作者
Mengmeng Xu, Chen Zhao, David S Rojas, Ali Thabet, Bernard Ghanem
发表日期
2020
研讨会论文
Proceedings of the IEEE/CVF conference on computer vision and pattern recognition
页码范围
10156-10165
简介
Temporal action detection is a fundamental yet challenging task in video understanding. Video context is a critical cue to effectively detect actions, but current works mainly focus on temporal context, while neglecting semantic context as well as other important context properties. In this work, we propose a graph convolutional network (GCN) model to adaptively incorporate multi-level semantic context into video features and cast temporal action detection as a sub-graph localization problem. Specifically, we formulate video snippets as graph nodes, snippet-snippet correlations as edges, and actions associated with context as target sub-graphs. With graph convolution as the basic operation, we design a GCN block called GCNeXt, which learns the features of each node by aggregating its context and dynamically updates the edges in the graph. To localize each sub-graph, we also design an SGAlign layer to embed each sub-graph into the Euclidean space. Extensive experiments show that G-TAD is capable of finding effective video context without extra supervision and achieves state-of-the-art performance on two detection benchmarks. On ActivityNet-1.3 it obtains an average mAP of 34.09%; on THUMOS14 it reaches 51.6% at IoU@ 0.5 when combined with a proposal processing method. The code has been made available at https://github. com/frostinassiky/gtad.
引用总数
2019202020212022202320242911013716587
学术搜索中的文章
M Xu, C Zhao, DS Rojas, A Thabet, B Ghanem - Proceedings of the IEEE/CVF conference on computer …, 2020