2020
DOI: 10.3390/rs12152397
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Building Extraction Using Orthophotos and Dense Point Cloud Derived from Visual Band Aerial Imagery Based on Machine Learning and Segmentation

Abstract: Urban sprawl related increase of built-in areas requires reliable monitoring methods and remote sensing can be an efficient technique. Aerial surveys, with high spatial resolution, provide detailed data for building monitoring, but archive images usually have only visible bands. We aimed to reveal the efficiency of visible orthophotographs and photogrammetric dense point clouds in building detection with segmentation-based machine learning (with five algorithms) using visible bands, texture information, and sp… Show more

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Cited by 32 publications
(15 citation statements)
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“…Several studies proved that RF outperforms, at least slightly, SVM (Schlosser et al 2020, Liu et al 2013, in this case SVM provided better accuracy. Although the difference of AUC was only small (0.007), but significant.…”
Section: Discussionmentioning
confidence: 97%
“…Several studies proved that RF outperforms, at least slightly, SVM (Schlosser et al 2020, Liu et al 2013, in this case SVM provided better accuracy. Although the difference of AUC was only small (0.007), but significant.…”
Section: Discussionmentioning
confidence: 97%
“…Random Forest (RF) is a robust and popular classifier in the remote sensing community because it does not make assumptions on normal distribution and variance homogeneity but its classification performance is high [78,79]. RF, as a classifier, has proved its efficiency in satellite imagery based land use studies [80][81][82], in urban studies based on aerial photography [83] and even in geomorphological object identification using DTMs [84,85]. Accordingly, we also chose RF as a supervised classification method.…”
Section: Supervised Classification Proceduresmentioning
confidence: 99%
“…Several scholars used radar data to extract the top surface of buildings using methods such as classification, filtering, segmentation, clustering and interpolation to achieve the highest extraction accuracy of 95% (Zhu et al, 2006;Li et al, 2016;Zhao et al, 2017;Gilani et al, 2018;Zhang et al, 2018). Schlosser et al (2020) combined spectral band with texture data to extract buildings using machine learning technologies, and through feature selection, the building extraction accuracy exceeded 95% at the pixel level. Several scholars built a convolutional neural network (CNN) and used deep learning to extract building roofs.…”
Section: Introductionmentioning
confidence: 99%