Tomato leaf disease detection using series of Convolutional and Depthwise Convolutional Layers

Sagar Deep Deb, R. Kashyap, A. Abhishek, R. Lavanya, Pushp Paritosh, R. K. Jha
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Abstract

Numerous studies have focused on enhancing the effectiveness of identifying leaf diseases through image classification. However, it is essential to develop a classification system with fewer parameters to enable it to operate efficiently on mobile devices. As a result, A lot of research works are going on to make the neural network computationally light so that we can utilise these networks on a mobile device as it cannot afford a GPU to run in background because of the space and memory limitations of a portable device. In this study, we propose a deep learningbased approach for tomato leaf disease detection using a series of convolutional and depthwise convolutional layers. The proposed model contains only 17,209 trainable parameters. The model was able to achieve high accuracy of 92.10 % on tomato crop from a publicly available PlantVillage dataset while utilizing a smaller number of parameters.
基于卷积层和深度卷积层的番茄叶片病害检测
许多研究都集中在通过图像分类来提高识别叶片病害的有效性。然而,必须开发一个参数较少的分类系统,使其能够在移动设备上有效地运行。因此,大量的研究工作正在进行,以使神经网络计算轻,这样我们就可以在移动设备上利用这些网络,因为它无法负担GPU在后台运行,因为便携设备的空间和内存限制。在这项研究中,我们提出了一种基于深度学习的番茄叶片病害检测方法,该方法使用了一系列卷积和深度卷积层。该模型仅包含17,209个可训练参数。该模型能够在使用较少参数的情况下,从公开可用的PlantVillage数据集中获得92.10%的番茄作物精度。
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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