Improving the quality of extracted endmembers

Q. Du, Liangpei Zhang, N. Raksuntorn
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引用次数: 7

Abstract

Endmember extraction for spectral mixture analysis is a necessary step when endmember information is unknown. If endmembers are assumed to be pure pixels present in an image scene, endmember extraction is to search the most distinctive pixels. Popular algorithms using the criteria of simplex volume maximization (e.g., N-FINDR) and spectral signature similarity (e.g., Vertex Component Analysis) belong to this type. If pure pixel assumption is not imposed, endmember extraction usually is conducted by searching the signatures that can circumscribe the data cloud with the minimum volume. Both types of algorithms are affected by anomalous pixels since such outliers are very different from other pixels and act as interferers during simplex volume evaluation. In this paper, we propose a new approach that separates the endmember searching in normal and anomalous pixels. Real data experiments show that it can improve the quality of extracted endmembers.
提高提取端元的质量
光谱混合分析中端元提取是端元信息未知的必要步骤。如果假设端元是图像场景中存在的纯像素,则端元提取是搜索最具特征的像素。使用单纯形体积最大化标准(例如N-FINDR)和光谱特征相似性(例如顶点成分分析)的流行算法属于这类。在不施加纯像素假设的情况下,端元提取通常通过搜索能够以最小体积限定数据云的特征来进行。这两种算法都受到异常像素的影响,因为这些异常像素与其他像素非常不同,并且在单纯形体积评估期间充当干扰。本文提出了一种分离正常像素和异常像素端元搜索的新方法。实际数据实验表明,该方法可以提高端元提取的质量。
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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