Small Object Detection in Complex Backgrounds with Multi-Scale Attention and Global Relation Modeling
This paper proposes a novel framework for small object detection in complex backgrounds that integrates Residual Haar Wavelet Downsampling, Global Relation Modeling, Cross-Scale Hybrid Attention, and a Center-Assisted Loss to preserve fine-grained details, suppress noise, and enhance localization accuracy, achieving state-of-the-art performance on the RGBT-Tiny benchmark.