Image recovery and clustering approach based on weighted Manhattan non-negative matrix factorization
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O235

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    Abstract:

    Traditional robust non-negative matrix factorization methods cannot achieve robust low-dimensional features while the data is heavily contaminated by Salt and Pepper noise.To address this issue,this paper proposes a more robust weighted Manhattan non-negative matrix factorization to recover the contaminated data and obtain robust part-based representations.Our proposed model can be formulated as a non-convex and non-smooth problem,which can be solved by the accelerated gradient method and the rank-one-residual-iteration method.Experiments on the ORL face dataset contaminated by Salt and Pepper noise demonstrate that our proposed algorithm is more effective and robust in image recovery and feature representation learning.

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TAO Yingyin, YANG Yi, DAI Xiangguang, SU Xiaojie. Image recovery and clustering approach based on weighted Manhattan non-negative matrix factorization[J]. Journal of Nanjing University of Information Science & Technology,2020,12(3):347-352

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  • Received:February 26,2020
  • Online: July 07,2020
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