Deep Alternative Neural Network: Exploring Contexts as Early as Possible for Action Recognition † School of Electronics and Computer Engineering, Peking University †
–Neural Information Processing Systems
Contexts are crucial for action recognition in video. Current methods often mine contexts after extracting hierarchical local features and focus on their high-order encodings. This paper instead explores contexts as early as possible and leverages their evolutions for action recognition. In particular, we introduce a novel architecture called deep alternative neural network (DANN) stacking alternative layers. Each alternative layer consists of a volumetric convolutional layer followed by a recurrent layer.
Neural Information Processing Systems
Mar-12-2024, 12:31:37 GMT