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Detecting Human-Object Interactions via Functional Generalization

About

We present an approach for detecting human-object interactions (HOIs) in images, based on the idea that humans interact with functionally similar objects in a similar manner. The proposed model is simple and efficiently uses the data, visual features of the human, relative spatial orientation of the human and the object, and the knowledge that functionally similar objects take part in similar interactions with humans. We provide extensive experimental validation for our approach and demonstrate state-of-the-art results for HOI detection. On the HICO-Det dataset our method achieves a gain of over 2.5% absolute points in mean average precision (mAP) over state-of-the-art. We also show that our approach leads to significant performance gains for zero-shot HOI detection in the seen object setting. We further demonstrate that using a generic object detector, our model can generalize to interactions involving previously unseen objects.

Ankan Bansal, Sai Saketh Rambhatla, Abhinav Shrivastava, Rama Chellappa• 2019

Related benchmarks

TaskDatasetResultRank
Human-Object Interaction DetectionHICO-DET (test)
mAP (full)21.96
493
Human-Object Interaction DetectionV-COCO (test)
AP (Role, Scenario 1)53.2
270
Human-Object Interaction DetectionHICO-DET
mAP (Full)21.96
233
Human-Object Interaction DetectionHICO-DET Zero-Shot
mAP (Default Unseen)11.31
33
HOI DetectionHICO-DET (test)
Box mAP (Full)21.96
32
HOI DetectionHICO-DET Unseen Combination
Unseen mAP11.31
19
Human-Object Interaction DetectionHICO-DET Unseen Composition (UC)
Unseen AP10.93
17
HOI DetectionHICO-DET Default
Full HOI mAP21.96
11
Zero-Shot HOI DetectionHICO-DET Unseen Object 1.0 (test)
Unseen Composition Score11.22
10
HOI DetectionHICO-Det Unseen Object
Unseen Performance11.22
8
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