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BoxMask: Revisiting Bounding Box Supervision for Video Object Detection
Khurram Azeem Hashmi Alain Pagani Didier Stricker Muhammamd Zeshan Afzal

Abstract
We present a new, simple yet effective approach to uplift video object detection. We observe that prior works operate on instance-level feature aggregation that imminently neglects the refined pixel-level representation, resulting in confusion among objects sharing similar appearance or motion characteristics. To address this limitation, we propose BoxMask, which effectively learns discriminative representations by incorporating class-aware pixel-level information. We simply consider bounding box-level annotations as a coarse mask for each object to supervise our method. The proposed module can be effortlessly integrated into any region-based detector to boost detection. Extensive experiments on ImageNet VID and EPIC KITCHENS datasets demonstrate consistent and significant improvement when we plug our BoxMask module into numerous recent state-of-the-art methods.
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| video-object-detection-on-imagenet-vid | BoxMask (ResNet-50) | MAP : 80.7 |
| video-object-detection-on-imagenet-vid | BoxMask(ResNeXt101) | MAP : 84.8 |
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