PERCEPTION NETWORK AND DATA PROCESSING METHOD

    公开(公告)号:US20230401826A1

    公开(公告)日:2023-12-14

    申请号:US18456312

    申请日:2023-08-25

    CPC classification number: G06V10/7715 G06V10/82 G06V10/806

    Abstract: This disclosure discloses a perception network. The perception network may be applied to the artificial intelligence field, and includes a feature extraction network. A first block in the feature extraction network is configured to perform convolution processing on input data, to obtain M target feature maps; at least one second block in the feature extraction network is configured to perform convolution processing on M1 target feature maps in the M target feature maps, to obtain M1 first feature maps; a target operation in the feature extraction network is used to process M2 target feature maps in the M target feature maps, to obtain M2 second feature maps; and a concatenation operation in the feature extraction network is used to concatenate the M1 first feature maps and the M2 second feature maps, to obtain a concatenated feature map.

    IMAGE PROCESSING METHOD, NEURAL NETWORK TRAINING METHOD, AND RELATED DEVICE

    公开(公告)号:US20250014324A1

    公开(公告)日:2025-01-09

    申请号:US18894274

    申请日:2024-09-24

    Abstract: An image processing method, a neural network training method, and a related device are provided. The method may apply an artificial intelligence technology to the image processing field. The method includes: performing feature extraction on a to-be-processed image by using a first neural network, to obtain feature information of the to-be-processed image. The performing feature extraction on a to-be-processed image by using a first neural network includes: obtaining first feature information corresponding to the to-be-processed image, where the to-be-processed image includes a plurality of image blocks, and the first feature information includes feature information of the image block; sequentially inputting feature information of at least two groups of image blocks into an LIF module, to obtain target data generated by the LIF module; and obtaining, based on the target data, updated feature information of the to-be-processed image including the image block.

    FEATURE EXTRACTION METHOD AND APPARATUS
    3.
    发明公开

    公开(公告)号:US20230419646A1

    公开(公告)日:2023-12-28

    申请号:US18237995

    申请日:2023-08-25

    CPC classification number: G06V10/806 G06V10/40 G06V10/82

    Abstract: Embodiments of this disclosure relate to the field of artificial intelligence, and disclose a feature extraction method and apparatus. The method includes: obtaining a to-be-processed object, and obtaining a segmented object based on the to-be-processed object, where the segmented object includes some elements in the to-be-processed object, a first vector indicates the segmented object, and a second vector indicates some elements in the segmented object; performing feature extraction on the first vector to obtain a first feature, and performing feature extraction on the second vector to obtain a second feature; fusing at least two second features based on a first target weight, to obtain a first fused feature; and performing fusion processing on the first feature and the first fused feature to obtain a second fused feature, where the second fused feature is used to obtain a feature of the to-be-processed object.

    VISUAL TASK PROCESSING METHOD AND RELATED DEVICE THEREOF

    公开(公告)号:US20250095352A1

    公开(公告)日:2025-03-20

    申请号:US18962726

    申请日:2024-11-27

    Abstract: This application discloses a visual task processing method and a related device thereof. A to-be-processed image can be processed using a target model, and features outputted by the target model can remain diversified, to help improve processing precision of a visual task for the to-be-processed image. The method in this application includes: obtaining a to-be-processed image; processing the to-be-processed image using a target model, to obtain a feature of the to-be-processed image, where the target model includes a first module and a second module connected to the first module, the first module includes a graph neural network, and the second module is configured to implement feature transformation; and completing a visual task for the to-be-processed image based on the feature of the to-be-processed image.

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