梯度场分布和灰度共生矩阵技术在杂草自动分类中的应用

A. J. Ishak, M. Mustafa, A. Hussain
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引用次数: 5

摘要

目前,在人工林的管理中,特别是在化学除草剂的防治中,需要采取更加绿色的管理方式。为了做到这一点,选择性贴片喷洒方法是必要的,因为它可以帮助减少除草剂的使用量。因此,一个能够区分不同杂草的智能系统是可取的。在这项工作中,我们采用了一种图像处理的方法,根据杂草的类别,即宽或窄,对其进行检测和分类,从而实现选择性斑块喷洒策略。本文描述了所涉及的过程,重点是结合使用梯度场分布(GFD)和灰度共生矩阵(GLCM)算法来提取新的特征向量集。结果表明,结合GFD和GLCM技术得到的新特征向量具有独特的特征,能够很好地区分两种杂草。因此,当对包含两种杂草的400个杂草图像样本进行测试时,完美的分类是可能的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gradient Field Distribution and Grey Level Co-occurrence Matrix techniques for automatic weed classification
Nowadays it is a requirement to adopt a greener approach in the management of plantation especially when dealing with chemical herbicide to control weed infestation. To do so, selective patch spraying method is a necessity since it can help in minimizing the volume of usage of the herbicide. As such, an intelligent system that can differentiate the different weed is desirable. In this work, we have adopted an image processing approach to detect and classify weed according to its class, namely as either broad or narrow, such that the selective patch spraying strategy can be implemented. This paper describes the procedures involved and its main focus is on the combined use of Gradient Field Distribution (GFD) and Grey Level Co-occurrence Matrix (GLCM) algorithms to extract new feature vector set. The results obtained suggest that the new feature vectors, derived from the GFD and GLCM techniques combined, has unique characteristics that enable perfect discrimination between the two types of weed. Thus, perfect classification was possible when tested with 400 samples of weed images comprising of both types of weed.
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