2017
DOI: 10.5194/isprs-annals-iv-1-w1-141-2017
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Semantic Segmentation of Forest Stands of Pure Species as a Global Optimization Problem

Abstract: ABSTRACT:Forest stand delineation is a fundamental task for forest management purposes, that is still mainly manually performed through visual inspection of geospatial (very) high spatial resolution images. Stand detection has been barely addressed in the literature which has mainly focused, in forested environments, on individual tree extraction and tree species classification. From a methodological point of view, stand detection can be considered as a semantic segmentation problem. It offers two advantages. … Show more

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Cited by 12 publications
(2 citation statements)
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“…Over the past decade, semantic segmentation for tree species discrimination, in particular in forestry contexts, has also received considerable attention; however, a substantial portion of this research is focused on the processing of satellite or aerial images (see, for instance, [74,151,152]). These works, while interesting, have only marginal relevance in forestry field robotics, as most robots in this context operate at the ground level.…”
Section: Image Segmentation: Object Detection and Semantic Segmentationmentioning
confidence: 99%
“…Over the past decade, semantic segmentation for tree species discrimination, in particular in forestry contexts, has also received considerable attention; however, a substantial portion of this research is focused on the processing of satellite or aerial images (see, for instance, [74,151,152]). These works, while interesting, have only marginal relevance in forestry field robotics, as most robots in this context operate at the ground level.…”
Section: Image Segmentation: Object Detection and Semantic Segmentationmentioning
confidence: 99%
“…They have been employed to address remote sensing problems that are diverse and data-rich in nature [49]. Examples of these researches include environmental monitoring [50], crop cover and analysis [51,52], types of trees in forests [53], and building detection [54]. Deep learning methods automatically extract features that are tailored for the classification tasks, which makes such methods better choices for handling complicated approaches [55].…”
Section: Introductionmentioning
confidence: 99%