Please use this identifier to cite or link to this item: http://dx.doi.org/10.25673/120776
Title: Unsupervised parameterization for optimal segmentation of agricultural parcels from satellite images in different agricultural landscapes
Author(s): Tetteh, Gideon OkpotiLook up in the Integrated Authority File of the German National Library
Gocht, AlexanderLook up in the Integrated Authority File of the German National Library
Schwieder, MarcelLook up in the Integrated Authority File of the German National Library
Erasmi, StefanLook up in the Integrated Authority File of the German National Library
Conrad, ChristopherLook up in the Integrated Authority File of the German National Library
Issue Date: 2020
Type: Article
Language: English
Abstract: Image segmentation is a cost-effective way to obtain information about the sizes and structural composition of agricultural parcels in an area. To accurately obtain such information, the parameters of the segmentation algorithm ought to be optimized using supervised or unsupervised methods. The difficulty in obtaining reference data makes unsupervised methods indispensable. In this study, we evaluated an existing unsupervised evaluation metric that minimizes a global score (GS), which is computed by summing up the intra-segment uniformity and inter-segment dissimilarity within a segmentation output. We modified this metric and proposed a new metric that uses absolute difference to compute the GS. We compared this proposed metric with the existing metric in two optimization approaches based on the Multiresolution Segmentation (MRS) algorithm to optimally delineate agricultural parcels from Sentinel-2 images in Lower Saxony, Germany. The first approach searches for optimal scale while keeping shape and compactness constant, while the second approach uses Bayesian optimization to optimize the three main parameters of the MRS algorithm. Based on a reference data of agricultural parcels, the optimal segmentation result of each optimization approach was evaluated by calculating the quality rate, over-segmentation, and under-segmentation. For both approaches, our proposed metric outperformed the existing metric in different agricultural landscapes. The proposed metric identified optimal segmentations that were less under-segmented compared to the existing metric. A comparison of the optimal segmentation results obtained in this study to existing benchmark results generated via supervised optimization showed that the unsupervised Bayesian optimization approach based on our proposed metric can potentially be used as an alternative to supervised optimization, particularly in geographic regions where reference data is unavailable or an automated evaluation system is sought.
URI: https://opendata.uni-halle.de//handle/1981185920/122731
http://dx.doi.org/10.25673/120776
Open Access: Open access publication
License: (CC BY 4.0) Creative Commons Attribution 4.0(CC BY 4.0) Creative Commons Attribution 4.0
Journal Title: Remote sensing
Publisher: MDPI
Publisher Place: Basel
Volume: 12
Issue: 18
Original Publication: 10.3390/rs12183096
Page Start: 1
Page End: 27
Appears in Collections:Open Access Publikationen der MLU

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