A New Method For Image Classification Based On Multi-Level Neural Networks

In this paper, we propose a supervised method for color image classification based on a multilevel sigmoidal neural network (MSNN) model. In this method, images are classified into five categories, i.e., "Car", "Building", "Mountain", "Farm" and "Coast&qu...

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Main Authors: Sadek, Samy, Al-Hamadi, Ayoub, Michaelis, Bernd, Sayed, Usama
Format: Text
Language:English
Published: Zenodo 2009
Subjects:
Online Access:https://dx.doi.org/10.5281/zenodo.1073502
https://zenodo.org/record/1073502
id ftdatacite:10.5281/zenodo.1073502
record_format openpolar
institution Open Polar
collection DataCite Metadata Store (German National Library of Science and Technology)
op_collection_id ftdatacite
language English
topic Image classification
multi-level neural networks
feature extraction
wavelets decomposition.
spellingShingle Image classification
multi-level neural networks
feature extraction
wavelets decomposition.
Sadek, Samy
Al-Hamadi, Ayoub
Michaelis, Bernd
Sayed, Usama
A New Method For Image Classification Based On Multi-Level Neural Networks
topic_facet Image classification
multi-level neural networks
feature extraction
wavelets decomposition.
description In this paper, we propose a supervised method for color image classification based on a multilevel sigmoidal neural network (MSNN) model. In this method, images are classified into five categories, i.e., "Car", "Building", "Mountain", "Farm" and "Coast". This classification is performed without any segmentation processes. To verify the learning capabilities of the proposed method, we compare our MSNN model with the traditional Sigmoidal Neural Network (SNN) model. Results of comparison have shown that the MSNN model performs better than the traditional SNN model in the context of training run time and classification rate. Both color moments and multi-level wavelets decomposition technique are used to extract features from images. The proposed method has been tested on a variety of real and synthetic images. : {"references": ["Goodrum, \"Image Information Retrieval: An Overview of Current\nResearch\", Special Issue on Information Science Research, vol. 3, no. 2,\n2000.", "N. O- Connor, E. Cooke, H. Le Borgne, M. Blighe, and T. Adamek,\"\nThe aceToolbox: Lowe-Level Audiovisual Feature Extraction for\nRetrieval and Classification\". Proc. of EWIMT-05, Nov. 2005.", "Deng, H. and D.A. Clausi,\"Gaussian MRF Rotation-Invariant Features\nfor SAR Sea Ice Classification,\" IEEE PAMI, 26(7): pp. 951-955, 2004.", "R. Zhao and W. I. Grosky, Bridging the Semantic Gap in Image\nRetrieval, Distributed Multimedia Databases: Techniques and\nApplications, T. K. Shih (Ed.), Idea Group Publishing, Hershey,\nPennsylvania, pp. 14-36, 2001.", "J. Luo, and A. Savakis, \"Indoor vs Outdoor Classification of Consumer\nPhotographs using Low-level and Semantic Features,\" Proc. of ICIP,\npp.745-748, 2001.", "A.K. Vailaya, Jain, and H.-J. Zhang, \"On Image Classification: City\nImages vs. Landscapes,\" Pattern Recognition Journal, vol. 31, pp 1921-\n1936, December, 1998.", "J. Z. Wang, G. Li, and G. Wiederhold, \"SIMPLIcity: Semanticssensitive\nIntegrated Matching for Picture LIbraries,\" In IEEE Trans. on\nPattern Analysis and Machine Intelligence, vol. 23, pages 947-963,\n2001.", "S. Prabhakar, H. Cheng, J.C. Handley, Z. Fan Y.W. Lin, \"Picturegraphics\nColor Image Classification,\" Proc. of ICIP, pp. 785-788, 2002.", "Hartmann and R. Lienhart,\"Automatic Classification of Images on the\nWeb,\" In Proc of SPIE Storage and Retrieval for Media Databases, pp.\n31-40, 2002.\n[10] S. W. Kuffler and J. G. Nicholls, \"From Neuron to Brain,\" (Sinauer\nAssociates, Sunderland, 1976; Mir, Moscow, 1979).\n[11] S. Bhattacharyya and P. Dutta, \"Multiscale Object Extraction with\nMUSIG and MUBET with CONSENT: A Comparative Study,\"\nProceedings of KBCS 2004, pp. 100-109, 2004.\n[12] Yu, H., Li, M., Zhang, H.-J., Feng, J., Color texture moments for\ncontent-based image retrieval, In: Internat. Conf. on Image Processing,\nvol. 3, pp. 929-932, 2002.\n[13] Der-Chiang Li and Yao-Hwei Fang, \"An algorithm to cluster data for\nefficient classification of support vector machines,\" Expert Systems with\nApplications, vol. 34, pp. 2013-2018, 2008.\n[14] R. Marmo et al. \"Textural identification of carbonate rocks by image\nprocessing and neural network: Methodology proposal and examples,\"\nComputers and Geosciences, 31, pp. 649-659, 2005."]}
format Text
author Sadek, Samy
Al-Hamadi, Ayoub
Michaelis, Bernd
Sayed, Usama
author_facet Sadek, Samy
Al-Hamadi, Ayoub
Michaelis, Bernd
Sayed, Usama
author_sort Sadek, Samy
title A New Method For Image Classification Based On Multi-Level Neural Networks
title_short A New Method For Image Classification Based On Multi-Level Neural Networks
title_full A New Method For Image Classification Based On Multi-Level Neural Networks
title_fullStr A New Method For Image Classification Based On Multi-Level Neural Networks
