English

Spatio-Temporal Learnable Proposals for End-to-End Video Object Detection

Computer Vision and Pattern Recognition 2022-10-10 v2

Abstract

This paper presents the novel idea of generating object proposals by leveraging temporal information for video object detection. The feature aggregation in modern region-based video object detectors heavily relies on learned proposals generated from a single-frame RPN. This imminently introduces additional components like NMS and produces unreliable proposals on low-quality frames. To tackle these restrictions, we present SparseVOD, a novel video object detection pipeline that employs Sparse R-CNN to exploit temporal information. In particular, we introduce two modules in the dynamic head of Sparse R-CNN. First, the Temporal Feature Extraction module based on the Temporal RoI Align operation is added to extract the RoI proposal features. Second, motivated by sequence-level semantic aggregation, we incorporate the attention-guided Semantic Proposal Feature Aggregation module to enhance object feature representation before detection. The proposed SparseVOD effectively alleviates the overhead of complicated post-processing methods and makes the overall pipeline end-to-end trainable. Extensive experiments show that our method significantly improves the single-frame Sparse RCNN by 8%-9% in mAP. Furthermore, besides achieving state-of-the-art 80.3% mAP on the ImageNet VID dataset with ResNet-50 backbone, our SparseVOD outperforms existing proposal-based methods by a significant margin on increasing IoU thresholds (IoU > 0.5).

Keywords

Cite

@article{arxiv.2210.02368,
  title  = {Spatio-Temporal Learnable Proposals for End-to-End Video Object Detection},
  author = {Khurram Azeem Hashmi and Didier Stricker and Muhammamd Zeshan Afzal},
  journal= {arXiv preprint arXiv:2210.02368},
  year   = {2022}
}

Comments

BMVC 2022

R2 v1 2026-06-28T02:52:01.565Z