不同无监督阈值选择方法在高光谱变化检测中的灵敏度分析

Mahdi Hasanlau, S. T. Seydi
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引用次数: 7

摘要

研究了不同的自动二值阈值选择方法在高光谱变化检测中的性能。为此,对10种最新最常用的二值阈值选择算法进行了实现和评价。为了对这些方法进行评价,首先将基于子空间的高光谱变化检测方法应用于多时相高光谱数据集。在第二部分中,通过上述阈值化方法将灰度变化图转换为二值变化图。本研究利用真实高光谱数据集对阈值选择方法的相关性能进行了评价。结果表明,与其他方法相比,主动轮廓法具有较高的效率,总体精度超过93.53%,kappa系数为0.851。
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Sensitivity Analysis on Performance of Different Unsupervised Threshold Selection Methods in Hyperspectral Change Detection
This paper investigated the performance of different automatic binary threshold selection methods on hyperspectral change detection. For this purpose, 10 recent and most common algorithm for binary threshold selection implemented namely and evaluated. To evaluate these methods first, the sub-space based hyperspectral change detection method applied on the multi-temporal hyperspectral dataset. In the second part, the gray level change map converts to binary change map by mentioned thresholding methods. In this work, real-world hyperspectral dataset utilized to evaluate the related performance of threshold selection methods. The results show that Active-Contour method has high efficiency in comparison to other methods with overall accuracy more than 93.53% and a kappa coefficient of 0.851.
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