I. Introduction
Over the last decade, remote sensing image classification algorithms have been improved with the development of the pattern recognition methods. In recent research of the remote sensing image classification, the kernel method is successfully used for the nonlinear classification as discussed in the former presentation of [1] to [5]. The Spectral Angle Mapper (SAM) algorithm has been widely utilized for remote sensing image [6]. Pixel with minimum or zero spectral angles in comparison to the reference spectrum is assigned to the class defined by reference vector. However, when threshold for classification based on spectral angle is modified, the probability of incorrect object detection may increases. The SAM algorithm is a linear model which does not work well when these classes are overlapped with each other as first described in [7]. In this paper, we discussed the capability of the Kernel Spectral Angle Mapper (KSAM) algorithm in dealing with the nonlinear classification problem of remote sensing image. The KSAM algorithm is achieved by introducing kernel method into the standard SAM algorithm. Thus, the KSAM algorithm is generally the nonlinear extension of the standard SAM algorithm. With the kernel method presented in [8], the input data is mapped implicitly into a high-dimensional feature space in which the nonlinear pattern now appears linear.