UAV-YOLOv5: A Swin-Transformer-Enabled Small Object Detection Model for Long-Range UAV Images

Q1 Decision Sciences Annals of Data Science Pub Date : 2024-05-25 DOI:10.1007/s40745-024-00546-z
Jun Li, Chong Xie, Sizheng Wu, Yawei Ren
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Abstract

This paper tackle the challenges associated with low recognition accuracy and the detection of occlusions when identifying long-range and diminutive targets (such as UAVs). We introduce a sophisticated detection framework named UAV-YOLOv5, which amalgamates the strengths of Swin Transformer V2 and YOLOv5. Firstly, we introduce Focal-EIOU, a refinement of the K-means algorithm tailored to generate anchor boxes better suited for the current dataset, thereby improving detection performance. Second, the convolutional and pooling layers in the network with step size greater than 1 are replaced to prevent information loss during feature extraction. Then, the Swin Transformer V2 module is introduced in the Neck to improve the accuracy of the model, and the BiFormer module is introduced to improve the ability of the model to acquire global and local feature information at the same time. In addition, BiFPN is introduced to replace the original FPN structure so that the network can acquire richer semantic information and fuse features across scales more effectively. Lastly, a small target detection head is appended to the existing architecture, augmenting the model’s proficiency in detecting smaller targets with heightened precision. Furthermore, various experiments are conducted on the comprehensive dataset to verify the effectiveness of UAV-YOLOv5, achieving an average accuracy of 87%. Compared with YOLOv5, the mAP of UAV-YOLOv5 is improved by 8.5%, which verifies that it has high-precision long-range small-target UAV optoelectronic detection capability.

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UAV-YOLOv5:斯温变换器支持的远距离无人机图像小目标检测模型
本文探讨了在识别远距离和小型目标(如无人机)时与识别精度低和检测遮挡物相关的挑战。我们介绍了一种名为 UAV-YOLOv5 的复杂检测框架,它融合了 Swin Transformer V2 和 YOLOv5 的优点。首先,我们引入了 Focal-EIOU,这是对 K-means 算法的改进,旨在生成更适合当前数据集的锚点框,从而提高检测性能。其次,替换了网络中步长大于 1 的卷积层和池化层,以防止特征提取过程中的信息丢失。然后,在 Neck 中引入 Swin Transformer V2 模块以提高模型的准确性,并引入 BiFormer 模块以提高模型同时获取全局和局部特征信息的能力。此外,还引入了 BiFPN,以取代原有的 FPN 结构,从而使网络能够获取更丰富的语义信息,并更有效地跨尺度融合特征。最后,在现有结构中加入了小型目标检测头,从而提高了模型检测小型目标的精确度。此外,我们还在综合数据集上进行了各种实验,以验证 UAV-YOLOv5 的有效性,其平均准确率达到了 87%。与 YOLOv5 相比,UAV-YOLOv5 的 mAP 提高了 8.5%,验证了其具备高精度远程小目标无人机光电探测能力。
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来源期刊
Annals of Data Science
Annals of Data Science Decision Sciences-Statistics, Probability and Uncertainty
CiteScore
6.50
自引率
0.00%
发文量
93
期刊介绍: Annals of Data Science (ADS) publishes cutting-edge research findings, experimental results and case studies of data science. Although Data Science is regarded as an interdisciplinary field of using mathematics, statistics, databases, data mining, high-performance computing, knowledge management and virtualization to discover knowledge from Big Data, it should have its own scientific contents, such as axioms, laws and rules, which are fundamentally important for experts in different fields to explore their own interests from Big Data. ADS encourages contributors to address such challenging problems at this exchange platform. At present, how to discover knowledge from heterogeneous data under Big Data environment needs to be addressed.     ADS is a series of volumes edited by either the editorial office or guest editors. Guest editors will be responsible for call-for-papers and the review process for high-quality contributions in their volumes.
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