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Semantic Segmentation of High-Resolution Satellite Imagery using Generative Adversarial Networks with Progressive GrowingWith increase in urbanization and Earth Sciences research into urban areas, the need to quickly and accurately segment urban rooftop maps has never been greater. Cur-rent machine learning techniques struggle to produce high accuracy maps in dense urban zones where there is high image noise and foot print overlap. In this paper, we evaluate a training methodology for pixel-wise segmentation for high resolution satellite imagery using progressive growing of generative adversarial networks as a solution. We apply our model to segmenting building rooftops and compare these results to conventional methods for rooftop segmentation. We evaluate our approach using the SpaceNet version 2 and xView datasets. Our experiments show that for SpaceNet, progressive Generative Adversarial Network (GAN) training achieved a test accuracy of 93% compared to 89% for traditional GAN training and 87% for U-Net architecture, while for xView, we achieved 71% accuracy using progressive GAN training compared to 69% through traditional GAN training and 65% using U-Net.
Document ID
20210016386
Acquisition Source
Ames Research Center
Document Type
Accepted Manuscript (Version with final changes)
Authors
Edward Collier
(Louisiana State University Baton Rouge, Louisiana, United States)
Supratik Mukhopadhyay
(Louisiana State University Baton Rouge, Louisiana, United States)
Kate Duffy
(Ames Research Center Mountain View, California, United States)
Sangram Ganguly
(Bay Area Environmental Research Institute Petaluma, California, United States)
Geri Madanguit
(Bay Area Environmental Research Institute Petaluma, California, United States)
Subodh Kalia
(Bay Area Environmental Research Institute Petaluma, California, United States)
Gayaka Shreekant
(Bay Area Environmental Research Institute Petaluma, California, United States)
Ramakrishna Nemani
(Ames Research Center Mountain View, California, United States)
Andrew Michaelis
(Ames Research Center Mountain View, California, United States)
Shuang Li
(Ames Research Center Mountain View, California, United States)
Auroop Ganguly
(Northeastern University Boston, Massachusetts, United States)
Date Acquired
May 26, 2021
Publication Date
March 22, 2021
Publication Information
Publication: Remote Sensing Letters
Publisher: Taylor and Francis
Volume: 12
Issue: 5
Issue Publication Date: March 1, 2021
ISSN: 2150-704X
e-ISSN: 2150-7058
URL: https://www.tandfonline.com/doi/full/10.1080/2150704X.2021.1895444
Subject Category
Earth Resources And Remote Sensing
Funding Number(s)
OTHER: NNX12AD05A
Distribution Limits
Public
Copyright
Use by or on behalf of the US Gov. Permitted.
Technical Review
External Peer Committee
Keywords
Semantic
Segmentation
High Resolution
Satellite Imagery
Generative Adversarial Networks
Progressive Growing
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