No-Frills Human-Object Interaction Detection: Factorization, Layout Encodings, and Training Techniques

ICCV 2019 Tanmay GuptaAlexander SchwingDerek Hoiem

We show that for human-object interaction detection a relatively simple factorized model with appearance and layout encodings constructed from pre-trained object detectors outperforms more sophisticated approaches. Our model includes factors for detection scores, human and object appearance, and coarse (box-pair configuration) and optionally fine-grained layout (human pose)... (read more)

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