TY - JOUR
T1 - A New Hyperspectral Discrimination Measure for Spectral Similarity
AU - Du, Yingzi
AU - Chang, Chein I.
AU - Ren, Hsuan
AU - D'Amico, Francis
AU - Jensen, James O.
PY - 2003
Y1 - 2003
N2 - Spectral angle mapper (SAM) has been widely used as a spectral similarity measure for multispectral and hyperspectral image analysis. It has been shown to be equivalent to Euclidean distance when the spectral angle is relatively small. Most recently, a stochastic measure, called spectral information divergence (SID) has been introduced to model the spectrum of a hyperspectral image pixel as a probability distribution so that spectral variations can be captured more effectively in a stochastic manner. This paper develops a new hyperspectral spectral discrimantion measure, which is a mixture of SID and SAM. More specifically, let x i and x j denote two hyperspectral image pixel vectors with their corresponding spectra specified by s i and s j. SAM is the spectral angle of x i and x j and is defined by (SAM(s i,s j)). Similarly, SID measures the information divergence between x i and x j and is defined by (SID(s i,s j)). The new measure, referred to as (SID,SAM)-mixed measure has two variations defined by SID(s i,s j)×tan(SAM(s i,s j)) and SID(s i,s j)×sin(SAM(s i,s j)) where tan(SAM(s i,s j)) and sin(SAM(s i,s j)) are the tangent and the sine of the angle between vectors x and y. The advantage of the developed (SID,SAM)-mixed measure combines both strengths of SID and SAM in spectral discriminability. In order to demonstrate its utility, a comparative study is conducted among the new measure, SID and SAM where the discriminatory power of the (SID,SAM)-mixed measure is significantly improved over SID and SAM.
AB - Spectral angle mapper (SAM) has been widely used as a spectral similarity measure for multispectral and hyperspectral image analysis. It has been shown to be equivalent to Euclidean distance when the spectral angle is relatively small. Most recently, a stochastic measure, called spectral information divergence (SID) has been introduced to model the spectrum of a hyperspectral image pixel as a probability distribution so that spectral variations can be captured more effectively in a stochastic manner. This paper develops a new hyperspectral spectral discrimantion measure, which is a mixture of SID and SAM. More specifically, let x i and x j denote two hyperspectral image pixel vectors with their corresponding spectra specified by s i and s j. SAM is the spectral angle of x i and x j and is defined by (SAM(s i,s j)). Similarly, SID measures the information divergence between x i and x j and is defined by (SID(s i,s j)). The new measure, referred to as (SID,SAM)-mixed measure has two variations defined by SID(s i,s j)×tan(SAM(s i,s j)) and SID(s i,s j)×sin(SAM(s i,s j)) where tan(SAM(s i,s j)) and sin(SAM(s i,s j)) are the tangent and the sine of the angle between vectors x and y. The advantage of the developed (SID,SAM)-mixed measure combines both strengths of SID and SAM in spectral discriminability. In order to demonstrate its utility, a comparative study is conducted among the new measure, SID and SAM where the discriminatory power of the (SID,SAM)-mixed measure is significantly improved over SID and SAM.
UR - http://www.scopus.com/inward/record.url?scp=1642433359&partnerID=8YFLogxK
U2 - 10.1117/12.487044
DO - 10.1117/12.487044
M3 - 會議論文
AN - SCOPUS:1642433359
SN - 0277-786X
VL - 5093
SP - 430
EP - 439
JO - Proceedings of SPIE - The International Society for Optical Engineering
JF - Proceedings of SPIE - The International Society for Optical Engineering
T2 - Algorithms and Technologies for Multispectral, Hyperspectral, and Ultraspectral Imagery IX
Y2 - 21 April 2003 through 24 April 2003
ER -