QUALCOMM Incorporated
PREDICTING SUBJECT BODY POSES AND SUBJECT MOVEMENT INTENT USING PROBABILISTIC GENERATIVE MODELS

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Abstract:

Certain aspects of the present disclosure are directed to methods and apparatus for predicting subject motion using probabilistic models. One example method generally includes receiving training data comprising a set of subject pose trees. The set of subject pose trees comprises a plurality of subsets of subject pose trees associated with an image in a sequence of images, and each subject pose tree in the subset indicates a location along an axis of the image at which each of a plurality of joints of a subject is located. The received training data may be processed in a convolutional neural network to generate a trained probabilistic model for predicting joint distribution and subject motion based on density estimation. The trained probabilistic model may be deployed to a computer vision system and configured to generate a probability distribution for the location of each joint along the axis.

Status:
Grant
Type:

Utility

Filling date:

25 Feb 2021

Issue date:

17 Jun 2021