Automatic Disease Detection from Strawberry Leaf Based on Improved YOLOv8

Plants Pub Date : 2024-09-11 DOI:10.3390/plants13182556
Yuelong He, Yunfeng Peng, Chuyong Wei, Yuda Zheng, Changcai Yang, Tengyue Zou
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Abstract

Strawberries are susceptible to various diseases during their growth, and leaves may show signs of diseases as a response. Given that these diseases generate yield loss and compromise the quality of strawberries, timely detection is imperative. To automatically identify diseases in strawberry leaves, a KTD-YOLOv8 model is introduced to enhance both accuracy and speed. The KernelWarehouse convolution is employed to replace the traditional component in the backbone of the YOLOv8 to reduce the computational complexity. In addition, the Triplet Attention mechanism is added to fully extract and fuse multi-scale features. Furthermore, a parameter-sharing diverse branch block (DBB) sharing head is constructed to improve the model’s target processing ability at different spatial scales and increase its accuracy without adding too much calculation. The experimental results show that, compared with the original YOLOv8, the proposed KTD-YOLOv8 increases the average accuracy by 2.8% and reduces the floating-point calculation by 38.5%. It provides a new option to guide the intelligent plant monitoring system and precision pesticide spraying system during the growth of strawberry plants.
基于改进型 YOLOv8 的草莓叶片病害自动检测技术
草莓在生长过程中容易受到各种病害的侵袭,叶片可能会出现病害症状。鉴于这些病害会导致草莓减产并影响其品质,因此及时发现病害势在必行。为了自动识别草莓叶片上的病害,我们引入了 KTD-YOLOv8 模型,以提高准确性和速度。在 YOLOv8 的骨干中,采用了 KernelWarehouse 卷积来取代传统组件,以降低计算复杂度。此外,还增加了三重注意机制,以充分提取和融合多尺度特征。此外,还构建了一个参数共享的多样化分支块(DBB)共享头,以提高模型在不同空间尺度下的目标处理能力,并在不增加过多计算量的情况下提高精度。实验结果表明,与原始 YOLOv8 相比,KTD-YOLOv8 的平均精度提高了 2.8%,浮点运算量减少了 38.5%。它为指导草莓植物生长过程中的智能植物监测系统和精准农药喷洒系统提供了新的选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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