基于深度学习的植物图像识别研究

Xianfeng Zeng, Jing Chang, Changxiu Dai
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引用次数: 0

摘要

近年来,基于深度学习算法的植物及其病害智能识别方法越来越受到研究人员的关注。本文以植物影像为研究对象。首先列举了机器学习中传统方法和深度学习方法的研究成果,总结了植物图像的分类特征和植物识别的一般流程,同时介绍了深度学习的一般算法,研究了卷积神经网络的结构特征,并描述了卷积神经网络的经典模型。实验比较了VGG16+SVM分类器和VGG16+Softmax分类器对植物图像的识别效率。实验表明,在相同条件下,SVM分类器对单一背景的植物图像具有较高的识别率,但对复杂背景的植物图像的识别率与softmax分类器接近,VGG16算法在叶片形状过于相似的细粒度植物图像上的识别率有待进一步提高。这也证明了背景复杂、细粒度的植物图像的识别与分类是实现植物智能识别的主要制约因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Plant Image Identification Based on Deep Learning
In recent years, increasing attention was paid to the methods from researchers that about the intelligent identification of plants and their diseases based on deep learning algorithms. In this paper, plant images were as the study object. Firstly we listed the Research results on traditional methods and deep learning methods of machine learning, and summarized the classification features of plant images and the general procedure of plant identification, Simultaneously we introduced the general algorithms for deep learning, and studied the structural features of convolutional neural networks, and described the classical model of convolutional neural networks, At the end, we compared experimentally the identification efficiency of VGG16+SVM classifier and VGG16+Softmax classifier on plant images. Experiments have shown that under the same conditions, the SVM classifier has a higher identification rate for plant images with single backgrounds, but the identification rate for plant images with complicate backgrounds is close to that of the softmax classifier, and the VGG16 algorithm needs improvement further in the identification rate on fine-grained plant images with too similar leaf shapes. This also proved that the identification and classification of plant images with complicated background and fine-grained is a major constraint in achieving intelligent identification on plant.
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