Feature Extraction-Based Deep Self-Organizing Map

被引:0
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作者
Mohamed Sakkari
Monia Hamdi
Hela Elmannai
Abeer AlGarni
Mourad Zaied
机构
[1] University of Gabès,RTIM: Research Team in Intelligent Machines, Department of Electric Engineering, National School of Engineers of Gabès
[2] Princess Nourah Bint Abdulrahman University,Information Technology Department, College of Computer and Information Sciences
关键词
Unsupervised learning; Feature extraction; Deep Self-Organizing Maps; Deep learning;
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暂无
中图分类号
学科分类号
摘要
We propose in this work, a new approach for feature extraction based on deep Self-Organizing Map (SOM) network, named Generalized Unsupervised Deep SOM (G-UDSOM). This work presents an enhancement of the classic unsupervised deep SOM (UDSOM) algorithm in two ways. First, we modify the UDSOM Sub-sampling module in such a way that the image reconstruction phase is applied only in the feature construction phase. Second, the modified sub-sampling module learn feature of different sizes and resolutions through different map and patch sizes, which allows building parallel learning architecture. We add compact reconstruction constraint through the SOM learning based on convolutional auto-encoder. Thus. G-UDSOM allows extracting latent representation through its internal layer, by minimizing cost function. This function is composed of two terms: the cost SOM function mean square error of reconstruction. The second objective of our extended version is to achieve reduced computation time while improving accuracy and generalization capability. Different from the earlier proposed UDSOM architectures, G-UDSOM uses parallel SOMs without any reconstruction in the hidden layers. We evaluate our proposed approach on MNIST and STL-10 datasets. Experiment results show that our proposed approach outperforms deep SOMs models in terms of classification accuracy, training time and computational complexity. Our method is also can be generalized across different dataset without any pre-trained models.
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页码:2802 / 2824
页数:22
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