An improved mixture robust probabilistic linear discriminant analyzer for fault classification.
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Lei Xie | Hongye Su | Yi Liu | Xun Lang | Shihua Luo | Jiusun Zeng | H. Su | Lei Xie | Jiu-sun Zeng | Shihua Luo | Xun Lang | Yi Liu
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