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Hyperspectral Imagery Further Unmixing Based On Analysis Of Variance

机译:基于对方差分析的高光谱图像进一步解混

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Hyperspectral imagery unmixing model based on sparse regression uses the existing endmembers' library as priori information. Usually, the existing endmembers' library contains almost all kinds of ground objects. Even though sparse regression-based imagery unmixing method added sparse constraint to the original unmxing model, the solution is still far away as sparse as real scenario. Therefore, we propose a hyperspectral imagery further unmixing method based on the analysis of variance. In this method, fractional abundances unmixed by sparse regression-based approach are analyzed with t-test. If the fractional abundances are not significant enough, the corresponding endmembers will be removed and a new optimal endmember subset will be extracted. Then the unmixing process was redid with acquired optimal endmember subset and the final result will be acquired. The experimental results indicate that the proposed method could acquire sparser solution, which is closer to the real sparsity of abundance, both in simulate scenario and real scenario. Furthermore, the precision of the endmember recognition of proposed method is more than 97%, which is a pretty good result.
机译:基于稀疏回归的高光谱图像解密模型使用现有的endmembers的库作为先验信息。通常,现有的endmembers的库包含几乎各种地面对象。即使基于稀疏的回归的图像,解密方法为原始的UPMxing模型添加了稀疏约束,即使是原始悬念模型的稀疏约束,也仍然远离稀疏作为实际方案。因此,我们提出了一种基于方差分析的超光图像进一步的解混方法。在该方法中,通过T检验分析了通过稀疏回归的方法解密的分数丰富。如果分数丰富不够略高,则将删除相应的终端用终端,并且将提取新的最佳终端组织子集。然后,通过获取的最佳终端将子集和最终结果将获得解密过程。实验结果表明,该方法可以获得稀疏解决方案,该解决方案更接近丰富的真实稀疏性,都在模拟场景和实际方案中。此外,终结方法的Endmember识别的精确度超过97%,这是一个非常好的结果。

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