Title :
Linear Spectral Mixture Analysis via Multiple-Kernel Learning for Hyperspectral Image Classification
Author :
Keng-Hao Liu ; Yen-Yu Lin ; Chu-Song Chen
Author_Institution :
Dept. of Mech. & Electromech. Eng., Nat. Sun Yat-sen Univ., Kaohsiung, Taiwan
Abstract :
Linear spectral mixture analysis (LSMA) has received wide interests for spectral unmixing in the remote sensing community. This paper introduces a framework called multiplekernel learning-based spectral mixture analysis (MKL-SMA) that integrates a newly proposed MKL method into the training process of LSMA. MKL-SMA allows us to adopt a set of nonlinear basis kernels to better characterize the data so that it can enrich the discriminant capability in classification. Because a single kernel is often insufficient to well present all the data characteristics, MKL-SMA has the advantage of providing a broader range of representation flexibilities; it also eases the kernel selection process because the kernel combination parameters can be learned automatically. Unlike most MKL approaches where complex nonlinear optimization problems are involved in their training process, we derived a closed-form solution of the kernel combination parameters in MKL-SMA. Our method is thus efficient for training and easy to implement. The usefulness of MKL-SMA is demonstrated by conducting real hyperspectral image experiments for performance evaluation. Promising results manifest the effectiveness of the proposed MKL-SMA.
Keywords :
hyperspectral imaging; image classification; image processing; remote sensing; LSMA; LSMA training process; MKL approach; MKL method; MKL-SMA effectiveness; MKL-SMA usefulness; complex nonlinear optimization problems; data characteristic; discriminant classification capability; hyperspectral image classification; kernel combination parameter closed-form solution; kernel selection process; linear spectral mixture analysis; multiple-kernel learning-based spectral mixture analysis; nonlinear basis kernel set; performance evaluation; real hyperspectral image experiment; remote sensing community; representation flexibility broader range; single kernel; spectral unmixing; training process; Hyperspectral imaging; Kernel; Optimization; Training; Vectors; Linear spectral unmixing analysis (LSMA); multiple-kernel learning (MKL); spectral unmixing (SU);
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
DOI :
10.1109/TGRS.2014.2358620