Please use this identifier to cite or link to this item: https://hdl.handle.net/1959.11/28304
Title: Land Cover Classification of Nine Perennial Crops Using Sentinel-1 and -2 Data
Contributor(s): Brinkhoff, James  (author)orcid ; Vardanega, Justin (author); Robson, Andrew J  (author)orcid 
Publication Date: 2020
Early Online Version: 2019-12-26
Open Access: Yes
DOI: 10.3390/rs12010096
Handle Link: https://hdl.handle.net/1959.11/28304
Abstract: Land cover mapping of intensive cropping areas facilitates an enhanced regional response to biosecurity threats and to natural disasters such as drought and flooding. Such maps also provide information for natural resource planning and analysis of the temporal and spatial trends in crop distribution and gross production. In this work, 10 meter resolution land cover maps were generated over a 6200 km² area of the Riverina region in New South Wales (NSW), Australia, with a focus on locating the most important perennial crops in the region. The maps discriminated between 12 classes, including nine perennial crop classes. A satellite image time series (SITS) of freely available Sentinel-1 synthetic aperture radar (SAR) and Sentinel-2 multispectral imagery was used. A segmentation technique grouped spectrally similar adjacent pixels together, to enable object-based image analysis (OBIA). K-means unsupervised clustering was used to filter training points and classify some map areas, which improved supervised classification of the remaining areas. The support vector machine (SVM) supervised classifier with radial basis function (RBF) kernel gave the best results among several algorithms trialled. The accuracies of maps generated using several combinations of the multispectral and radar bands were compared to assess the relative value of each combination. An object-based post classification refinement step was developed, enabling optimization of the tradeoff between producers’ accuracy and users’ accuracy. Accuracy was assessed against randomly sampled segments, and the final map achieved an overall count-based accuracy of 84.8% and area-weighted accuracy of 90.9%. Producers’ accuracies for the perennial crop classes ranged from 78 to 100%, and users’ accuracies ranged from 63 to 100%. This work develops methods to generate detailed and large-scale maps that accurately discriminate between many perennial crops and can be updated frequently.
Publication Type: Journal Article
Source of Publication: Remote Sensing, 12(1), p. 1-26
Publisher: MDPI AG
Place of Publication: Switzerland
ISSN: 2072-4292
Fields of Research (FoR) 2008: 070699 Horticultural Production not elsewhere classified
Fields of Research (FoR) 2020: 300899 Horticultural production not elsewhere classified
Socio-Economic Objective (SEO) 2008: 820299 Horticultural Crops not elsewhere classified
Socio-Economic Objective (SEO) 2020: 260599 Horticultural crops not elsewhere classified
Peer Reviewed: Yes
HERDC Category Description: C1 Refereed Article in a Scholarly Journal
Appears in Collections:Journal Article
School of Environmental and Rural Science

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