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Interactiveness Field in Human-Object Interactions

About

Human-Object Interaction (HOI) detection plays a core role in activity understanding. Though recent two/one-stage methods have achieved impressive results, as an essential step, discovering interactive human-object pairs remains challenging. Both one/two-stage methods fail to effectively extract interactive pairs instead of generating redundant negative pairs. In this work, we introduce a previously overlooked interactiveness bimodal prior: given an object in an image, after pairing it with the humans, the generated pairs are either mostly non-interactive, or mostly interactive, with the former more frequent than the latter. Based on this interactiveness bimodal prior we propose the "interactiveness field". To make the learned field compatible with real HOI image considerations, we propose new energy constraints based on the cardinality and difference in the inherent "interactiveness field" underlying interactive versus non-interactive pairs. Consequently, our method can detect more precise pairs and thus significantly boost HOI detection performance, which is validated on widely-used benchmarks where we achieve decent improvements over state-of-the-arts. Our code is available at https://github.com/Foruck/Interactiveness-Field.

Xinpeng Liu, Yong-Lu Li, Xiaoqian Wu, Yu-Wing Tai, Cewu Lu, Chi-Keung Tang• 2022

Related benchmarks

TaskDatasetResultRank
Human-Object Interaction DetectionHICO-DET (test)
mAP (full)33.51
493
Human-Object Interaction DetectionV-COCO (test)
AP (Role, Scenario 1)63
270
Human-Object Interaction DetectionHICO-DET
mAP (Full)36.28
233
Human-Object Interaction DetectionHICO-DET Known Object (test)
mAP (Full)36.28
112
Human-Object Interaction DetectionV-COCO 1.0 (test)
AP_role (#1)63
76
Human-Object Interaction DetectionV-COCO
AP^1 Role63
65
HOI DetectionHICO-DET v1.0 (test)
mAP (Default, Full)33.51
29
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