智能视觉与可视化 |
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FSAGN: 一种自主选择关键帧的表情识别方法 |
祝锦泰1,2(),叶继华1(),郭凤1,江蕗1,江爱文1 |
1.江西师范大学 计算机信息工程学院,江西 南昌 330022 2.淄博技师学院 信息工程系,山东 淄博 255030 |
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FSAGN:An expression recognition method based on independent selection of video key frames |
Jintai ZHU1,2(),Jihua YE1(),Feng GUO1,Lu JIANG1,Aiwen JIANG1 |
1.School of Computer Information Engineering,Jiangxi Normal University,Nanchang 330022,China 2.Department of Information Engineering,Zibo Technician College,Zibo 255030,Shandong Province,China |
引用本文:
祝锦泰, 叶继华, 郭凤, 江蕗, 江爱文. FSAGN: 一种自主选择关键帧的表情识别方法[J]. 浙江大学学报(理学版), 2022, 49(2): 141-150.
Jintai ZHU, Jihua YE, Feng GUO, Lu JIANG, Aiwen JIANG. FSAGN:An expression recognition method based on independent selection of video key frames. Journal of Zhejiang University (Science Edition), 2022, 49(2): 141-150.
链接本文:
https://www.zjujournals.com/sci/CN/10.3785/j.issn.1008-9497.2022.02.002
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https://www.zjujournals.com/sci/CN/Y2022/V49/I2/141
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