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Parameter Estimation For Blind lq Hyperspectral Unmixing Using Bayesian Optimization

机译:盲L Q 超光谱使用贝叶斯优化的参数估计

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Blind hyperspectral unmixing is the task of estimating both the pure material spectra (endmembers), and the abundances in hyperspectral images. The performance of hyperspectral unmixing methods is very often dependent on tuning parameters. Accurately estimating these parameters is computationally intensive and this can severely limit the complexity of the underlying model. In this paper, we propose using Bayesian optimization to estimate tuning parameters for blind hyperspectral unmixing. Using real data, we show that the proposed method can be successfully applied to estimate tuning parameters for hyperspectral unmixing. Also, we show that increasing the number of tuning parameters can improve the unmixing results.
机译:盲光学光谱解密是估计纯材料光谱(终点)和高光谱图像中的丰度的任务。高光谱解密方法的性能通常往往依赖于调谐参数。准确估计这些参数是计算密集的,这可能会严重限制底层模型的复杂性。在本文中,我们建议使用贝叶斯优化来估算盲光学光谱解密的调谐参数。使用真实数据,我们表明可以成功应用所提出的方法来估计高光谱解密的调整参数。此外,我们表明,提高调谐参数的数量可以提高解密结果。

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