CVPR2020
Context-Aware and Scale-Insensitive Temporal Repetition Counting
Huaidong Zhang, Xuemiao Xu, Guoqiang Han, Shengfeng He
Abstract
counting area, we construct a new and largest benchmark, which contains 526 videos with diverse repetitive actions. Extensive experiments show that the proposed network trained on a single dataset outperforms state-of-the-art methods on several benchmarks, indicating that the proposed framework is general enough to capture repetition patterns across domains. Code and data are available in https://github.com/Xiaodomgdomg/ Deep-Temporal-Repetition-Counting.