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Im, Jungho
Intelligent Remote sensing and geospatial Information Science Lab.
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Classification and mapping of paddy rice by combining Landsat and SAR time series data

Author(s)
Park, SeonyoungIm, JunghoPark, SeohuiYoo, CheolheeHan, HyangsunRhee, Jinyoung
Issued Date
2018-03
DOI
10.3390/rs10030447
URI
https://scholarworks.unist.ac.kr/handle/201301/24129
Fulltext
http://www.mdpi.com/2072-4292/10/3/447
Citation
REMOTE SENSING, v.10, no.3, pp.447
Abstract
Rice is an important food resource, and the demand for rice has increased as population has expanded. Therefore, accurate paddy rice classification and monitoring are necessary to identify and forecast rice production. Satellite data have been often used to produce paddy rice maps with more frequent update cycle (e.g., every year) than field surveys. Many satellite data, including both optical and SAR sensor data (e.g., Landsat, MODIS, and ALOS PALSAR), have been employed to classify paddy rice. In the present study, time series data from Landsat, RADARSAT-1, and ALOS PALSAR satellite sensors were synergistically used to classify paddy rice through machine learning approaches over two different climate regions (sites A and B). Six schemes considering the composition of various combinations of input data by sensor and collection date were evaluated. Scheme 6 that fused optical and SAR sensor time series data at the decision level yielded the highest accuracy (98.67% for site A and 93.87% for site B). Performance of paddy rice classification was better in site A than site B, which consists of heterogeneous land cover and has low data availability due to a high cloud cover rate. This study also proposed Paddy Rice Mapping Index (PMI) considering spectral and phenological characteristics of paddy rice. PMI represented well the spatial distribution of paddy rice in both regions. Google Earth Engine was adopted to produce paddy rice maps over larger areas using the proposed PMI-based approach.
Publisher
MDPI AG
ISSN
2072-4292
Keyword (Author)
ALOS PALSARData fusionLandsatPaddy ricePaddy rice mapping index (PMI)RADARSAT-1Time-series analysis
Keyword
SUPPORT VECTOR MACHINESMULTITEMPORAL MODIS IMAGESCOVER CLASSIFICATIONRANDOM FORESTSPLANTING AREACROP CLASSIFICATIONNEURAL-NETWORKURBANINTEGRATIONSATELLITE

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