Soybean seedling detection and counting from UAV images based on an improved YOLOv8 Network

Haotian Wu, Junhua Kang, Heli Li
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Abstract

Abstract. The utilization of unmanned aerial vehicle (UAV) for soybean seedling detection is an effective way to estimate soybean yield, which plays a crucial role in agricultural planning and decision-making. However, the soybean seedlings objects in the UAV image are small, in clusters, and occluded each other, which makes it very challenging to achieve accurate object detection and counting. To address these issues, we optimize the YOLOv8 model and propose a GAS-YOLOv8 network, aiming to enhance the detection accuracy for the task of soybean seedling detection based on UAV images. Firstly, a global attention mechanism (GAM) is incorporated into the neck module of YOLOv8, which reallocates weights and prioritizes global information to more effectively extract soybean seedling features. Secondly, the CIOU loss function is replaced with the SIOU loss, which includes an angle loss term to guide the regression of bounding boxes. Experimental results show that, on the soybean seedling dataset, the proposed GAS-YOLOv8 model achieves a 1.3% improvement in mAP@0.5 and a 6% enhancement in detection performance in dense seedling areas, when compared to the baseline model YOLOv8s.When compared to other object detection models (YOLOv5, Faster R-CNN, etc.), the GAS-YOLOv8 model similarly achieved the best detection performance. These results demonstrate the effectiveness of the GAS-YOLOv8 in detecting dense soybean seedlings, providing more accurate theoretical support for subsequent yield estimation.
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基于改进的 YOLOv8 网络从无人机图像中检测和计算大豆幼苗
摘要利用无人飞行器(UAV)进行大豆幼苗检测是估算大豆产量的一种有效方法,在农业规划和决策中发挥着至关重要的作用。然而,无人机图像中的大豆幼苗物体较小、成团且相互遮挡,这给实现精确的物体检测和计数带来了很大挑战。针对这些问题,我们对 YOLOv8 模型进行了优化,并提出了 GAS-YOLOv8 网络,旨在提高基于无人机图像的大豆幼苗检测任务的检测精度。首先,在 YOLOv8 的颈部模块中加入全局关注机制(GAM),重新分配权重并优先考虑全局信息,从而更有效地提取大豆幼苗特征。其次,将 CIOU 损失函数替换为 SIOU 损失,后者包含一个角度损失项,用于指导边界框的回归。实验结果表明,在大豆秧苗数据集上,与基线模型 YOLOv8s 相比,所提出的 GAS-YOLOv8 模型在 mAP@0.5 上提高了 1.3%,在秧苗密集区域的检测性能上提高了 6%。与其他物体检测模型(YOLOv5、Faster R-CNN 等)相比,GAS-YOLOv8 模型同样取得了最佳检测性能。这些结果证明了 GAS-YOLOv8 在检测密集大豆幼苗方面的有效性,为后续的产量估算提供了更准确的理论支持。
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