Application of secure semi-supervised fuzzy clustering in object detection from remote sensing images

Quang Nam Pham, Long Giang Nguyen, Hoang Son Le, Manh Tuan Tran
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Abstract

In recent years, landslides are taking place very seriously, and tend to increase in both scope and scale, threatening people's lives and properties. Therefore, timely detection of landslide areas is extremely important to minimize damage. There are many ways to detect landslide areas, in which the use of satellite images is also an option worthy of attention. When performing satellite image data collection, there are many outliers, such as weather, clouds, etc. that can reduce image quality. With low quality images, when executing the clustering algorithm, the best clustering performance will not be obtained. In addition, the fuzzy parameter is also an important parameter affecting the results of the clustering process. In this paper will introduce an algorithm, which can improve the results of data partitioning with reliability and multiple fuzzifier. This algorithm is named TSSFC. The introduced method includes three steps namely as “labeled data with FCM”, “Data transformation”, and “Semi supervised fuzzy clustering with multiple point fuzzifiers”. The introduced TSSFC method will be used for landslide detection. The obtained results are quite satisfactory when compared with another clustering algorithm, CS3FCM (Confidence-weighted Safe Semi-Supervised Clustering).
安全半监督模糊聚类在遥感图像目标检测中的应用
近年来,山体滑坡的发生十分严重,而且滑坡的范围和规模都有增加的趋势,严重威胁着人民群众的生命财产安全。因此,及时发现滑坡区域对减少危害至关重要。探测滑坡地区的方法有很多,其中利用卫星图像也是值得注意的一种选择。在进行卫星图像数据采集时,存在许多异常值,如天气、云等,会降低图像质量。对于低质量的图像,在执行聚类算法时,无法获得最佳的聚类性能。此外,模糊参数也是影响聚类结果的重要参数。本文将介绍一种通过可靠性和多模糊化来改善数据分区结果的算法。该算法被命名为TSSFC。该方法包括“FCM标记数据”、“数据变换”和“多点模糊化半监督模糊聚类”三个步骤。所介绍的TSSFC方法将用于滑坡探测。与另一种聚类算法CS3FCM(置信度加权安全半监督聚类)进行了比较,得到了令人满意的结果。
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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