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Paper

V2RNet: An Unsupervised Semantic Segmentation Algorithm for Remote Sensing Images via Cross-Domain Transfer Learning

Release time:2022-11-07 Hits:

Journal:2021 IEEE International Geoscience and Remote Sensing Symposium IGARSS

Place of Publication:Brussels, Belgium

Abstract:The dependence on large-scale pixel-level annotations brings great challenge to semantic segmentation task for remote sensing images (RSIs). To alleviate this issue, we propose V2RNet, an unsupervised semantic segmentation method which introduces adversarial learning into segmentation network. Our method creatively transfers the segmentation model from the synthetic GTA-V data to the real optical remote sensing data via domain adaptation. Additionally, to unify the source domain semantic structures and target domain image style, we design a semantic segmentation discriminator as auxiliary to optimize the domain adaptation efficiency. Thus the proposed method is effective on typical remote sensing targets such densely arranged, intertwined road. Experimental results on Massachusetts Road data set demonstrate our unsupervised semantic segmentation model achieves comparable segmentation accuracy, which also validates the effectiveness of the proposed method.

First Author:Danpei Zhao

Indexed by:Conference paper

Correspondence Author:Danpei Zhao

First-Level Discipline:Control Science and Engineering

Page Number:4676-4679

ISSN No.:2153-7003

Translation or Not:no

Date of Publication:2021-07-11

Included Journals:EI

Links to published journals:https://ieeexplore.ieee.org/document/9553290

赵丹培

Gender:Female Education Level:博士研究生 Alma Mater:中国科学院长春光学精密机械与物理研究所 Main positions:航天信息工程系党支部书记 Degree:博士 Status:Employed School/Department:宇航学院 Business Address:北航沙河主楼D718房间 E-Mail: