群体活动识别的人-框架动态特征图网络

Dongli Wang, JiaLiu, Yan Zhou
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引用次数: 0

摘要

视频中不同维度特征的动态建模是群体活动识别的关键。在过去的几年里,人们对人物特征的建模进行了大量的研究,这些方法都取得了不错的效果,但大多忽略了群体活动是与场景密切相关的连续运动,低估了帧与帧之间关系的重要性。本文提出了一种人-帧动态特征图网络,从视频帧级和个体级两个层次对群体活动信息进行建模,时间语义子图(TSG)通道构建视频帧特征的时间语义关系子图,人-层动态特征图(PDFM)通道对个人动态特征进行建模。此外,为了缓解群体活动模型训练速度慢的问题,我们采用轻量级的mobilenet-v2作为主干,并在其中嵌入初始特征预处理模块(IFPM),在保持识别精度的同时提高训练效率。利用群体活动识别领域中应用最广泛的数据集对该模型进行了大量的实验,取得了良好的效果,证明了该模型的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Person-Frame Dynamic Feature Graph Network for Group Activity Recognition
Dynamic modeling of different dimensional features in video is the key element of group activity recognition. In the past years, a lot of work has been devoted to the modeling of character features, these methods have achieved good results, but most of them ignore that group activity is a continuous motion closely related to the scene, and underestimated the importance of the relationship between frames. This paper proposes a Person-Frame Dynamic Feature Graph Network to model group activity information from two levels: video frame level and individual level: Temporal Semantic sub-Graph (TSG) channel constructs temporal semantic relation subgraph for video frame features, and Person-level Dynamic Feature Map (PDFM) models personal dynamic characteristics. In addition, in order to alleviate the problem of slow training speed of group activity model, we use lightweight mobilenet-v2 as the backbone, and embed the Initial Feature Preprocessing Module (IFPM) in it to improve the training efficiency while maintaining the recognition accuracy. A lot of experiments have been done on this model with the most widely used dataset in the field of group activity recognition, and excellent results are obtained, which proves the effectiveness of the model.
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