蚜虫- yolo:一种用于复杂田间环境下蚜虫实时识别和计数的轻量级检测模型

Yuzhu Zheng;Jun Qi;Yun Yang;Po Yang;Zhipeng Yuan
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摘要

蚜虫是威胁全球作物产量的最具破坏性的害虫之一,通过取食和病毒传播危害作物。田间蚜虫的准确检测是实施农业害虫可持续治理的关键步骤。然而,蚜虫体积小,图像背景复杂,对现场检测的准确识别和分类提出了重大挑战。针对这一挑战,本研究提出了一种轻量级的实时目标检测模型蚜虫- yolo (a - yolo),用于现场蚜虫的识别和计数。具体而言,提出了一种具有C2f-CG模块的微小路径聚合网络,通过有效融合多层特征,提高微小目标的检测能力,同时保持较低的计算成本。在模型训练中,采用归一化Wasserstein距离损失函数,解决了蚜虫体积小带来的优化挑战。此外,本文还引入了一种优化的数据增强方法Mosaic9来丰富训练样本和正监督信号,以解决微小蚜虫的分类挑战。为了验证a - yolo的有效性,本研究在一个复杂野外环境下的手持设备采集的蚜虫检测数据集上进行了综合实验。实验结果表明,a - yolo获得了出色的检测效率,mAP@0.5为83.4%,mAP@0.5:0.95为33.7%,推理速度为72 FPS,模型大小为30.6 MB。与采用传统马赛克数据增强的YOLOv8m模型相比,该方法提高了mAP@0.5 5.8%, mAP@0.5:0.95 2.7%,推理速度提高了5 FPS,模型大小降低了38.4%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Aphid-YOLO: A Lightweight Detection Model for Real-Time Identification and Counting of Aphids in Complex Field Environments
Aphids are among the most destructive pests that threaten global crop yields, harming crops through feeding and virus transmission. Accurate detection of aphids in fields is a crucial step in implementing sustainable agricultural pest management. However, the tiny size of aphids and the complex image background present significant challenges for accurate identification and classification for in-field detection. In response to the challenges, this study proposes a lightweight real-time object detection model, Aphid-YOLO (A-YOLO), for in-field aphid identification and counting. Specifically, a tiny path aggregation network with C2f-CG modules is proposed to enhance the detection ability of tiny objects while maintaining a low computational cost through efficiently fusing multilayer features. For model training, a normalized Wasserstein distance loss function is adopted to address the optimization challenges caused by the tiny size of aphids. In addition, an optimized data augmentation method, Mosaic9, is introduced to enrich training samples and positive supervised signals for addressing the classification challenge of tiny aphids. To validate the effectiveness of A-YOLO, this study conducts comprehensive experiments on an aphid detection dataset with images collected by hand-held devices from a complex field environment. Experimental results demonstrate that A-YOLO achieves outstanding detection efficiency, with an mAP@0.5 of 83.4%, an mAP@0.5:0.95 of 33.7%, an inference speed of 72 FPS, and a model size of 30.6 MB. Compared to the YOLOv8m model employing traditional Mosaic data augmentation, the proposed method improves mAP@0.5 by 5.8%, mAP@0.5:0.95 by 2.7%, increases inference speed by 5 FPS, and reduces model size by 38.4% .
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