4.7 Article

Rethinking Triplet Loss for Domain Adaptation

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCSVT.2020.2968484

Keywords

Domain adaptation; triplet loss; semantic alignment

Funding

  1. Australian Research Council Centre of Excellence for Robotic Vision [CE140100016]
  2. Australian Research Council Discovery Early Career Award - Australian Government [DE200101283]
  3. NSFC [61771447]

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This study focuses on domain adaptation, proposing a similarity guided constraint (SGC) method integrated into the network as a triplet loss to achieve co-location of source and target domain features at the class level. The method ensures cross-domain similarities are preserved, leading to intra-class compactness and inter-class separability.
The gap in data distribution motivates domain adaptation research. In this area, image classification intrinsically requires the source and target features to be co-located if they are of the same class. However, many works only take a global view of the domain gap. That is, to make the data distributions globally overlap; and this does not necessarily lead to feature co-location at the class level. To resolve this problem, we study metric learning in the context of domain adaptation. Specifically, we introduce a similarity guided constraint (SGC). In the implementation, SGC takes the form of a triplet loss. The triplet loss is integrated into the network as an additional objective term. Here, an image triplet consists of two images of the same class and another image of a different class. Albeit simple, the working mechanism of our method is interesting and insightful. Importantly, images in the triplets are sampled from the source and target domains. From a micro perspective, by enforcing this constraint on every possible triplet, images from different domains but of the same class are mapped nearby, and those of different classes are far apart. From a macro perspective, our method ensures that cross-domain similarities are preserved, leading to intra-class compactness and inter-class separability. Extensive experiment on four datasets shows our method yields significant improvement over the baselines and has a competitive accuracy with the state-of-the-art results.

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