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首页> 外文期刊>International journal of agent technologies and systems >A Hybrid Approach for Automated Plant Leaf Recognition Using Hybrid Texture Features and Machine Learning-Based Classifiers
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A Hybrid Approach for Automated Plant Leaf Recognition Using Hybrid Texture Features and Machine Learning-Based Classifiers

机译:一种使用混合纹理特征和基于机器学习的自动化植物叶识别的混合方法

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摘要

Automated plant recognition performs a significant role in various applications used by environmental experts, chemists, and botany experts. Humans can recognize plants manually, but it is a prolonged and low-efficiency process. This paper introduces an automated system for recognizing plant species based on leaf images. A hybrid texture and colour-based feature extraction method was applied on digital leaf images to produce robust feature, and a further classification model was developed. A combination of machine learning methods, such as SVM (support vector machine), KNN (k-nearest neighbours), and ANN (artificial neural network), was applied on dataset for plant classification. This dataset contains 32 types of leaves. The outcomes of this work proved that success rate of plant recognition can be enhanced up to 94% with ANN classifier when both shape and colour features are utilized. Automatic recognition of plants is useful for medicine, foodstuff, and reduction of chemical wastage during crop spraying. It is also useful for identification and preservation of species.
机译:自动化工厂识别在环境专家,化学家和植物学专家使用的各种应用中表现了重要作用。人类可以手动识别植物,但这是一种长期和低效的过程。本文介绍了一种基于叶片图像识别植物物种的自动化系统。在数字叶片图像上应用混合纹理和基于颜色的特征提取方法以产生鲁棒特征,并且开发了另一个分类模型。在数据集上应用了机器学习方法的组合,例如SVM(支持向量机),KNN(K-CORMENT NECHINGER)和ANN(人工神经网络)进行工厂分类。此数据集包含32种叶子。这项工作的结果证明,在使用两种形状和颜色特征时,可以提高植物识别的成功率高达94%的ANN分类。自动识别植物可用于医药,食品和作物喷涂期间的化学废物。它对物种的鉴定和保存也是有用的。

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