Abstract

Detecting unmanned aerial vehicles (UAVs) in various environments and conditions is highly demanded in applications, and for solving the problem of detecting UAVs under low altitude background, we propose a high performance and effective LA-YOLO network by integrating the SimAM attention mechanism and introducing a fusion block with the normalized Wasserstein distance. By recording images of multi-UAV under low altitude background and annotating them, we construct a dataset called GUET-UAV-LA to evaluate the performance of the proposed network. Using the GUET-UAV-LA dataset and public datasets, the experiments validate the effectiveness of the proposed network and show that LA-YOLO can improve mAP by up to 5.9% compared to the existing networks.

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