2017
DOI: 10.3390/rs9060633
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A New Stereo Pair Disparity Index (SPDI) for Detecting Built-Up Areas from High-Resolution Stereo Imagery

Abstract: Within-class spectral variation and between-class spectral confusion in remotely sensed imagery degrades the performance of built-up area detection when using planar texture, shape, and spectral features. Terrain slopes and building heights extracted from auxiliary data, such as Digital Surface Models (DSMs) however, can improve the results. Stereo imagery incorporates height information unlike single remotely sensed images. In this study, a new Stereo Pair Disparity Index (SPDI) for indicating built-up areas … Show more

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Cited by 13 publications
(6 citation statements)
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“…In this regard, only one article proposed a proxy for a spatially-corrected population density by digitizing and excluding inhabited areas (id: 24). To improve the population density assessment, cities should be considered in their verticality and volume, through the use of a digital height model, potentially generated from unmanned or satellite remote sensing stereo imagery [122][123][124];…”
Section: Highlights and Perspectives To Improve The Frame Of Urban Dementioning
confidence: 99%
“…In this regard, only one article proposed a proxy for a spatially-corrected population density by digitizing and excluding inhabited areas (id: 24). To improve the population density assessment, cities should be considered in their verticality and volume, through the use of a digital height model, potentially generated from unmanned or satellite remote sensing stereo imagery [122][123][124];…”
Section: Highlights and Perspectives To Improve The Frame Of Urban Dementioning
confidence: 99%
“…Although the automatic recognition of building subclass is meaningful to urban planning [6], humanitarian aid [7], and other fields [5], few of studies focus on building subclass segmentation. Peng et al [8] try to detect built-up areas by using stereo imagery incorporates height information. Taoufiq et al [18] and Huang et al [19] focus on building subclass classification.…”
Section: B Building Subclass Segmentationmentioning
confidence: 99%
“…Nowadays, studies on building subclass segmentation either combine images from different angles [8] or incorporate shadow detection with high-resolution images [9]. Damage assessment [10]- [12] is also a branch of building subclass segmentation, which classifies the damage level of buildings by using pre-and post-disaster images.…”
Section: Introductionmentioning
confidence: 99%
“…Airborne LiDAR is an active sensor that measures ground height. As a product of passive sensors, the optical data itself is not sensitive to ground height, but combing images from different angles (i.e., stereo images) (Duan et al 2018;Peng et al 2017) or incorporating shadow detection with high-resolution images (Shao et al 2011) can assist building height estimation. Ground-view optical images, such as Google Street View, have also been used to characterize urban morphology in different local climate zones (Wang et al 2018) and sky views of street canyons (Gong et al 2018).…”
Section: Introductionmentioning
confidence: 99%