English

Cross-Layer Feature Self-Attention Module for Multi-Scale Object Detection

Computer Vision and Pattern Recognition 2025-10-17 v1

Abstract

Recent object detection methods have made remarkable progress by leveraging attention mechanisms to improve feature discriminability. However, most existing approaches are confined to refining single-layer or fusing dual-layer features, overlooking the rich inter-layer dependencies across multi-scale representations. This limits their ability to capture comprehensive contextual information essential for detecting objects with large scale variations. In this paper, we propose a novel Cross-Layer Feature Self-Attention Module (CFSAM), which holistically models both local and global dependencies within multi-scale feature maps. CFSAM consists of three key components: a convolutional local feature extractor, a Transformer-based global modeling unit that efficiently captures cross-layer interactions, and a feature fusion mechanism to restore and enhance the original representations. When integrated into the SSD300 framework, CFSAM significantly boosts detection performance, achieving 78.6% mAP on PASCAL VOC (vs. 75.5% baseline) and 52.1% mAP on COCO (vs. 43.1% baseline), outperforming existing attention modules. Moreover, the module accelerates convergence during training without introducing substantial computational overhead. Our work highlights the importance of explicit cross-layer attention modeling in advancing multi-scale object detection.

Keywords

Cite

@article{arxiv.2510.14726,
  title  = {Cross-Layer Feature Self-Attention Module for Multi-Scale Object Detection},
  author = {Dingzhou Xie and Rushi Lan and Cheng Pang and Enhao Ning and Jiahao Zeng and Wei Zheng},
  journal= {arXiv preprint arXiv:2510.14726},
  year   = {2025}
}
R2 v1 2026-07-01T06:41:28.506Z