Litcius/Paper detail

Uncertainty Analysis of Object-Based Land-Cover Classification Using Sentinel-2 Time-Series Data

Lei Ma, Michael Schmitt, Xiao Xiang Zhu

2020Remote Sensing16 citationsDOIOpen Access PDF

Abstract

Recently, time-series from optical satellite data have been frequently used in object-based land-cover classification. This poses a significant challenge to object-based image analysis (OBIA) owing to the presence of complex spatio-temporal information in the time-series data. This study evaluates object-based land-cover classification in the northern suburbs of Munich using time-series from optical Sentinel data. Using a random forest classifier as the backbone, experiments were designed to analyze the impact of the segmentation scale, features (including spectral and temporal features), categories, frequency, and acquisition timing of optical satellite images. Based on our analyses, the following findings are reported: (1) Optical Sentinel images acquired over four seasons can make a significant contribution to the classification of agricultural areas, even though this contribution varies between spectral bands for the same period. (2) The use of time-series data alleviates the issue of identifying the “optimal” segmentation scale. The finding of this study can provide a more comprehensive understanding of the effects of classification uncertainty on object-based dense multi-temporal image classification.

Topics & Concepts

Land coverRemote sensingComputer scienceObject basedClassifier (UML)SegmentationTime seriesScale (ratio)Random forestContextual image classificationObject (grammar)Pattern recognition (psychology)Artificial intelligenceLand useData miningGeographyCartographyMachine learningImage (mathematics)Civil engineeringEngineeringRemote Sensing in AgricultureLand Use and Ecosystem ServicesRemote-Sensing Image Classification
Uncertainty Analysis of Object-Based Land-Cover Classification Using Sentinel-2 Time-Series Data | Litcius