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A Method of Minimum Volume Simplex Analysis Constrained Unmixing for Hyperspectral Image

机译:高光谱图像最小体积单纯形分析约束分解方法

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The signal recorded by a low resolution hyperspectral remote sensor from a given pixel, letting alone the effects of the complex terrain, is a mixture of substances. To improve the accuracy of classification and sub-pixel object detection, hyperspectral unmixing(HU) is a frontier-line in remote sensing area. Unmixing algorithm based on geometric has become popular since the hyperspectral image possesses abundant spectral information and the mixed model is easy to understand. However, most of the algorithms are based on pure pixel assumption, and since the non-linear mixed model is complex, it is hard to obtain the optimal endmembers especially under a highly mixed spectral data. To provide a simple but accurate method, we propose a minimum volume simplex analysis constrained (MVSAC) unmixing algorithm. The proposed approach combines the algebraic constraints that are inherent to the convex minimum volume with abundance soft constraint. While considering abundance fraction, we can obtain the pure endmember set and abundance fraction correspondingly, and the final unmixing result is closer to reality and has better accuracy. We illustrate the performance of the proposed algorithm in unmixing simulated data and real hyperspectral data, and the result indicates that the proposed method can obtain the distinct signatures correctly without redundant endmember and yields much better performance than the pure pixel based algorithm.
机译:低分辨率高光谱遥感器从给定像素记录的信号是物质的混合物,更不用说复杂地形的影响了。为了提高分类和亚像素目标检测的准确性,高光谱分解(HU)是遥感领域的前沿。由于高光谱图像拥有丰富的光谱信息,并且混合模型易于理解,因此基于几何的混合算法已变得越来越流行。但是,大多数算法都是基于纯像素假设的,并且由于非线性混合模型很复杂,因此很难获得最佳端成员,尤其是在高度混合的光谱数据下。为了提供一种简单但准确的方法,我们提出了最小体积单纯形分析约束(MVSAC)分解算法。所提出的方法将凸最小体积所固有的代数约束与丰度软约束相结合。在考虑丰度分数的同时,我们可以得到纯净的端基集和丰度分数,最终的分解结果更接近实际,具有更好的准确性。我们说明了该算法在模拟数据和真实高光谱数据混合中的性能,结果表明该方法可以正确地获得独特的签名,而无需多余的端元,并且比基于纯像素的算法产生了更好的性能。

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