A Rough Set Classifilcation Based Approach to Detect Hotspots in NOAA/AVHRR Images

R. S. Gautam, D. Singh, A. Mittal
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引用次数: 4

Abstract

India accounts for the greatest concentration of coal fires in world. Nearly half of the subsurface mine fires (hotspots) in Indian coalfields exist in Jharia (Jharkhand) region. Careful attention is required in this direction for mapping, monitoring and detecting these hotspots. Present paper utilizes the potential of operational satellite images to detect hotspots in Jharia region. Proposed algorithm consists of two steps: (1) marking potential hotspot pixels in NOAA/AVHRR image using different AVHRR channel statistics (i.e. average & variance), and (2) generating rules using the potential hotspots pixel information obtained in first step, in order to classify seen or unseen AVHRR images in hotspots and non-hotspots classes. Rough set theory is emerging as a new powerful tool for learning classification rules. In this paper, we propose a rough set based method to classify NOAA/A VHRR images of Jharia region in order to determine the spatial allocation of hotspots. Instead of applying all induced rules for classifying AVHRR images, only those generated rules take part in the classification process which meet the user specified criteria, thus simplifying the whole classification procedure. Proposed algorithm appears to detect hotspots successfully with throughout greater than 90% classification accuracy.
基于粗糙集分类的NOAA/AVHRR图像热点检测方法
印度是世界上煤火最集中的国家。印度煤田近一半的地下矿井火灾(热点)存在于Jharia (Jharkhand)地区。需要在这个方向上仔细注意绘制、监测和发现这些热点。本文利用实际卫星图像的潜力来探测贾里亚地区的热点。该算法包括两个步骤:(1)利用不同的AVHRR通道统计量(即平均值和方差)标记NOAA/AVHRR图像中的潜在热点像素;(2)利用第一步获得的潜在热点像素信息生成规则,将看到或未看到的AVHRR图像分为热点类和非热点类。粗糙集理论作为一种新的学习分类规则的有力工具正在兴起。本文提出了一种基于粗糙集的Jharia地区NOAA/ a VHRR图像分类方法,以确定热点的空间分布。在AVHRR图像分类中,不需要应用所有的诱导规则,只需要生成符合用户指定标准的规则参与分类过程,从而简化了整个分类过程。本文提出的算法能够成功地检测出热点,分类准确率超过90%。
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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