Knowledge Based Classifier and Pattern Recognition Technique for Satellite Image Analysis

N. Nimbarte, Aniket Nagpure, Badal Sanodiya, Harshal Sevatkar, S. Balamwar
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Abstract

Pattern Recognition is quickly becoming a popular topic of image processing. It is a branch of remote sensing, and it can be useful where it is difficult to visit and analyze geographical locations such as forestry or islands, and it can also be difficult to visit areas affected by natural disasters. To do this, a system to distinguish areas such as buildings, greenery, cultivated land, land, water, and so on must be devised. Previously, research on these themes had been conducted, but it was confined to one or two remote sensor items. This work introduces a method for identifying items such as buildings, greenery, water, and land. Because the knowledge basis for this recognition is based on analysis, it is also unbound to specific types of locations. This method is useful for determining the area under civilization as well as the percentage area of a given pattern. The Image classification technique uses supervised and unsupervised classification methods. The supervised classification uses a maximum likelihood classifier. The unsupervised classification uses the ISO Cluster classifier to classify images. ArcGIS PRO and ERDAS IMAGINE software are used for algorithm analysis.
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基于知识的卫星图像分类器和模式识别技术
模式识别正迅速成为图像处理领域的一个热门话题。它是遥感的一个分支,在难以访问和分析地理位置(如森林或岛屿)的地方,它可能是有用的,也可能难以访问受自然灾害影响的地区。要做到这一点,必须建立建筑、绿化、耕地、土地、水等区域的区分体系。以前,对这些主题进行了研究,但仅限于一两个遥感项目。这项工作介绍了一种识别建筑物、绿化、水和土地等项目的方法。由于这种识别的知识基础是基于分析的,因此它也不受特定类型位置的约束。这种方法对于确定文明下的面积以及给定模式的面积百分比是有用的。图像分类技术采用监督和无监督两种分类方法。监督分类使用最大似然分类器。无监督分类使用ISO聚类分类器对图像进行分类。采用ArcGIS PRO和ERDAS IMAGINE软件进行算法分析。
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