Action Recognition
Action recognition, the task of automatically identifying actions within video data, aims to develop robust and efficient systems for understanding human and animal behavior. Current research focuses on improving accuracy and efficiency across diverse scenarios, employing various model architectures such as transformers, convolutional neural networks, and recurrent neural networks, often incorporating multimodal data (RGB, depth, skeleton, audio) and self-supervised learning techniques. This field is crucial for numerous applications, including autonomous systems, healthcare monitoring, and video surveillance, with ongoing efforts to address challenges like domain generalization, few-shot learning, and adversarial robustness.
Papers
Contextual Explainable Video Representation: Human Perception-based Understanding
Khoa Vo, Kashu Yamazaki, Phong X. Nguyen, Phat Nguyen, Khoa Luu, Ngan Le
Reconstructing Humpty Dumpty: Multi-feature Graph Autoencoder for Open Set Action Recognition
Dawei Du, Ameya Shringi, Anthony Hoogs, Christopher Funk
Cross-Modal Learning with 3D Deformable Attention for Action Recognition
Sangwon Kim, Dasom Ahn, Byoung Chul Ko
SVFormer: Semi-supervised Video Transformer for Action Recognition
Zhen Xing, Qi Dai, Han Hu, Jingjing Chen, Zuxuan Wu, Yu-Gang Jiang
Query Efficient Cross-Dataset Transferable Black-Box Attack on Action Recognition
Rohit Gupta, Naveed Akhtar, Gaurav Kumar Nayak, Ajmal Mian, Mubarak Shah
Dynamic Appearance: A Video Representation for Action Recognition with Joint Training
Guoxi Huang, Adrian G. Bors