Presentation 2019-11-01
Study on Land Use Classification of PolSAR Data by Using Convolutional Neural Network
Nanako Saito, Masanori Gocho, Hiroyoshi Yamada, Ryoichi Sato, Yoshio Yamaguchi,
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Abstract(in Japanese) (See Japanese page)
Abstract(in English) Polarimetric Synthetic Aperture Radar (PolSAR) has been attracting attention in ground target detection and classification. This is because it can observe wide area regardless of time zone and weather, and analyze in detail by using polarimetric information. Various methods, such as model-based scattering power decomposition, eigenvalue analysis and so forth, have been proposed for the analysis of PolSAR data. Recently, classification techniques by using machine learning have been intensively studied to reduce misclassification and improve classification accuracy. In this paper, we present some experimental results of land use classification of ALOS-2/PALSAR-2 data by using convolutional neural network (CNN), and compare classification performance with the case of scattering power decomposition and support vector machine (SVM).
Keyword(in Japanese) (See Japanese page)
Keyword(in English) Polarimetric Synthetic Aperture Radar (PolSAR)ALOS-2Convolutional neural networkSupport vector machineLand use map
Paper # SANE2019-63
Date of Issue 2019-10-24 (SANE)

Conference Information
Committee SANE
Conference Date 2019/10/31(2days)
Place (in Japanese) (See Japanese page)
Place (in English) KOREA (Jeju)
Topics (in Japanese) (See Japanese page)
Topics (in English) ICSANE2019
Chair Akitsugu Nadai(NICT)
Vice Chair Hiroyoshi Yamada(Niigata Univ.) / Makoto Tanaka(Tokai Univ.)
Secretary Hiroyoshi Yamada(Univ. of Electro-Comm.) / Makoto Tanaka(Mitsubishi Electric)
Assistant Ryo Natsuaki(Univ. of Tokyo) / Masato Yamanashi(Mitsubishi Space Software) / Shunichi Futatsumori(ENRI)

Paper Information
Registration To Technical Committee on Space, Aeronautical and Navigational Electronics
Language ENG
Title (in Japanese) (See Japanese page)
Sub Title (in Japanese) (See Japanese page)
Title (in English) Study on Land Use Classification of PolSAR Data by Using Convolutional Neural Network
Sub Title (in English)
Keyword(1) Polarimetric Synthetic Aperture Radar (PolSAR)ALOS-2Convolutional neural networkSupport vector machineLand use map
1st Author's Name Nanako Saito
1st Author's Affiliation Niigata University(Niigata Univ.)
2nd Author's Name Masanori Gocho
2nd Author's Affiliation Niigata University(Niigata Univ.)
3rd Author's Name Hiroyoshi Yamada
3rd Author's Affiliation Niigata University(Niigata Univ.)
4th Author's Name Ryoichi Sato
4th Author's Affiliation Niigata University(Niigata Univ.)
5th Author's Name Yoshio Yamaguchi
5th Author's Affiliation Niigata University(Niigata Univ.)
Date 2019-11-01
Paper # SANE2019-63
Volume (vol) vol.119
Number (no) SANE-255
Page pp.pp.77-82(SANE),
#Pages 6
Date of Issue 2019-10-24 (SANE)