To overcome the domain gap between synthetic and real-world datasets, unsupervised domain adaptation methods have been proposed for semantic segmentation. Majority of the previous approaches have attempted to reduce the gap either at the pixel or feature level, disregarding the fact that the two components interact positively. To address this, we present CONtrastive FEaTure and pIxel alignment (CON-FETI) for bridging the domain gap at both the pixel and feature levels using a unique contrastive formulation. We introduce well-estimated prototypes by including category-wise cross-domain information to link the two alignments: the pixel-level alignment is achieved using the jointly trained style transfer module with the prototypical semantic consistency, while the feature-level alignment is enforced to cross-domain features with the pixel-to-prototype contrast. Our extensive experiments demonstrate that our method outperforms existing state-of-the-art methods using DeepLabV2. Our code1 has been made publicly available

(2023). Contrast, Stylize and Adapt: Unsupervised Contrastive Learning Framework for Domain Adaptive Semantic Segmentation . Retrieved from https://hdl.handle.net/10446/311032

Contrast, Stylize and Adapt: Unsupervised Contrastive Learning Framework for Domain Adaptive Semantic Segmentation

Roy, Subhankar;
2023-01-01

Abstract

To overcome the domain gap between synthetic and real-world datasets, unsupervised domain adaptation methods have been proposed for semantic segmentation. Majority of the previous approaches have attempted to reduce the gap either at the pixel or feature level, disregarding the fact that the two components interact positively. To address this, we present CONtrastive FEaTure and pIxel alignment (CON-FETI) for bridging the domain gap at both the pixel and feature levels using a unique contrastive formulation. We introduce well-estimated prototypes by including category-wise cross-domain information to link the two alignments: the pixel-level alignment is achieved using the jointly trained style transfer module with the prototypical semantic consistency, while the feature-level alignment is enforced to cross-domain features with the pixel-to-prototype contrast. Our extensive experiments demonstrate that our method outperforms existing state-of-the-art methods using DeepLabV2. Our code1 has been made publicly available
2023
Inglese
2023 IEEE/CVF Conference on Computer Vision and Pattern Recognition Workshops (CVPRW)
979-8-3503-0250-9
979-8-3503-0249-3
2023
4869
4879
cartaceo
online
United States
Piscataway
IEEE (Institute of Electrical and Electronics Engineers)
CVPRW 2023: Conference on Computer Vision and Pattern Recognition Workshops, Vancouver, Canada, 18-22 June 2023
Vancouver, Canada
18-22 June 2023
internazionale
contributo
Settore IINF-05/A - Sistemi di elaborazione delle informazioni
Contrastive Learning Framework; Domain Adaptive Semantic Segmentation
info:eu-repo/semantics/conferenceObject
5
Li, Tianyu; Roy, Subhankar; Zhou, Huayi; Lu, Hongtao; Lathuilière, Stéphane
1.4 Contributi in atti di convegno - Contributions in conference proceedings::1.4.01 Contributi in atti di convegno - Conference presentations
reserved
Non definito
273
(2023). Contrast, Stylize and Adapt: Unsupervised Contrastive Learning Framework for Domain Adaptive Semantic Segmentation . Retrieved from https://hdl.handle.net/10446/311032
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