Chaos to Order: A Label Propagation Perspective on Source-Free Domain
Adaptation
- URL: http://arxiv.org/abs/2301.08413v3
- Date: Mon, 14 Aug 2023 07:25:27 GMT
- Title: Chaos to Order: A Label Propagation Perspective on Source-Free Domain
Adaptation
- Authors: Chunwei Wu, Guitao Cao, Yan Li, Xidong Xi, Wenming Cao, Hong Wang
- Abstract summary: We present Chaos to Order (CtO), a novel approach for source-free domain adaptation (SFDA)
CtO strives to constrain semantic credibility and propagate label information among target subpopulations.
Empirical evidence demonstrates that CtO outperforms the state of the arts on three public benchmarks.
- Score: 8.27771856472078
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Source-free domain adaptation (SFDA), where only a pre-trained source model
is used to adapt to the target distribution, is a more general approach to
achieving domain adaptation in the real world. However, it can be challenging
to capture the inherent structure of the target features accurately due to the
lack of supervised information on the target domain. By analyzing the
clustering performance of the target features, we show that they still contain
core features related to discriminative attributes but lack the collation of
semantic information. Inspired by this insight, we present Chaos to Order
(CtO), a novel approach for SFDA that strives to constrain semantic credibility
and propagate label information among target subpopulations. CtO divides the
target data into inner and outlier samples based on the adaptive threshold of
the learning state, customizing the learning strategy to fit the data
properties best. Specifically, inner samples are utilized for learning
intra-class structure thanks to their relatively well-clustered properties. The
low-density outlier samples are regularized by input consistency to achieve
high accuracy with respect to the ground truth labels. In CtO, by employing
different learning strategies to propagate the labels from the inner local to
outlier instances, it clusters the global samples from chaos to order. We
further adaptively regulate the neighborhood affinity of the inner samples to
constrain the local semantic credibility. In theoretical and empirical
analyses, we demonstrate that our algorithm not only propagates from inner to
outlier but also prevents local clustering from forming spurious clusters.
Empirical evidence demonstrates that CtO outperforms the state of the arts on
three public benchmarks: Office-31, Office-Home, and VisDA.
Related papers
- High-order Neighborhoods Know More: HyperGraph Learning Meets Source-free Unsupervised Domain Adaptation [34.08681468394247]
Source-free Unsupervised Domain Adaptation aims to classify target samples by only accessing a pre-trained source model and unlabelled target samples.
Existing methods normally exploit the pair-wise relation among target samples and attempt to discover their correlations by clustering these samples based on semantic features.
We propose a new SFDA method that exploits the high-order neighborhood relation and explicitly takes the domain shift effect into account.
arXiv Detail & Related papers (2024-05-11T05:07:43Z) - Unsupervised Domain Adaptation via Distilled Discriminative Clustering [45.39542287480395]
We re-cast the domain adaptation problem as discriminative clustering of target data.
We propose to jointly train the network using parallel, supervised learning objectives over labeled source data.
We conduct careful ablation studies and extensive experiments on five popular benchmark datasets.
arXiv Detail & Related papers (2023-02-23T13:03:48Z) - Divide and Contrast: Source-free Domain Adaptation via Adaptive
Contrastive Learning [122.62311703151215]
Divide and Contrast (DaC) aims to connect the good ends of both worlds while bypassing their limitations.
DaC divides the target data into source-like and target-specific samples, where either group of samples is treated with tailored goals.
We further align the source-like domain with the target-specific samples using a memory bank-based Maximum Mean Discrepancy (MMD) loss to reduce the distribution mismatch.
arXiv Detail & Related papers (2022-11-12T09:21:49Z) - Low-confidence Samples Matter for Domain Adaptation [47.552605279925736]
Domain adaptation (DA) aims to transfer knowledge from a label-rich source domain to a related but label-scarce target domain.
We propose a novel contrastive learning method by processing low-confidence samples.
We evaluate the proposed method in both unsupervised and semi-supervised DA settings.
arXiv Detail & Related papers (2022-02-06T15:45:45Z) - Semi-supervised Domain Adaptive Structure Learning [72.01544419893628]
Semi-supervised domain adaptation (SSDA) is a challenging problem requiring methods to overcome both 1) overfitting towards poorly annotated data and 2) distribution shift across domains.
We introduce an adaptive structure learning method to regularize the cooperation of SSL and DA.
arXiv Detail & Related papers (2021-12-12T06:11:16Z) - Cycle Self-Training for Domain Adaptation [85.14659717421533]
Cycle Self-Training (CST) is a principled self-training algorithm that enforces pseudo-labels to generalize across domains.
CST recovers target ground truth, while both invariant feature learning and vanilla self-training fail.
Empirical results indicate that CST significantly improves over prior state-of-the-arts in standard UDA benchmarks.
arXiv Detail & Related papers (2021-03-05T10:04:25Z) - Towards Uncovering the Intrinsic Data Structures for Unsupervised Domain
Adaptation using Structurally Regularized Deep Clustering [119.88565565454378]
Unsupervised domain adaptation (UDA) is to learn classification models that make predictions for unlabeled data on a target domain.
We propose a hybrid model of Structurally Regularized Deep Clustering, which integrates the regularized discriminative clustering of target data with a generative one.
Our proposed H-SRDC outperforms all the existing methods under both the inductive and transductive settings.
arXiv Detail & Related papers (2020-12-08T08:52:00Z) - Alleviating Semantic-level Shift: A Semi-supervised Domain Adaptation
Method for Semantic Segmentation [97.8552697905657]
A key challenge of this task is how to alleviate the data distribution discrepancy between the source and target domains.
We propose Alleviating Semantic-level Shift (ASS), which can successfully promote the distribution consistency from both global and local views.
We apply our ASS to two domain adaptation tasks, from GTA5 to Cityscapes and from Synthia to Cityscapes.
arXiv Detail & Related papers (2020-04-02T03:25:05Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.