Markov random field classification technique for plant leaf disease detection

A. Rao, S. B. Kulkarni
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Abstract

In recent era of technology, computer vision technique has grown attraction of the researchers. This technique helps to identify and classify the objects according to the application requirement. These techniques are widely used for plant leaf detection and helping to develop an automated process for plant leaf disease detection. A new approach is developed in this work for plant leaf disease detection using Markov random classification technique. MRF-based problem is formulated for disease detection. In the next stage, the general stages of computer vision classification model i.e., pre-processing and feature extraction is applied. For pre-processing, noise removal and image enhancement models are applied and feature extraction is combination of statistical features. Neighborhood pixel modeling and MRF classification models are applied to obtain the classification of input data. Performance of three classification models is compared. Study shows that proposed approach gives robust performance for plant leaf disease detection and classification.
植物叶片病害检测的马尔可夫随机场分类技术
近年来,计算机视觉技术越来越受到研究人员的关注。该技术有助于根据应用程序需求识别和分类对象。这些技术广泛应用于植物叶片检测,有助于开发植物叶片病害检测的自动化过程。本文提出了一种利用马尔可夫随机分类技术进行植物叶片病害检测的新方法。基于磁共振成像的问题是为疾病检测而制定的。在接下来的阶段,应用计算机视觉分类模型的一般阶段,即预处理和特征提取。预处理采用去噪和图像增强模型,特征提取结合统计特征。采用邻域像素建模和MRF分类模型对输入数据进行分类。比较了三种分类模型的性能。研究表明,该方法对植物叶片病害检测和分类具有较强的鲁棒性。
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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