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Detecting Human-Object Interactions with Object-Guided Cross-Modal Calibrated Semantics
Hangjie Yuan Mang Wang Dong Ni Liangpeng Xu

Abstract
Human-Object Interaction (HOI) detection is an essential task to understand human-centric images from a fine-grained perspective. Although end-to-end HOI detection models thrive, their paradigm of parallel human/object detection and verb class prediction loses two-stage methods' merit: object-guided hierarchy. The object in one HOI triplet gives direct clues to the verb to be predicted. In this paper, we aim to boost end-to-end models with object-guided statistical priors. Specifically, We propose to utilize a Verb Semantic Model (VSM) and use semantic aggregation to profit from this object-guided hierarchy. Similarity KL (SKL) loss is proposed to optimize VSM to align with the HOI dataset's priors. To overcome the static semantic embedding problem, we propose to generate cross-modality-aware visual and semantic features by Cross-Modal Calibration (CMC). The above modules combined composes Object-guided Cross-modal Calibration Network (OCN). Experiments conducted on two popular HOI detection benchmarks demonstrate the significance of incorporating the statistical prior knowledge and produce state-of-the-art performances. More detailed analysis indicates proposed modules serve as a stronger verb predictor and a more superior method of utilizing prior knowledge. The codes are available at \url{https://github.com/JacobYuan7/OCN-HOI-Benchmark}.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| human-object-interaction-detection-on-hico | OCN (ResNet101) | mAP: 31.43 |
| human-object-interaction-detection-on-v-coco | OCN (ResNet50) | AP(S1): 64.2 AP(S2): 66.3 Time Per Frame(ms): 43 |
| human-object-interaction-detection-on-v-coco | OCN (ResNet101) | AP(S1): 65.3 AP(S2): 67.1 |
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