Applied Sciences (May 2021)

Fuzzy Graph Learning Regularized Sparse Filtering for Visual Domain Adaptation

  • Lingtong Min,
  • Deyun Zhou,
  • Xiaoyang Li,
  • Qinyi Lv,
  • Yuanjie Zhi

DOI
https://doi.org/10.3390/app11104503
Journal volume & issue
Vol. 11, no. 10
p. 4503

Abstract

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Distribution mismatch can be easily found in multi-sensor systems, which may be caused by different shoot angles, weather conditions and so on. Domain adaptation aims to build robust classifiers using the knowledge from a well-labeled source domain, while applied on a related but different target domain. Pseudo labeling is a prevalent technique for class-wise distribution alignment. Therefore, numerous efforts have been spent on alleviating the issue of mislabeling. In this paper, unlike existing selective hard labeling works, we propose a fuzzy labeling based graph learning framework for matching conditional distribution. Specifically, we construct the cross-domain affinity graph by considering the fuzzy label matrix of target samples. In order to solve the problem of representation shrinkage, the paradigm of sparse filtering is introduced. Finally, a unified optimization method based on gradient descent is proposed. Extensive experiments show that our method achieves comparable or superior performance when compared to state-of-the-art works.

Keywords