首页> 外文会议>SPIE Conference on Algorithms and Technologies for Multispectral, Hyperspectral, and Ultraspectral Imagery >UNDERSTANDING THE IMPACT OF SPATIAL RESOLUTION IN0UNMIXING OF HYPERSPECTRAL IMAGES
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UNDERSTANDING THE IMPACT OF SPATIAL RESOLUTION IN0UNMIXING OF HYPERSPECTRAL IMAGES

机译:了解空间分辨率的影响In0unixing的高光谱图像

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Unmixing is an ill-posed inverse problem and as such the solution computed with different unmixing algorithms dependson the underlying assumptions for the inverse problem. Ideally one would expect similar solutions for unmixing ahyperspectral image of different spatial resolutions of the same scene. In this paper, we study the results of unmixingdifferent images of the same area at different spatial resolution using different unmixing algorithms. We also comparethe estimation of the number of endmembers using the rank of a scaled correlation matrix against the positive rankestimated with the fitting error of a positive matrix factorization. The results show that algorithms that assume the purepixels in the image given consistent results in the same scale and are limited to the number of endmembers determinedfrom the rank of the scaled correlation matrix while algorithms that do not assume pure pixels are consistent acrossspatial scales and the number of endmembers is better estimated by the positive rank. One and four meter data collectedwith the AISA sensor over southwestern Puerto Rico is used for the study.
机译:突发是一个不良反问题,并且通过不同的解混算法计算的解决方案依赖于逆问题的底层假设。理想情况下,人们会期望类似的解决方案对同一场景的不同空间分辨率的解密型号的Ahyperspectral图像。在本文中,我们使用不同的解密算法在不同空间分辨率下研究同一区域的突出区域的结果。我们还使用缩放相关矩阵的级别对终点的依次估计,与正矩阵分解的拟合误差的拟合误差相比呈阳性速率估计。结果表明,在相同的刻度上给出的图像中假设纯Pixels的算法并限于终端中的终端中的数量,而不采用纯像素的算法是跨天空尺度的一致性和数量因肯定级别更好地估计了终点。 CONSA传感器在西南部港波多黎各的AISA传感器采集的一个和四个仪表数据用于该研究。

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