4.7 Article

Semi-supervised Deep Domain Adaptation via Coupled Neural Networks

Journal

IEEE TRANSACTIONS ON IMAGE PROCESSING
Volume 27, Issue 11, Pages 5214-5224

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIP.2018.2851067

Keywords

Domain adaptation; semi-supervised learning; deep neural networks

Funding

  1. NSF IIS Award [1651902]
  2. ONR Young Investigator Award [N00014-14-1-0484]
  3. U.S. Army Research Office Award [W911NF-17-1-0367]

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Domain adaptation is a promising technique when addressing limited or no labeled target data by borrowing well-labeled knowledge from the auxiliary source data. Recently, researchers have exploited multi-layer structures for discriminative feature learning to reduce the domain discrepancy. However, there are limited research efforts on simultaneously building a deep structure and a discriminative classifier over both labeled source and unlabeled target. In this paper, we propose a semi-supervised deep domain adaptation framework, in which the multi-layer feature extractor and a multi-class classifier are jointly learned to benefit from each other. Specifically, we develop a novel semi-supervised class-wise adaptation manner to fight off the conditional distribution mismatch between two domains by assigning a probabilistic label to each target sample, i.e., multiple class labels with different probabilities. Furthermore, a multi-class classifier is simultaneously trained on labeled source and unlabeled target samples in a semi-supervised fashion. In this way, the deep structure can formally alleviate the domain divergence and enhance the feature transferability. Experimental evaluations on several standard cross-domain benchmarks verify the superiority of our proposed approach.

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