Abstract
Subpixel classification (SPC) extracts meaningful information on land-cover classes from the mixed pixels. However, the major challenges for SPC are to obtain reliable soft reference data (RD), use apt input data, and achieve maximum accuracy. This article addresses these issues and applies the support vector machine (SVM) to retrieve the subpixel estimates of glacier facies (GF) using high radiometric-resolution Advanced Wide Field Sensor (AWiFS) data. Precise quantification of GF has fundamental importance in the glaciological research. Efficacy of the approach was first tested on the synthetic data followed by the input AWiFS and reference MultiSpectral Instrument data, including ancillary data. SPC of synthetic data resulted in overall accuracy (OA) of 95%, proving the merit of SVM. Classification accuracy is inversely related to the glacier's surface heterogeneity. Reducing the number of classes enhanced the OA by ∼18%. Source and timing of RD invariably controls the SPC accuracy. OA improved by ∼5% on addressing the issue of temporal gap between input and RD. ∼11% increase in OA with the inclusion of ancillary data confirmed their positive effect on the accuracy. Input and reference fractional area of GF were strongly correlated ( r > 0.9) with each other substantiating the results.
Highlights
R EMOTE sensing technology has emerged as a powerful and robust tool for extracting the quantitative landscape metrics, generally achieved through image classification
Though the results indicate that the subpixel classification (SPC) accuracy improves by using the same-date and same-source input and reference data (RD) but, the paucity of same-date clean RD often makes it a challenging task
2) Despite its advantage of tackling the mixel problem, the SPC accuracies of land-cover are generally low as it tends to be a function of land surface heterogeneity, and quality of input and RD
Summary
R EMOTE sensing technology has emerged as a powerful and robust tool for extracting the quantitative landscape metrics, generally achieved through image classification. Manuscript received June 14, 2019; revised October 28, 2019; accepted November 11, 2019. Date of publication January 24, 2020; date of current version February 19, 2020.
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More From: IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing
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