2016
DOI: 10.5194/isprsarchives-xli-b3-833-2016
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Knowledge Based 3d Building Model Recognition Using Convolutional Neural Networks From Lidar and Aerial Imageries

Abstract: ABSTRACT:In recent years, with the development of the high resolution data acquisition technologies, many different approaches and algorithms have been presented to extract the accurate and timely updated 3D models of buildings as a key element of city structures for numerous applications in urban mapping. In this paper, a novel and model-based approach is proposed for automatic recognition of buildings' roof models such as flat, gable, hip, and pyramid hip roof models based on deep structures for hierarchical… Show more

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Cited by 12 publications
(7 citation statements)
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“…Innovative architectures, such as CNNs, have demonstrated the ability to classify high dimensional data sources accurately and robustly and have become the state-of-the-art for image recognition tasks. Alidoost and Arefi [22] proposed an approach based on fine-tuning of a pre-trained CNN model, which accomplishes building segmentation, feature extraction, and building roof labeling to create an automatic recognition system for various types of buildings. The training is done on both spectral and depth images separately, and the final predicted roof shape is simply taken as the highest probability result between the two models.…”
Section: Pixel-wise Image Classificationmentioning
confidence: 99%
“…Innovative architectures, such as CNNs, have demonstrated the ability to classify high dimensional data sources accurately and robustly and have become the state-of-the-art for image recognition tasks. Alidoost and Arefi [22] proposed an approach based on fine-tuning of a pre-trained CNN model, which accomplishes building segmentation, feature extraction, and building roof labeling to create an automatic recognition system for various types of buildings. The training is done on both spectral and depth images separately, and the final predicted roof shape is simply taken as the highest probability result between the two models.…”
Section: Pixel-wise Image Classificationmentioning
confidence: 99%
“…Each patch is assigned to a label manually based on its corresponding roof type [20]. The main difference between this approach and previous image patch dataset generation approaches [67,68] is that the main orientation of each roof is also considered inside the patch. Therefore, the quality of roof patches cannot be degraded by rotation and resizing.…”
Section: Dataset Generation Based On Roof Model Librarymentioning
confidence: 99%
“…The option of freezing initial layers is exploited with a variable number of frozen layers chosen. When layer 11 is said to be frozen, this means all previous layers, (1)(2)(3)(4)(5)(6)(7)(8)(9)(10)(11), are frozen during training. All base architectures and tested hyper-parameters are shown in Table 1.…”
Section: Fig 2 Cnn Architecture Templatesmentioning
confidence: 99%
“…The GIS community has begun to apply CNNs to roof identification. Perhaps most closely related to this paper, Alidoost and Arefi (2016) trained CNNs using satellite (RGB) and digital surface map (DSM) images to label basic roof shapes [5]. However the final predicted roof shape was simply taken as the highest probability result between the two models.…”
Section: Introductionmentioning
confidence: 99%