2023
DOI: 10.3390/rs16010115
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Color-Based Point Cloud Classification Using a Novel Gaussian Mixed Modeling-Based Approach versus a Deep Neural Network

Martin Štroner,
Rudolf Urban,
Lenka Línková

Abstract: The classification of point clouds is an important research topic due to the increasing speed, accuracy, and detail of their acquisition. Classification using only color is basically absent in the literature; the few available papers provide only algorithms with limited usefulness (transformation of three-dimensional color information to a one-dimensional one, such as intensity or vegetation indices). Here, we proposed two methods for classifying point clouds in RGB space (without using spatial information) an… Show more

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Cited by 4 publications
(1 citation statement)
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“…Image aesthetic processing (IAP) algorithms correct and enhance image content based on composition, contrast, color saturation, and brightness settings. Some extant models perform model training and prediction on the cloud [5][6][7]; however, it is difficult to deploy them on mobile devices, resulting in poor performance in terms of energy consumption and latency [8]. Other studies do not consider scene category information [9,10], which implies different aesthetic processing standards.…”
Section: Introductionmentioning
confidence: 99%
“…Image aesthetic processing (IAP) algorithms correct and enhance image content based on composition, contrast, color saturation, and brightness settings. Some extant models perform model training and prediction on the cloud [5][6][7]; however, it is difficult to deploy them on mobile devices, resulting in poor performance in terms of energy consumption and latency [8]. Other studies do not consider scene category information [9,10], which implies different aesthetic processing standards.…”
Section: Introductionmentioning
confidence: 99%