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Weed Classification for Site-Specific Weed Management Using an Automated Stereo Computer-Vision Machine-Learning System in Rice Fields

机译:使用自动立体计算机视觉机器学习系统在稻田中进行特定地点杂草管理的杂草分类

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摘要

Site-specific weed management and selective application of herbicides as eco-friendly techniques are still challenging tasks to perform, especially for densely cultivated crops, such as rice. This study is aimed at developing a stereo vision system for distinguishing between rice plants and weeds and further discriminating two types of weeds in a rice field by using artificial neural networks (ANNs) and two metaheuristic algorithms. For this purpose, stereo videos were recorded across the rice field and different channels were extracted and decomposed into the constituent frames. Next, upon pre-processing and segmentation of the frames, green plants were extracted out of the background. For accurate discrimination of the rice and weeds, a total of 302 color, shape, and texture features were identified. Two metaheuristic algorithms, namely particle swarm optimization (PSO) and the bee algorithm (BA), were used to optimize the neural network for selecting the most effective features and classifying different types of weeds, respectively. Comparing the proposed classification method with the K-nearest neighbors (KNN) classifier, it was found that the proposed ANN-BA classifier reached accuracies of 88.74% and 87.96% for right and left channels, respectively, over the test set. Taking into account either the arithmetic or the geometric means as the basis, the accuracies were increased up to 92.02% and 90.7%, respectively, over the test set. On the other hand, the KNN suffered from more cases of misclassification, as compared to the proposed ANN-BA classifier, generating an overall accuracy of 76.62% and 85.59% for the classification of the right and left channel data, respectively, and 85.84% and 84.07% for the arithmetic and geometric mean values, respectively.
机译:特定地点的杂草管理和除草剂的选择性施用作为生态友好技术仍然是一项艰巨的任务,尤其是对于水稻等密植作物而言。这项研究旨在开发一种立体视觉系统,用于区分稻米植物和杂草,并通过使用人工神经网络(ANN)和两种元启发式算法进一步区分稻田中的两种杂草。为此,在稻田上录制了立体视频,并提取了不同的通道并将其分解为组成帧。接下来,在对框架进行预处理和分割之后,将绿色植物从背景中提取出来。为了准确区分大米和杂草,共鉴定出302种颜色,形状和质地特征。两种元启发式算法,即粒子群算法(PSO)和蜂算法(BA),用于优化神经网络,分别选择最有效的特征和对不同类型的杂草进行分类。将拟议的分类方法与K最近邻分类器进行比较,发现拟议的ANN-BA分类器在测试集上左右声道的准确度分别达到88.74%和87.96%。考虑到算术或几何均数作为基础,相对于测试集,准确性分别提高至92.02%和90.7%。另一方面,与拟议的ANN-BA分类器相比,KNN遭受更多错误分类的情况,对于左右声道数据的分类,分别产生76.62%和85.59%的总体准确度,以及85.84%算术平均值和几何平均值分别为84.07%。

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