Automatic building detection based on supervised classification using high resolution google earth images
TL;DR: In this article, a novel approach to detect the buildings by automization of the training area collecting stage for supervised classification is presented. The method is based on the fact that a 3D building structure should cast a shadow under suitable imaging conditions, and masks out the shadow areas using luminance component of the LAB color space, which indicates the lightness of the image, and a novel double thresholding technique.
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Abstract: . This paper presents a novel approach to detect the buildings by automization of the training area collecting stage for supervised classification. The method based on the fact that a 3d building structure should cast a shadow under suitable imaging conditions. Therefore, the methodology begins with the detection and masking out the shadow areas using luminance component of the LAB color space, which indicates the lightness of the image, and a novel double thresholding technique. Further, the training areas for supervised classification are selected by automatically determining a buffer zone on each building whose shadow is detected by using the shadow shape and the sun illumination direction. Thereafter, by calculating the statistic values of each buffer zone which is collected from the building areas the Improved Parallelepiped Supervised Classification is executed to detect the buildings. Standard deviation thresholding applied to the Parallelepiped classification method to improve its accuracy. Finally, simple morphological operations conducted for releasing the noises and increasing the accuracy of the results. The experiments were performed on set of high resolution Google Earth images. The performance of the proposed approach was assessed by comparing the results of the proposed approach with the reference data by using well-known quality measurements (Precision, Recall and F1-score) to evaluate the pixel-based and object-based performances of the proposed approach. Evaluation of the results illustrates that buildings detected from dense and suburban districts with divers characteristics and color combinations using our proposed method have 88.4 % and 853 % overall pixel-based and object-based precision performances, respectively.
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Citations
Satellite images analysis for shadow detection and building height estimation
Gregoris Liasis,Stavros Stavrou +1 more
TL;DR: A new automated method for delineating building shadows is proposed that combines spectral and spatial features of the satellite image with an optimized active contour model where the contours are biased to delineate shadow regions.
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Building extraction in satellite images using active contours and colour features
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TL;DR: The Red, Green and Blue (RGB) representation and the properties of the Hue, Saturation and Value (HSV) colour space have been analysed and used to optimize the extraction of buildings from satellite images in an active contour segmentation framework.
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Post-Disaster Building Database Updating Using Automated Deep Learning: An Integration of Pre-Disaster OpenStreetMap and Multi-Temporal Satellite Data
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Automatic building detection based on Purposive FastICA (PFICA) algorithm using monocular high resolution Google Earth images
TL;DR: Evaluation of the results illustrates that buildings detected from dense and suburban districts with divers characteristics and color combinations using the proposed method have 88.6% and 85.5% overall pixel-based and object-based precision performances, respectively.
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Building Extraction From RGB VHR Images Using Shifted Shadow Algorithm
TL;DR: Numerical assessments performed on a series of test images indicate that the proposed approach for building extraction is efficient and feasible, especially in suburban areas, and the proposed building verification method can distinguish buildings from non-buildings.
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