Crop Classification by Machine Learning Algorithm Combined X-band and C-band SAR Data
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- YAMAYA Yuki
- 日本学術振興会(北海道大学大学院農学院)
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- SONOBE Rei
- 静岡大学農学部
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- KOBAYASHI Nobuyuki
- 株式会社スマートリンク北海道
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- MOCHIZUKI Kan-ichiro
- 株式会社パスコ
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- WANG Xiufeng
- 北海道大学大学院農学研究院
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- TANI Hiroshi
- 北海道大学大学院農学研究院
Bibliographic Information
- Other Title
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- XバンドおよびCバンドSARデータを併用した機械学習アルゴリズムによる作物分類の高精度化・効率化に関する検討
- Xバンド オヨビ Cバンド SAR データ オ ヘイヨウ シタ キカイ ガクシュウ アルゴリズム ニ ヨル サクモツ ブンルイ ノ コウセイドカ ・ コウリツカ ニ カンスル ケントウ
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Description
<p>This paper presents a crop classification method using synthetic aperture radar (SAR) satellite data for mapping, in place of existing ground surveys. We used TerraSAR-X X-band dual-polarization data and RADARSAT-2 C-band full-polarization data. Values of the sigma-naught and polarimetric parameters were calculated from each type of data. We assessed the accuracy of classification performed by the random forests machine-learning algorithm. Three results were obtained. First, the classification accuracy was evaluated using RADARSAT-2 data for five scenes. Using nine variables calculated from each scene of RADARSAT-2 data, the overall accuracy exceeded 0.92. Second, the classification accuracy was evaluated using both RADARSAT-2 and TerraSAR-X data for five scenes. Using nine types of variables in the RADARSAT-2 data and four types of variables in the TerraSAR-X data, a significantly higher overall accuracy (over 0.93) was obtained than using only RADARSAT-2 data. This demonstrates the advantage of using SAR data for the two types of bands. Finally, for economic efficiency, the number of SAR scenes used for classification was reduced. The classification accuracy using only three scenes of RADARSAT-2 and TerraSAR-X data was not significantly different from that using five scenes. This shows that classification is efficient without requiring a large quantity of data.</p>
Journal
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- Journal of the Japan society of photogrammetry and remote sensing
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Journal of the Japan society of photogrammetry and remote sensing 59 (6), 259-274, 2020
Japan Society of Photogrammetry and Remote Sensing
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Details 詳細情報について
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- CRID
- 1390290617367633280
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- NII Article ID
- 130008138743
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- NII Book ID
- AN00111450
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- ISSN
- 18839061
- 02855844
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- NDL BIB ID
- 031239752
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- Text Lang
- ja
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- Data Source
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- JaLC
- NDL
- Crossref
- CiNii Articles
- KAKEN
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- Abstract License Flag
- Disallowed