Classification of Leaf Disease Using Global and Local Features

Prashengit Dhar, Md. Shohelur Rahman, Zainal Abedin
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引用次数: 4

Abstract

Leaf disease of plants causes great loss in productivity of crops. So proper take care of plants is mandatory. Plants can be affected by various diseases. So Early diagnosis of leaf disease is a good practice. Computer vision-based classification of leaf disease can be a great way in diagnosing diseases early. Early detection of diseases can lead to better treatment. Vision based technology can identify disease quickly. Though deep learning is trending and using vastly for recognition task, but it needs very large dataset and also consumes much time. This paper introduced a method to classify leaf diseases using Gist and LBP (Local Binary Pattern) feature. These manual feature extraction process need less time. Combination of gist and LBP features shows significant result in classification of leaf diseases. Gist is used as global feature and LBP as local feature. Gist can describe an image very well as a scene. LBP is robust to illumination changes and occlusions and computationally simple. Various diseases of different plants are considered in this study. Gist and LBP features from images are extracted separately. Images are pre-processed before feature extraction. Then both feature matrix is combined using concatenation method. Training and testing is done on different plants separately. Different machine learning model is applied on the feature vector. Result from different machine learning algorithms is also compared. SVM performs better in classifying plant's leaf dataset.
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利用全局和局部特征对叶片病害进行分类
植物叶片病害对作物的生产力造成很大损失。因此,适当照顾植物是必须的。植物会受到各种疾病的影响。因此,早期诊断叶片病是一个很好的做法。基于计算机视觉的叶片疾病分类是早期诊断疾病的一种很好的方法。疾病的早期发现可以带来更好的治疗。基于视觉的技术可以快速识别疾病。虽然深度学习在识别任务中得到了广泛的应用,但它需要非常大的数据集,并且耗费大量的时间。本文介绍了一种利用Gist和LBP (Local Binary Pattern)特征对叶片病害进行分类的方法。这些人工特征提取过程需要较少的时间。gist和LBP特征的结合在叶病分类上有显著的效果。Gist作为全局特征,LBP作为局部特征。Gist可以很好地描述图像和场景。LBP对光照变化和遮挡具有鲁棒性,计算简单。本研究考虑了不同植物的各种病害。分别提取图像中的Gist和LBP特征。在提取特征之前,对图像进行预处理。然后用串联的方法将两个特征矩阵组合起来。培训和测试分别在不同的工厂进行。在特征向量上应用了不同的机器学习模型。比较了不同机器学习算法的结果。支持向量机对植物叶片数据集的分类效果较好。
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