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Image Semantic Segmentation Approach for Studying Human Behavior on Image Data

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摘要 Image semantic segmentation is an essential technique for studying human behavior through image data.This paper proposes an image semantic segmentation method for human behavior research.Firstly,an end-to-end convolutional neural network architecture is proposed,which consists of a depth-separable jump-connected fully convolutional network and a conditional random field network;then jump-connected convolution is used to classify each pixel in the image,and an image semantic segmentation method based on convolu-tional neural network is proposed;and then a conditional random field network is used to improve the effect of image segmentation of hu-man behavior and a linear modeling and nonlinear modeling method based on the semantic segmentation of conditional random field im-age is proposed.Finally,using the proposed image segmentation network,the input entrepreneurial image data is semantically segmented to obtain the contour features of the person;and the segmentation of the images in the medical field.The experimental results show that the image semantic segmentation method is effective.It is a new way to use image data to study human behavior and can be extended to other research areas.
出处 《Wuhan University Journal of Natural Sciences》 CAS CSCD 2024年第2期145-153,共9页 武汉大学学报(自然科学英文版)
基金 Supported by the Major Consulting and Research Project of the Chinese Academy of Engineering(2020-CQ-ZD-1) the National Natural Science Foundation of China(72101235) Zhejiang Soft Science Research Program(2023C35012)。
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