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一种改进的基于YOLOv8s的无人机目标检测算法。

An improved YOLOv8s-based UAV target detection algorithm.

作者信息

Wang Xinwei, Hu Yue, Liang Qing, He Yujie, Zhou Li

机构信息

Xi'an University Of Posts And Telecommunications, School Of Electronic Engineering, Xi'an, Shaanxi Province, China.

Xi'an University Of Posts And Telecommunications, School of Communication and Information Engineering, Xi'an, Shaanxi Province, China.

出版信息

PLoS One. 2025 Aug 21;20(8):e0327732. doi: 10.1371/journal.pone.0327732. eCollection 2025.

Abstract

At present, the low-altitude economy is booming, and the application of drones has shown explosive growth, injecting new vitality into economic development. UAVs will face complex environmental perception and security risks when operating in low airspace. Accurate target detection technology has become a key support to ensure the orderly operation of UAVs. This paper studies UAV target detection algorithm based on deep learning, in order to improve detection accuracy and speed, and meet the needs of UAV autonomous perception under the background of low altitude economy. This study focuses on the limitations of the YOLOv8s target detection algorithm, including its low efficiency in multi-scale feature processing and insufficient small target detection capability, which hinder its ability to perform rapid and accurate large-scale searches for drones. An improved target detection algorithm is proposed to address these issues. The algorithm introduces AKConv into the C2F module. AKConv allows for convolution kernels with arbitrary numbers and sampling shapes, enabling convolution operations to more precisely adapt to targets at different locations, thereby achieving more efficient feature extraction. To further enhance the model's ability to extract critical features of small targets, the SPPF module incorporates the LSKA mechanism. This mechanism captures long-range dependencies and adaptivity more effectively while addressing computational complexity issues associated with large convolution kernels. Finally, the Bi-FPN feature pyramid network structure is introduced at the 18th layer of the model to accelerate and enrich feature fusion in the neck. Combined with the SCDown structure, a novel Bi-SCDown-FPN feature pyramid network structure is proposed, making it more suitable for detecting targets with insufficient feature capture in complex environments. Experimental results on the VisDrone2019 UAV dataset show that the improved algorithm achieves a 5.9%, 4.5%, and 6.1% increase in detection precision, detection recall, and mean average precision, respectively, compared to the original algorithm. Moreover, the parameter count and weight file size are reduced by 13.41% and 13.33%, respectively. Compared to other mainstream target detection algorithms, the proposed method demonstrates certain advantages. In summary, the target detection algorithm proposed in this paper achieves a dual improvement in model lightweighting and detection accuracy.

摘要

目前,低空经济蓬勃发展,无人机的应用呈现爆发式增长,为经济发展注入了新活力。无人机在低空空域运行时将面临复杂的环境感知和安全风险。精确的目标检测技术已成为确保无人机有序运行的关键支撑。本文研究基于深度学习的无人机目标检测算法,以提高检测精度和速度,满足低空经济背景下无人机自主感知的需求。本研究聚焦于YOLOv8s目标检测算法的局限性,包括其在多尺度特征处理方面效率低下以及小目标检测能力不足,这阻碍了其对无人机进行快速准确的大规模搜索的能力。针对这些问题,提出了一种改进的目标检测算法。该算法将AKConv引入C2F模块。AKConv允许使用任意数量和采样形状的卷积核,使卷积操作能够更精确地适应不同位置的目标,从而实现更高效的特征提取。为进一步增强模型提取小目标关键特征的能力,SPPF模块融入了LSKA机制。该机制在解决与大卷积核相关的计算复杂性问题的同时,更有效地捕捉长距离依赖性和适应性。最后,在模型的第18层引入Bi-FPN特征金字塔网络结构,以加速和丰富颈部的特征融合。结合SCDown结构,提出了一种新颖的Bi-SCDown-FPN特征金字塔网络结构,使其更适合在复杂环境中检测特征捕捉不足的目标。在VisDrone2019无人机数据集上的实验结果表明,与原始算法相比,改进算法的检测精度、检测召回率和平均精度分别提高了5.9%、4.5%和6.1%。此外,参数数量和权重文件大小分别减少了13.41%和13.33%。与其他主流目标检测算法相比,该方法具有一定优势。综上所述,本文提出的目标检测算法在模型轻量化和检测精度方面实现了双重提升。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9dc6/12370207/65150d538974/pone.0327732.g001.jpg

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