iCAN: Instance-Centric Attention Network for Human-Object Interaction Detection

30 Aug 2018  ·  Chen Gao, Yuliang Zou, Jia-Bin Huang ·

Recent years have witnessed rapid progress in detecting and recognizing individual object instances. To understand the situation in a scene, however, computers need to recognize how humans interact with surrounding objects. In this paper, we tackle the challenging task of detecting human-object interactions (HOI). Our core idea is that the appearance of a person or an object instance contains informative cues on which relevant parts of an image to attend to for facilitating interaction prediction. To exploit these cues, we propose an instance-centric attention module that learns to dynamically highlight regions in an image conditioned on the appearance of each instance. Such an attention-based network allows us to selectively aggregate features relevant for recognizing HOIs. We validate the efficacy of the proposed network on the Verb in COCO and HICO-DET datasets and show that our approach compares favorably with the state-of-the-arts.

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Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Human-Object Interaction Detection Ambiguious-HOI iCAN mAP 8.14 # 2
Human-Object Interaction Detection HICO-DET iCAN mAP 14.84 # 51
Human-Object Interaction Detection V-COCO iCAN AP(S1) 44.7 # 31

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