Title :
A unified subspace classification framework developed for diagnostic system using microwave signal
Author :
Yinan Yu ; McKelvey, Tomas
Author_Institution :
Chalmers Univ. of Technol., Gothenburg, Sweden
Abstract :
Subspace learning is widely used in many signal processing and statistical learning problems where the signal is assumably generated from a low dimensional space. In this paper, we present a unified classifier including several concepts from different subspace techniques, such as PCA, LRC, LDA, GLRT, etc. The objective is to project the original signal (usually of high dimension) into a smaller subspace with 1) within-class data structure preserved and 2) between-class-distance enhanced. A novel classification technique called Maximum Angle Subspace Classifier (MASC) is presented to achieve these purposes. To compensate for the computational complexity and non-convexity of MASC, an approximation is proposed as a trade-off between the classification performance and the computational issue. The approaches are applied to the problem of classifying high dimensional frequency measurements from a microwave based diagnostic system and results are compared with existing methods.
Keywords :
principal component analysis; signal classification; GLRT; LDA; LRC; MASC; PCA; high dimensional frequency measurement; low dimensional space; maximum angle subspace classifier; microwave based diagnostic system; microwave signal; signal processing; statistical learning problem; subspace learning; unified subspace classification; Antenna measurements; Kernel; Manifolds; Principal component analysis; Support vector machines; Testing; Vectors; Supervised subspace learning; class separability; classification; high dimensional data;
Conference_Titel :
Signal Processing Conference (EUSIPCO), 2013 Proceedings of the 21st European
Conference_Location :
Marrakech