LONG DURATION STRUCTURED VIDEO ACTION SEGMENTATION

    公开(公告)号:US20240104915A1

    公开(公告)日:2024-03-28

    申请号:US18459824

    申请日:2023-09-01

    CPC classification number: G06V10/82 G06V10/751 G06V10/86 G06V20/46 G06V20/49

    Abstract: Machine learning models can process a video and generate outputs such as action segmentation assigning portions of the video to a particular action, or action classification assigning an action class for each frame of the video. Some machine learning models can accurately make predictions for short videos but may not be particularly suited for performing action segmentation for long duration, structured videos. An effective machine learning model may include a hybrid architecture involving a temporal convolutional network and a bi-directional graph neural network. The machine learning model can process long duration structured videos by using a temporal convolutional network as a first pass action segmentation model to generate rich, frame-wise features. The frame-wise features can be converted into a graph having forward edges and backward edges. A graph neural network can process the graph to refine a final fine-grain per-frame action prediction.

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