4.7 Article

Adaptive Refining-Aggregation-Separation Framework for Unsupervised Domain Adaptation Semantic Segmentation

Journal

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCSVT.2023.3243402

Keywords

Unsupervised domain adaptation; semantic segmentation; feature-level adaptation; clustering technique

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Unsupervised domain adaptation is an effective approach for solving the labeling difficulties in semantic segmentation tasks. A novel clustering-based method is proposed, which uses an adaptive refining-aggregation-separation framework to learn discriminative features for different domains and features. This method does not require tunable thresholds and includes techniques such as adaptive refinement, feature evaluation, and different losses for improving segmentation performance. Experimental results on benchmark datasets show that the proposed method outperforms existing state-of-the-art methods.
Unsupervised domain adaptation has attracted widespread attention as a promising method to solve the labeling difficulties of semantic segmentation tasks. It trains a segmentation network for unlabeled real target images using easily available labeled virtual source images. To improve performance, clustering is used to obtain domain-invariant feature representations. However, most clustering-based methods indiscriminately cluster all features mapped by category from both domains, causing the centroid shift and affecting the generation of discriminative features. We propose a novel clustering-based method that uses an adaptive refining-aggregation-separation framework, which learns the discriminative features by designing different adaptive schemes for different domains and features. The clustering does not require any tunable thresholds. To estimate more accurate domain-invariant centroids, we design different ways to guide the adaptive refinement of different domain features. A critic is proposed to directly evaluate the confidence of target features to solve the absence of target labels. We introduce a domain-balanced aggregation loss and two adaptive separation losses for distance and similarity respectively, which can discriminate clustering features by combining the refinement strategy to improve segmentation performance. Experimental results on GTA5 -> Cityscapes and SYNTHIA -> Cityscapes benchmarks show that our method outperforms existing state-of-the-art methods.

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