Semi-Supervised Domain Adaptation via Adaptive and Progressive Feature
Alignment
- URL: http://arxiv.org/abs/2106.02845v1
- Date: Sat, 5 Jun 2021 09:12:50 GMT
- Title: Semi-Supervised Domain Adaptation via Adaptive and Progressive Feature
Alignment
- Authors: Jiaxing Huang, Dayan Guan, Aoran Xiao, Shijian Lu
- Abstract summary: SSDAS employs a few labeled target samples as anchors for adaptive and progressive feature alignment between labeled source samples and unlabeled target samples.
In addition, we replace the dissimilar source features by high-confidence target features continuously during the iterative training process.
Extensive experiments show the proposed SSDAS greatly outperforms a number of baselines.
- Score: 32.77436219094282
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Contemporary domain adaptive semantic segmentation aims to address data
annotation challenges by assuming that target domains are completely
unannotated. However, annotating a few target samples is usually very
manageable and worthwhile especially if it improves the adaptation performance
substantially. This paper presents SSDAS, a Semi-Supervised Domain Adaptive
image Segmentation network that employs a few labeled target samples as anchors
for adaptive and progressive feature alignment between labeled source samples
and unlabeled target samples. We position the few labeled target samples as
references that gauge the similarity between source and target features and
guide adaptive inter-domain alignment for learning more similar source
features. In addition, we replace the dissimilar source features by
high-confidence target features continuously during the iterative training
process, which achieves progressive intra-domain alignment between confident
and unconfident target features. Extensive experiments show the proposed SSDAS
greatly outperforms a number of baselines, i.e., UDA-based semantic
segmentation and SSDA-based image classification. In addition, SSDAS is
complementary and can be easily incorporated into UDA-based methods with
consistent improvements in domain adaptive semantic segmentation.
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