高光谱成像
模式识别(心理学)
降维
稀疏逼近
人工智能
计算机科学
稀疏矩阵
维数之咒
系数矩阵
直方图
矩阵分解
特征选择
奇异值分解
数学
图像(数学)
物理
特征向量
量子力学
高斯分布
作者
Shuangjiang Li,Hairong Qi
标识
DOI:10.1109/icip.2011.6116223
摘要
Hyperspectral images consist of large number of spectral bands but many of which contain redundant information. Therefore, band selection has been a common practice to reduce the dimensionality of the data space for cutting down the computational cost and alleviating from the Hughes phenomenon. This paper presents a new technique for band selection where a sparse representation of the hyperspectral image data is pursued through an existing algorithm, K-SVD, that decomposes the image data into the multiplication of an overcomplete dictionary (or signature matrix) and the coefficient matrix. The coefficient matrix, that possesses the sparsity property, reveals how importantly each band contributes in forming the hyperspectral data. By calculating the histogram of the coefficient matrix, we select the top K bands that appear more frequently than others to serve the need for dimensionality reduction and at the same time preserving the physical meaning of the selected bands. We refer to the proposed band selection algorithm based on sparse representation as SpaBS. Through experimental evaluation, we first use synthetic data to validate the sparsity property of the coefficient matrix. We then apply SpaBS on real hyperspectral data and use classification accuracy as a metric to evaluate its performance. Compared to other unsupervised band selection algorithms like PCA and ICA, SpaBS presents higher classification accuracy with a stable performance.
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