In this article the author reviews Jos\'e Bioucas-Dias' key contributions to hyperspectral unmixing (HU), in memory of him as an influential scholar and for his many beautiful ideas introduced to the hyperspectral community. Our story will start with vertex component analysis (VCA) -- one of the most celebrated HU algorithms, with more than 2,000 Google Scholar citations. VCA was pioneering, invented at a time when HU research just began to emerge, and it shows sharp insights on a then less-understood subject. Then we will turn to SISAL, another widely-used algorithm. SISAL is not only a highly successful algorithm, it is also a demonstration of its inventor's ingenuity on applied optimization and on smart formulation for practical noisy cases. Our tour will end with dependent component analysis (DECA), perhaps a less well-known contribution. DECA adopts a statistical inference framework, and the author's latest research indicates that such framework has great potential for further development, e.g., there are hidden connections between SISAL and DECA. The development of DECA shows foresight years ahead, in that regard.
翻译:在文章中,作者回顾了Jos\'e Bioucos-Dias对超光谱混杂(HU)的主要贡献,以纪念他作为有影响力的学者,以及他向超光谱社区介绍的许多漂亮想法。我们的故事将首先从头顶部分分析开始,这是最著名的HU算法之一,有2,000多个谷歌学者引用。VCA是先发制人,是在HU刚开始研究时发明的,它展示了当时不太为人知的一个主题的深刻洞察力。然后我们将转向SISAL,另一个广泛使用的算法。SISAL不仅是一种非常成功的算法,它也展示了发明者对应用优化和智能配制的智慧,以实际吵闹事案例。我们的访问结束时,将进行依赖部分分析(DECA),也许不那么广为人知的贡献。 DECA采用统计推理框架,而作者的最新研究表明,这种框架对进一步发展有很大潜力,例如SISAL和DECA之间有隐藏的连接。DECA的发展在这方面展示了展望的年份。