A Method of Selecting Hyperspectral Characteristic Variables
A feature variable and hyperspectral technology, applied in the field of image processing, can solve problems such as large running time, large amount of calculation, and no good solution to many types of problems, and achieve the effect of reducing complexity and high accuracy
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[0025] The present invention will be further described below in conjunction with the accompanying drawings and specific embodiments.
[0026] For the convenience of expression, the following definitions are now made: Consider M pairs of training sets S={i ,Y i >},i∈[1,M];X i (∈R N ): i-th sample eigenvector (that is, reflectivity on each band (dimension), composed of reflectivity vector); R: real number set; R N : Nth power set of the real number set R; N: feature dimension; Y i :X i The class label of , for the second class problem, Y i ∈{-1,1}, for class k problems (k>2), suppose Y i ∈[1,k]. The purpose of using support vector machine classification:
[0027] Find a hyperplane (decision plane) that maximizes the distance between it and the nearest sample of the two classes. The decision plane is defined as f(X)=ω T X+b, where ω=[ω 1 , ω 2 ,...,ω i ,...,ω N ] T is the correlation coefficient vector, where ω i is the coefficient corresponding to the i-th dimensi...
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