TEA: Temporal Excitation and Aggregation for Action Recognition

2020 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)(2020)

引用 502|浏览395
暂无评分
摘要
Temporal modeling is key for action recognition in videos. It normally considers both short-range motions and long-range aggregations. In this paper, we propose a Temporal Excitation and Aggregation (TEA) block, including a motion excitation (ME) module and a multiple temporal aggregation (MTA) module, specifically designed to capture both short- and long-range temporal evolution. In particular, for short-range motion modeling, the ME module calculates the feature-level temporal differences from spatiotemporal features. It then utilizes the differences to excite the motion-sensitive channels of the features. The long-range temporal aggregations in previous works are typically achieved by stacking a large number of local temporal convolutions. Each convolution processes a local temporal window at a time. In contrast, the MTA module proposes to deform the local convolution to a group of sub-convolutions, forming a hierarchical residual architecture. Without introducing additional parameters, the features will be processed with a series of sub-convolutions, and each frame could complete multiple temporal aggregations with neighborhoods. The final equivalent receptive field of temporal dimension is accordingly enlarged, which is capable of modeling the long-range temporal relationship over distant frames. The two components of the TEA block are complementary in temporal modeling. Finally, our approach achieves impressive results at low FLOPs on several action recognition benchmarks, such as Kinetics, Something-Something, HMDB51, and UCF101, which confirms its effectiveness and efficiency.
更多
查看译文
关键词
temporal excitation,temporal modeling,short-range motions,long-range aggregations,motion excitation module,multiple temporal aggregation module,long-range temporal evolution,short-range motion modeling,ME module,feature-level temporal differences,spatiotemporal features,motion-sensitive channels,long-range temporal aggregations,local temporal convolutions,local temporal window,MTA module,local convolution,sub-convolutions,multiple temporal aggregations,temporal dimension,long-range temporal relationship,TEA block,action recognition benchmarks
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要