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Anchor-Intermediate Detector: Decoupling and Coupling Bounding Boxes for Accurate Object Detection

Authors :
Lv, Yilong
Li, Min
He, Yujie
Li, Shaopeng
He, Zhuzhen
Yang, Aitao
Publication Year :
2023

Abstract

Anchor-based detectors have been continuously developed for object detection. However, the individual anchor box makes it difficult to predict the boundary's offset accurately. Instead of taking each bounding box as a closed individual, we consider using multiple boxes together to get prediction boxes. To this end, this paper proposes the \textbf{Box Decouple-Couple(BDC) strategy} in the inference, which no longer discards the overlapping boxes, but decouples the corner points of these boxes. Then, according to each corner's score, we couple the corner points to select the most accurate corner pairs. To meet the BDC strategy, a simple but novel model is designed named the \textbf{Anchor-Intermediate Detector(AID)}, which contains two head networks, i.e., an anchor-based head and an anchor-free \textbf{Corner-aware head}. The corner-aware head is able to score the corners of each bounding box to facilitate the coupling between corner points. Extensive experiments on MS COCO show that the proposed anchor-intermediate detector respectively outperforms their baseline RetinaNet and GFL method by $\sim$2.4 and $\sim$1.2 AP on the MS COCO test-dev dataset without any bells and whistles. Code is available at: https://github.com/YilongLv/AID.<br />Comment: Submitted 29 September, 2023; originally announced October 2023. Accepted by ICCV2023

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2310.05666
Document Type :
Working Paper