基于dts - yolov10 - sod的木虱智能监测

Li Zhang;Qianyue Liang;Vijay John;Hong Chen;Shanjun Li;Weifu Li;Yaohui Chen
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摘要

柑橘木虱是一种常见的害虫,它们以柑橘树的汁液为食,导致树变黄、变形,严重的话还可能导致树死亡。有效地识别和监测这些害虫对柑橘产业的健康和可持续发展至关重要。快速准确的检测使农民能够及时控制柑橘木虱的侵扰,从而保护他们的作物并确保产业的可持续性。在本文中,我们利用定制的害虫捕获设备捕捉木虱,并通过物联网将图像上传到服务器。我们使用该设备捕获了420张分辨率为3820 × 2160的图像。这些图像包含各种类型的害虫,用于模型实验和训练。在服务器端,利用扩散转换器(diffusion transformer, DiT)来增加训练数据,解决样本容量有限和类不平衡等问题。YOLOv10集成了一个小型目标检测头,以增强木虱图像中浅层特征的捕获。此外,采用软非极大值抑制方法解决了木虱计数中的重叠问题。最后,结果被上传到一个应用程序上,让用户实时了解柑橘害虫的情况。实验结果表明,dts生成的图像在Frechet初始距离、习得的感知图像斑块相似度和多尺度结构相似度指标上的得分分别为76.79、0.29和1.68,分别比常用的DDPM模型高8.51、0.18和0.34。改进的YOLOv10模型使用扩展的DiTs数据集进行训练,召回率、f1分数和准确率分别达到90.55%、92.18%和93.88%,在所有指标上都表现出色。该方法实现了柑橘木虱的全自动识别,便于实时检测,有助于柑橘作物的保护。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent Psyllid Monitoring Based on DiTs-YOLOv10-SOD
Citrus psyllids are common pests that feed on the sap of citrus trees, leading to yellowing, deformation, and potentially tree death in severe cases. Effective identification and monitoring of these pests are crucial for the health and sustainable development of the citrus industry. Rapid and accurate detection enables farmers to control citrus psyllid infestations promptly, thereby protecting their crops and ensuring industry sustainability. In this article, we utilize a custom-built pest-trapping device to capture the psyllids and upload the image to a server via the Internet of Things. We captured 420 images with a resolution of 3820 × 2160 using the device. These images, containing various types of pests, were utilized for model experimentation and training. On the server, the diffusion transformer (DiT) is utilized to increase the training data, addressing challenges such as limited sample size and class imbalance. A small object detection head is integrated into YOLOv10 to enhance the capture of shallow features in psyllid images. In addition, the soft nonmaximum suppression method is applied to resolve overlapping issues in counting the psyllids. Finally, the results are uploaded to an app, allowing users to stay informed about citrus pest conditions in real time. The experimental results indicate that DiTs-generated images achieved scores of 76.79, 0.29, and 1.68 in the Frechet inception distance, learned perceptual image patch similarity, and multiscale structural similarity metrics, respectively, outperforming the commonly used DDPM model by 8.51, 0.18, and 0.34, respectively. The improved YOLOv10 model, trained with the expanded DiTs dataset, reached a recall, F1-score, and precision of 90.55%, 92.18%, and 93.88%, respectively, demonstrating outstanding performance across all metrics. This approach enables fully automated recognition of citrus psyllids, facilitating real-time detection and contributing to the protection of citrus crops.
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