title_full_unstemmed A New Method For Image Classification Based On Multi-Level Neural Networks
title_sort new method for image classification based on multi-level neural networks
publisher Zenodo
publishDate 2009
url https://dx.doi.org/10.5281/zenodo.1073502
https://zenodo.org/record/1073502
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geographic Chiang
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geographic_facet Chiang
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genre Sea ice
genre_facet Sea ice
op_relation https://dx.doi.org/10.5281/zenodo.1073503
op_rights Open Access
Creative Commons Attribution 4.0
https://creativecommons.org/licenses/by/4.0
info:eu-repo/semantics/openAccess
op_rightsnorm CC-BY
op_doi https://doi.org/10.5281/zenodo.1073502
https://doi.org/10.5281/zenodo.1073503
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spelling ftdatacite:10.5281/zenodo.1073502 2023-05-15T18:19:02+02:00 A New Method For Image Classification Based On Multi-Level Neural Networks Sadek, Samy Al-Hamadi, Ayoub Michaelis, Bernd Sayed, Usama 2009 https://dx.doi.org/10.5281/zenodo.1073502 https://zenodo.org/record/1073502 en eng Zenodo https://dx.doi.org/10.5281/zenodo.1073503 Open Access Creative Commons Attribution 4.0 https://creativecommons.org/licenses/by/4.0 info:eu-repo/semantics/openAccess CC-BY Image classification multi-level neural networks feature extraction wavelets decomposition. Text Journal article article-journal ScholarlyArticle 2009 ftdatacite https://doi.org/10.5281/zenodo.1073502 https://doi.org/10.5281/zenodo.1073503 2021-11-05T12:55:41Z In this paper, we propose a supervised method for color image classification based on a multilevel sigmoidal neural network (MSNN) model. In this method, images are classified into five categories, i.e., "Car", "Building", "Mountain", "Farm" and "Coast". This classification is performed without any segmentation processes. To verify the learning capabilities of the proposed method, we compare our MSNN model with the traditional Sigmoidal Neural Network (SNN) model. Results of comparison have shown that the MSNN model performs better than the traditional SNN model in the context of training run time and classification rate. Both color moments and multi-level wavelets decomposition technique are used to extract features from images. The proposed method has been tested on a variety of real and synthetic images. : {"references": ["Goodrum, \"Image Information Retrieval: An Overview of Current\nResearch\", Special Issue on Information Science Research, vol. 3, no. 2,\n2000.", "N. O- Connor, E. Cooke, H. Le Borgne, M. Blighe, and T. Adamek,\"\nThe aceToolbox: Lowe-Level Audiovisual Feature Extraction for\nRetrieval and Classification\". Proc. of EWIMT-05, Nov. 2005.", "Deng, H. and D.A. Clausi,\"Gaussian MRF Rotation-Invariant Features\nfor SAR Sea Ice Classification,\" IEEE PAMI, 26(7): pp. 951-955, 2004.", "R. Zhao and W. I. Grosky, Bridging the Semantic Gap in Image\nRetrieval, Distributed Multimedia Databases: Techniques and\nApplications, T. K. Shih (Ed.), Idea Group Publishing, Hershey,\nPennsylvania, pp. 14-36, 2001.", "J. Luo, and A. Savakis, \"Indoor vs Outdoor Classification of Consumer\nPhotographs using Low-level and Semantic Features,\" Proc. of ICIP,\npp.745-748, 2001.", "A.K. Vailaya, Jain, and H.-J. Zhang, \"On Image Classification: City\nImages vs. Landscapes,\" Pattern Recognition Journal, vol. 31, pp 1921-\n1936, December, 1998.", "J. Z. Wang, G. Li, and G. Wiederhold, \"SIMPLIcity: Semanticssensitive\nIntegrated Matching for Picture LIbraries,\" In IEEE Trans. on\nPattern Analysis and Machine Intelligence, vol. 23, pages 947-963,\n2001.", "S. Prabhakar, H. Cheng, J.C. Handley, Z. Fan Y.W. Lin, \"Picturegraphics\nColor Image Classification,\" Proc. of ICIP, pp. 785-788, 2002.", "Hartmann and R. Lienhart,\"Automatic Classification of Images on the\nWeb,\" In Proc of SPIE Storage and Retrieval for Media Databases, pp.\n31-40, 2002.\n[10] S. W. Kuffler and J. G. Nicholls, \"From Neuron to Brain,\" (Sinauer\nAssociates, Sunderland, 1976; Mir, Moscow, 1979).\n[11] S. Bhattacharyya and P. Dutta, \"Multiscale Object Extraction with\nMUSIG and MUBET with CONSENT: A Comparative Study,\"\nProceedings of KBCS 2004, pp. 100-109, 2004.\n[12] Yu, H., Li, M., Zhang, H.-J., Feng, J., Color texture moments for\ncontent-based image retrieval, In: Internat. Conf. on Image Processing,\nvol. 3, pp. 929-932, 2002.\n[13] Der-Chiang Li and Yao-Hwei Fang, \"An algorithm to cluster data for\nefficient classification of support vector machines,\" Expert Systems with\nApplications, vol. 34, pp. 2013-2018, 2008.\n[14] R. Marmo et al. \"Textural identification of carbonate rocks by image\nprocessing and neural network: Methodology proposal and examples,\"\nComputers and Geosciences, 31, pp. 649-659, 2005."]} Text Sea ice DataCite Metadata Store (German National Library of Science and Technology) Chiang ENVELOPE(162.650,162.650,-77.967,-77.967) Fang ENVELOPE(167.217,167.217,-77.483,-77.483) Lowe ENVELOPE(-30.309,-30.309,-80.537,-80.537)