Robust canonical correlation analysis based on L1-norm minimization for feature learning and image recognition

JOURNAL OF ELECTRONIC IMAGING(2020)

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摘要
Canonical correlation analysis (CCA) is a popular method that has been extensively used in feature learning. In nature, the objective function of CCA is equivalent to minimizing the distance of the paired data, and L-2-norm is used as the distance metric. We know that L-2-norm-based objective function will emphasize the large distance pairs and de-emphasizes the small distance pairs. To alleviate the aforementioned problems of CCA, we propose an approach named CCA based on L-1-norm minimization (CCA-L1) for feature learning. To optimize the objective function, we develop an algorithm that can get a global optimized value. To maintain the distribution and the nonlinear characteristic respectively, we proposed two extensions of CCA-L1. Further, all of the aforementioned three proposed algorithms are extended to deal with multifeature data. The experimental results on an artificial dataset, real-world crop leaf disease dataset, ORL face dataset, and PIE face dataset show that our methods outperform traditional CCA and its variants. (C) 2020 SPIE and IS&T
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关键词
canonical correlation analysis,L-1-norm minimization,multiview feature learning
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