TY - EJOU
AU - Dong, Linyu
AU - Li, Tao
AU - Li, Hao
TI - HiFreq-DETR: A Hierarchical Framework Synergizing High-Resolution Injection and Frequency-Aware Multi-Scale Interaction for Tiny Object Detection
T2 - Computers, Materials \& Continua
PY -
VL -
IS -
SN - 1546-2226
AB - While Transformer-based detectors excel in global modeling, their efficacy in unmanned aerial vehicle (UAV)-based tiny object detection is limited by information loss during aggressive downsampling and the lack of high-frequency structural cues. To bridge this gap, we propose HiFreq-DETR, a dedicated framework that optimizes the synergy between spatial fidelity and semantic discriminability. The core innovation lies in its hierarchical information preservation strategy, which employs a ResNeSt14d backbone coupled with an S2 spatial injection path to recover critical high-resolution structural anchors, and introduces a frequency-selective interaction module to decouple target saliency from background noise. Experimental results demonstrate the substantial value of our approach. On the VisDrone dataset, HiFreq-DETR significantly outperforms the baseline RT-DETR, achieving improvements of 3.9% in AP and 4.4% in APS, confirming its effectiveness for tiny object detection. Furthermore, an optimized lite variant is evaluated to challenge the limits of high-efficiency processing for resource-constrained scenarios, while superior gains on the HazyDet dataset validate the model’s structural robustness in adverse aerial environments. These findings establish HiFreq-DETR as a high-fidelity and versatile solution for complex remote sensing applications.
KW - UAV; tiny object detection; multi-scale feature interaction; frequency-selective attention; high-resolution representation learning; DETR
DO - 10.32604/cmc.2026.083042