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学术讲座通知:A Fast Hyperplane-based Minimum-Volume Enclosing Simplex Algorithm for Blind Hyperspectral Unmixing

作者:阅读次数:日期:2016年07月15日

学术讲座通知

讲座题目:A Fast Hyperplane-based Minimum-Volume Enclosing Simplex Algorithm for Blind Hyperspectral Unmixing

主讲人:Prof.Chong-Yung Chi (National Tsing Hua University)

主持人:尹长川教授

时间:2016729(周五)上午10:00-12:00

地点:教三楼811

内容摘要:Hyperspectral unmixing (HU) is a crucial signalprocessing procedure to identify the underlying materials (or endmembers)and their corresponding proportions (or abundances)from an observed hyperspectral scene. A well-known blind HUcriterion, advocated by Craig during the early 1990s, considersthe vertices of the minimum-volume enclosing simplex of the datacloud as good endmember estimates, and it has been empiricallyand theoretically found effective even in the scenario of no purepixels. However, such kinds of algorithms may suffer from heavysimplex volume computations in numerical optimization, etc. Inthis talk, without involving any simplex volume computations,by exploiting a convex geometry fact that a simplest simplex of N vertices can be defined by N associated hyperplanes, a fast blind HU algorithm that was recently published is introduced, for which each of the N hyperplanesassociated with the Craig’s simplex of N vertices is constructedfrom N-1 affinely independent data pixels, together with anendmemberidentifiability analysis for its performance support.Without resorting to numerical optimization, the devised algorithmsearches for the N(N-1) active data pixels via simplelinear algebraic computations, accounting for its high computationalefficiency. Monte Carlo simulations and real data experiments areprovided to demonstrate its consistent superior efficacy over some benchmarkCraig-criterion-based algorithms in both computationalefficiency and estimation accuracy.

 

 

此讲座为前沿课题讲座,欢迎全校师生踊跃参加。

 

 

校学术委员会

信通院

2016年7月15日

 

 

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