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基于时移和片组注意力融合的双流行为识别网络
引用本文:肖子凡,刘逸群,李楚溪,张力,王守岩,肖晓.基于时移和片组注意力融合的双流行为识别网络[J].计算机系统应用,2022,31(1):204-211.
作者姓名:肖子凡  刘逸群  李楚溪  张力  王守岩  肖晓
作者单位:复旦大学 工程与应用技术研究院 上海智能机器人工程技术研究中心, 上海 200433;计算神经科学与类脑智能教育部重点实验室(复旦大学), 上海 200433;复旦大学 类脑智能科学与技术研究院, 上海 200433,复旦大学 计算机科学技术学院 上海市智能信息处理重点实验室, 上海 200433,复旦大学 信息科学与工程学院 微纳中心, 上海 200433,复旦大学 大数据学院, 上海 200433,计算神经科学与类脑智能教育部重点实验室(复旦大学), 上海 200433;复旦大学 类脑智能科学与技术研究院, 上海 200433
基金项目:国家重点研发计划(2019YFA0709504);国家自然科学基金青年项目(31900719);上海市科技人才计划启明星项目(19QA1401400);上海市市级重大科技专项(2018SHZDZX01)
摘    要:基于深度学习的行为识别算法往往由于复杂的网络设计而难以在实际应用中达到快速、准确的识别效果.针对以上情况,提出一种轻量型的基于时移和片组注意力融合的端到端双流神经网络模型.算法在RGB与光流分支网络中,采用时间稀疏分组随机采样策略实现长时程建模,利用时移模块在时间维度上置换部分通道从而结合邻帧信息来提升时序表征能力,同...

关 键 词:行为识别  双流深度网络  时移模块  片组注意力
收稿时间:2021/3/20 0:00:00
修稿时间:2021/4/16 0:00:00

Two-stream Action Recognition Network Based on Temporal Shift and Split Attention
XIAO Zi-Fan,LIU Yi-Qun,LI Chu-Xi,ZHANG Li,WANG Shou-Yan,XIAO Xiao.Two-stream Action Recognition Network Based on Temporal Shift and Split Attention[J].Computer Systems& Applications,2022,31(1):204-211.
Authors:XIAO Zi-Fan  LIU Yi-Qun  LI Chu-Xi  ZHANG Li  WANG Shou-Yan  XIAO Xiao
Affiliation:Shanghai Engineering Research Center of AI & Robotics, Academy of Engineering and Technology, Fudan University, Shanghai 200433, China;Key Laboratory of Computational Neuroscience and Brain-inspired Intelligence, Ministry of Education (Fudan University), Shanghai 200433, China;Institute of Science and Technology for Brain-inspired Intelligence, Fudan University, Shanghai 200433, China;Shanghai Key Laboratory of Intelligent Information Processing, School of Computer Science, Fudan University, Shanghai 200433, China;Micro Nano System Center, School of Information Science and Technology, Fudan University, Shanghai 200433, China;School of Data Science, Fudan University, Shanghai 200433, China
Abstract:The deep learning-based algorithms of action recognition are often difficult to achieve fast performance and high accuracy due to the complexity of neural networks. In view of this, we modularize the existing temporal shift and split attention module as an end-to-end trainable block which can be easily plugged into the classical two-stream action recognition pipeline. In the RGB and optical flow branch network, we adopt a random sampling strategy with sparse temporal grouping to realize long-term modeling. Furthermore, we use the Temporal Shift module to replace some channels in the time dimension so as to enhance the sequential characterization ability with information of adjacent frames. In addition, the Split Attention module integrating multi-paths and feature map attention mechanism improves the recognition performance of the network. Experiments show that our method achieves appealing performance on two public benchmark datasets including UCF101 (recognition accuracy of 95.00%) and HMDB51 (recognition accuracy of 72.55%), demonstrating its effectiveness.
Keywords:action recognition  two-stream deep network  temporal shift module  split attention
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