Patents by Inventor Rajiv Bhan

Rajiv Bhan 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: 20240123288
    Abstract: A first output is received from a first hardware optical sensor. A second output is received from a second hardware sensor. Guidance is provided for a movement via a user interface, wherein the guidance is based at least in part on: the first output from the first hardware optical sensor; the second output from the second hardware sensor; and a model based at least in part on historical performance of the movement; and wherein at least one of the first output and the second output triggers a condition.
    Type: Application
    Filed: October 16, 2023
    Publication date: April 18, 2024
    Inventors: Giuseppe Barbalinardo, Joshua Ben Shapiro, Asim Kadav, Ivan Savytskyi, Rajiv Bhan, Rustam Paringer, Aly E. Orady
  • Publication number: 20240123284
    Abstract: A first video of a first individual performing an exercise movement is received, wherein the first video is associated with a first guidance label. A modified version of a video is generated at least in part by passing the first video to a pose data change model. The modified version of the video is associated with a second guidance label. A guidance classifier model is trained using the modified version of the video.
    Type: Application
    Filed: October 16, 2023
    Publication date: April 18, 2024
    Inventors: Giuseppe Barbalinardo, Joshua Ben Shapiro, Asim Kadav, Ivan Savytskyi, Rajiv Bhan, Rustam Paringer, Aly E. Orady
  • Publication number: 20230307127
    Abstract: A system and method are disclosed for predicting short term health outcomes based on data collected by a wearable device such as an activity tracker or a smart watch. Artificial Intelligence (AI) algorithms are configured to process an input vector that includes monitored parameter data collected by the wearable device as well as embedding data obtained from health records corresponding to a user account registered to the wearable device. In particular, a framework is defined that includes a random forest model configured to classify a user based on the monitored parameter data and embedding data. Based on a positive health outcome classification, a minimum value is assigned to a health index value for the user or, based on a negative health outcome classification, a gradient boosting machine is configured to generate the health index value. Various operations can be performed based on the assigned health index value for the user.
    Type: Application
    Filed: March 24, 2022
    Publication date: September 28, 2023
    Inventors: Naiqian Zhi, Sarah Wohlman, Alex Xu, Ryan Berns, Rajiv Bhan
  • Publication number: 20230290502
    Abstract: A system and method are disclosed for detecting chronic health conditions based on data collected by a wearable device such as an activity tracker or a smart watch. Deep learning algorithms are configured to process the monitored parameter data collected by the wearable device as well as additional embedding data obtained from health records corresponding to a user account registered to the wearable device. In some examples, the input vector can also include embedding data related to social determinants data and/or demographic data. The output of the deep learning algorithms provides predictions that represent probabilities that the user of the wearable device has an underlying health condition. If any underlying health condition is detected, then the user can be notified directly, via the wearable device or an associated application or technology, or indirectly, via a primary care provider associated with the user.
    Type: Application
    Filed: March 10, 2022
    Publication date: September 14, 2023
    Inventors: Naiqian Zhi, Sarah Wohlman, Alex Xu, Ryan Berns, Rajiv Bhan, Sumeet Kumar, Alan Leggitt, Qin Li
  • Publication number: 20230128118
    Abstract: An exercise machine includes a cable. It further includes an interface to a moveable camera device coupled with the exercise machine. It further includes a processor configured to receive a cable-based measurement associated with an exercise performed by a user. The processor is further configured to receive, from the moveable camera device, video information associated with the exercise. The processor is further configured to provide a workout determination based at least in part on both the cable-based measurement and the video information received from the moveable camera device.
    Type: Application
    Filed: October 18, 2022
    Publication date: April 27, 2023
    Inventors: Asim Kadav, Rajiv Bhan, Ryan LaFrance, Bryan James, Aly E. Orady, Brandt Belson, Gabriel Peal, Thomas Kroman Watt, Ivan Savytskyi
  • Publication number: 20210401295
    Abstract: A system and method are disclosed for monitoring health conditions based on data collected by a wearable device such as an activity tracker or a smart watch. Deep learning algorithms are configured to process an input vector that includes monitored parameter data collected by the wearable device as well as embedding data obtained from health records corresponding to a user account registered to the wearable device. In some embodiments, the input vector can also include social determinants data and/or demographic data. The output of the deep learning algorithms provides classifiers that represent probabilities that the user of the wearable device has an underlying health condition. If any underlying health condition is detected, then the user can be notified directly, via the wearable device or an associated application or technology, or indirectly, via a primary care provider associated with the user.
    Type: Application
    Filed: June 29, 2020
    Publication date: December 30, 2021
    Inventors: Naiqian Zhi, Benjamin Wanamaker, Rajiv Bhan, Sumeet Kumar
  • Publication number: 20210407667
    Abstract: A system and method are disclosed for predicting unnecessary emergency room visits based on data collected by a wearable device such as an activity tracker or a smart watch. Artificial Intelligence (AI) algorithms are configured to process an input vector that includes monitored parameter data collected by the wearable device as well as embedding data obtained from health records corresponding to a user account registered to the wearable device. The output of the AI algorithms provides classifiers that represent probabilities that the user of the wearable device is likely to experience one or more acute events within a specific time frame or time frames. The acute event can include an emergency room visit, which may be classified as unnecessary and/or preventable, and the user can be notified directly, via the wearable device or an associated application or technology, to attempt to deter preventable emergency room visits.
    Type: Application
    Filed: June 29, 2021
    Publication date: December 30, 2021
    Inventors: Naiqian Zhi, Benjamin Wanamaker, Rajiv Bhan, Sumeet Kumar