Отрывок: Each layer is fully connected to the next, and each unit uses a sigmoid function for activation. We have used the benchmark of Chen et al. to train and test our Artificial Neural Network. First of all, we took a training set of 3D meshes got from the corpus of Chen et al. to construct the input of our ANN. For each 3D mesh, we firstly, extract the segmentation boundaries of its given ground truth segmentations, done by human...
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dc.contributor.authorZakani, F.R.-
dc.contributor.authorBouksim, M.-
dc.contributor.authorArhid, K.-
dc.contributor.authorAboulfatah, M.-
dc.contributor.authorGadi, T.-
dc.date.accessioned2018-05-07 12:03:25-
dc.date.available2018-05-07 12:03:25-
dc.date.issued2018-
dc.identifierDspace\SGAU\20180504\68912ru
dc.identifier.citationZakani FR, Bouksim M, Arhid K, Aboulfatah M, Gadi T. Segmentation of 3D meshes combining the artificial neural network classifier and the spectral clustering. Computer Optics 2018; 42(2): 312-319.ru
dc.identifier.uri10.18287/2412-6179-2018-42-2-312-319-
dc.identifier.urihttp://repo.ssau.ru/handle/Zhurnal-Komputernaya-optika/Segmentation-of-3D-meshes-combining-the-artificial-neural-network-classifier-and-the-spectral-clustering-68912-
dc.description.abstract3D mesh segmentation has become an essential step in many applications in 3D shape analysis. In this paper, a new segmentation method is proposed based on a learning approach using the artificial neural networks classifier and the spectral clustering for segmentation. Firstly, a training step is done using the artificial neural network trained on existing segmentation, taken from the ground truth segmentation (done by humane operators) available in the benchmark proposed by Chen et al. to extract the candidate boundaries of a given 3D-model based on a set of geometric criteria. Then, we use this resulted knowledge to construct a new connectivity of the mesh and use the spectral clustering method to segment the 3D mesh into significant parts. Our approach was evaluated using different evaluation metrics. The experiments confirm that the proposed method yields significantly good results and outperforms some of the competitive segmentation methods in the literature.ru
dc.description.sponsorshipWe would first like to thank Xiaobai Chen et al. for providing the Princeton segmentation benchmark (http://segeval.cs.princeton.edu/). We also would like to thank Liu and Hao Zhang et al. for helping us by providing the binary of the AEI and helping us to evaluate our method.ru
dc.language.isoenru
dc.publisherСамарский национальный исследовательский университет имении академика С.П. Королеваru
dc.relation.ispartofseries42/2;-
dc.subject3D shapesru
dc.subjectsegmentationru
dc.subjectartificial neural networksru
dc.subjectspectral clusteringru
dc.titleSegmentation of 3D meshes combining the artificial neural network classifier and the spectral clusteringru
dc.typeArticleru
dc.textpartEach layer is fully connected to the next, and each unit uses a sigmoid function for activation. We have used the benchmark of Chen et al. to train and test our Artificial Neural Network. First of all, we took a training set of 3D meshes got from the corpus of Chen et al. to construct the input of our ANN. For each 3D mesh, we firstly, extract the segmentation boundaries of its given ground truth segmentations, done by human...-
dc.classindex.scsti28.23.37-
dc.classindex.scsti28.23.15-
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