Title :
Multiple feature selection and fusion based on generalized N-dimensional independent component analysis
Author :
Danni Ai ; Guifang Duan ; Xianhua Han ; Yen-Wei Chen
Author_Institution :
Grad. Sch. of Sci. & Eng., Ritsumeikan Univ., Kusatsu, Japan
Abstract :
This paper proposes a framework of tensor-based ICA method for N-dimensional data analysis, which is called generalized N-dimensional ICA (GND-ICA). The proposed GND-ICA is based on multilinear algebra that treats N-dimensional data as a tensor without any unfolding preprocess. As an application, the GND-ICA can be used for multiple feature fusion and representation for color image classification. Multiple features extracted from a given image are constructed as a tensor. The effective components for each feature can be selected simultaneously and combined by the GND-ICA. This can obtain the improved classification results in comparison with various conventional linear and multilinear subspace learning methods.
Keywords :
data analysis; feature extraction; image colour analysis; image fusion; image reconstruction; image representation; independent component analysis; learning (artificial intelligence); tensors; GND-ICA; N-dimensional data analysis; color image classification representation; conventional linear subspace learning methods; generalized N-dimensional ICA; generalized n-dimensional independent component analysis-based fusion; image construction; multilinear algebra; multilinear subspace learning methods; multiple feature fusion; multiple feature selection; tensor-based ICA method; Algorithm design and analysis; Color; Independent component analysis; Learning systems; Optimized production technology; Principal component analysis; Tensile stress;
Conference_Titel :
Pattern Recognition (ICPR), 2012 21st International Conference on
Print_ISBN :
978-1-4673-2216-4