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    • 摘要: 针对图像中背景复杂、目标小、分布密集等问题,提出了一种改进的DES-YOLO方法。通过引入可变形注意力模块(DAM),网络可动态关注关键区域,提高物体识别和定位精度;采用高效交并比(EIoU)损失函数,减少低质量样本影响,增强泛化能力和检测精度;在网络头部加入一层160 pixel×160 pixel的浅层特征图,加强小目标特征提取;并使用分步训练策略提升模型性能。实验结果表明,该模型在遥感数据集上的mAP@50提升了1.4%,在纺织数据集上提升了1.7%,验证了DES-YOLO的广泛适用性与有效性。

       

      Abstract: To address the challenges of complex backgrounds, small targets, and dense distributions in images, an improved method called DES-YOLO is proposed. By introducing the deformable attention module (DAM), the network can dynamically focus on key regions, improving object recognition and localization accuracy. The efficient intersection over union (EIoU) loss function is employed to reduce the impact of low-quality samples, enhancing the model's generalization ability and detection accuracy. A shallow feature map layer of 160 pixel×160 pixel is added to the network head to strengthen small target feature extraction. A stepwise training strategy is also adopted to further improve model performance. Experimental results show that the mAP@50 of the model increased by 1.4% on the remote sensing dataset and by 1.7% on the textile dataset, demonstrating the broad applicability and effectiveness of DES-YOLO.