Hyperspectral unmixing remains one of the most challenging tasks in the analysis of such data. Deep learning has been blooming in the field and proved to outperform other classic unmixing techniques, and can be effectively deployed onboard Earth observation satellites equipped with hyperspectral imagers. In this letter, we follow this research pathway and propose a multi-branch convolutional neural network that benefits from fusing spectral, spatial, and spectral-spatial features in the unmixing process. The results of our experiments, backed up with the ablation study, revealed that our techniques outperform others from the literature and lead to higher-quality fractional abundance estimation. Also, we investigated the influence of reducing the training sets on the capabilities of all algorithms and their robustness against noise, as capturing large and representative ground-truth sets is time-consuming and costly in practice, especially in emerging Earth observation scenarios.
翻译:超光谱解密仍然是分析此类数据最艰巨的任务之一。 深层学习已经在实地展开,并证明优于其他经典解密技术,可以有效地在配备超光谱成像仪的地球观测卫星上部署。 在这封信中,我们遵循这一研究路径,并提议建立一个多分层的进化神经网络,从混合过程中的光谱、空间和光谱空间特征的引信化中受益。我们的实验结果,加上融化研究,表明我们的技术优于文献中的其他技术,并导致更高质量的分数丰度估计。此外,我们还调查了降低所有算法能力及其抗噪声能力的培训组合的影响,因为捕捉大型和有代表性的地面图例在实际中耗时且成本高昂,特别是在新出现的地球观测假设中。