sufficient to permit training of models. A user interface guides the operator in the construction of a custom model capable of detecting a new object.
    Type: Application
    Filed: October 4, 2022
    Publication date: January 26, 2023
    Applicant: PERCIPIENT.AI INC.
    Inventors: Vasudev PARAMESWARAN, Atul KANAUJIA, Simon CHEN, Jerome BERCLAZ, Ivan KOVTUN, Alison HIGUERA, Vidyadayini TALAPADY, Derek YOUNG, Balan AYYAR, Rajendra SHAH, Timo PYLVANAINEN