Few-shot Unsupervised Domain Adaptation with Image-to-class Sparse Similarity Encoding
Shengqi Huang, Wanqi Yang, Lei Wang, Luping Zhou, Ming Yang

TL;DR
This paper introduces a novel image-to-class sparse similarity encoding method for few-shot unsupervised domain adaptation, leveraging local descriptors and similarity patterns to improve domain alignment and classification accuracy.
Contribution
The paper proposes a new IMSE approach that uses similarity patterns and local descriptors for effective domain adaptation in few-shot settings, demonstrating state-of-the-art results.
Findings
Achieved superior performance on DomainNet benchmark.
Outperformed recent FSL methods on miniImageNet.
Effectively aligned domain covariance matrices using SPs.
Abstract
This paper investigates a valuable setting called few-shot unsupervised domain adaptation (FS-UDA), which has not been sufficiently studied in the literature. In this setting, the source domain data are labelled, but with few-shot per category, while the target domain data are unlabelled. To address the FS-UDA setting, we develop a general UDA model to solve the following two key issues: the few-shot labeled data per category and the domain adaptation between support and query sets. Our model is general in that once trained it will be able to be applied to various FS-UDA tasks from the same source and target domains. Inspired by the recent local descriptor based few-shot learning (FSL), our general UDA model is fully built upon local descriptors (LDs) for image classification and domain adaptation. By proposing a novel concept called similarity patterns (SPs), our model not only…
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