Lightweight Tomato Leaf Intelligent Disease Detection Model Based on Adaptive Kernel Convolution and Feature Fusion

Baofeng Ji;Haoyu Li;Xin Jin;Ji Zhang;Fazhan Tao;Peng Li;Jianhua Wang;Huitao Fan
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Abstract

Timely detection and prevention of tomato leaf diseases are crucial for improving tomato yields. To address the issue of low efficiency in detecting tomato leaf diseases, this article proposes a lightweight tomato leaf disease recognition method. First, enhanced intersection over union is introduced in the you only look once v8 (YOLOv8) model to replace the complete intersection over union loss function, enhancing the accuracy of bounding box localization. To solve the problem of fixed sample shapes and square convolution kernels not adapting well to different targets, lightweight alterable Kernel convolution (AKConv) is introduced, providing arbitrary parameters and shapes for the convolution kernel. Inspired by the lightweight characteristics of AKConv, the C2f module is improved by integrating AKConv to reduce floating-point operations and computational complexity during the convolution process. Second, as it is not feasible to construct a lightweight model with a large depth to achieve sufficient accuracy, a new lightweight convolution technique is introduced. GSConv, combining the GS bottleneck and the efficient cross stage partial block (VoV-GSCSP), replaces the feature fusion layer to achieve lightweight feature enrichment. To test and train the model, a tomato leaf disease dataset was constructed. The improved model demonstrated higher accuracy and fewer parameters on the tomato leaf disease dataset. The improved model achieved an mean average precision 50 (mAP50) of 94.9 $\%$ and an mAP50:95 of 75.6 $\%$ , representing increases of 1.9 $\%$ and 2.8 $\%$ over the original model, respectively. The number of parameters is only 2 322 262, a reduction of 22.8 $\%$ compared to the original model. This method meets the daily needs of tomato leaf disease detection, providing technical support for agricultural spraying robots to quickly and accurately detect tomato leaf diseases and precisely spray pesticides.
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基于自适应核卷积和特征融合的轻量级番茄叶片智能病害检测模型
及时发现和预防番茄叶病对提高番茄产量至关重要。针对番茄叶病检测效率低的问题,本文提出了一种轻量级番茄叶病识别方法。首先,在 You only look once v8(YOLOv8)模型中引入了增强的交乘联合(enhanced intersection over union)损失函数,取代了完全交乘联合损失函数,提高了边界框定位的准确性。为了解决固定样本形状和方形卷积核不能很好地适应不同目标的问题,引入了轻量级可改变卷积核(AKConv),为卷积核提供任意参数和形状。受 AKConv 轻量级特性的启发,C2f 模块通过整合 AKConv 进行了改进,以减少卷积过程中的浮点运算和计算复杂度。其次,由于构建大深度的轻量级模型无法达到足够的精度,因此引入了一种新的轻量级卷积技术。GSConv 结合了 GS 瓶颈和高效的跨阶段部分块(VoV-GSCSP),取代了特征融合层,实现了轻量级的特征丰富。为了测试和训练该模型,构建了一个番茄叶病数据集。改进后的模型在番茄叶病数据集上表现出更高的精确度和更少的参数。改进模型的平均精确度 50 (mAP50) 为 94.9%,mAP50:95 为 75.6%,分别比原始模型提高了 1.9%和 2.8%。参数数仅为 2 322 262,比原始模型减少了 22.8%。该方法满足了番茄叶片病害检测的日常需求,为农业喷洒机器人快速准确地检测番茄叶片病害、精准喷洒农药提供了技术支持。
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2024 Index IEEE Transactions on AgriFood Electronics Vol. 2 Table of Contents Front Cover IEEE Circuits and Systems Society Information IEEE Circuits and Systems Society Information
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