Taste recognition in E-Tongue using local discriminant preservation projection
Electronic tongue (E-Tongue), as a novel taste analysis tool, shows a promising perspective for taste recognition. In this paper, we constructed a voltammetric E-Tongue system and measured 13 different kinds of liquid samples, such as tea, wine, beverage, functional materials, etc. Owing to the nois...
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sg-ntu-dr.10356-1399112020-05-22T08:11:37Z Taste recognition in E-Tongue using local discriminant preservation projection Zhang, Lei Wang, Xuehan Huang, Guang-Bin Liu, Tao Tan, Xiaoheng School of Electrical and Electronic Engineering Engineering::Electrical and electronic engineering Electronic Tongue (E-Tongue) Extreme Learning Machine (ELM) Electronic tongue (E-Tongue), as a novel taste analysis tool, shows a promising perspective for taste recognition. In this paper, we constructed a voltammetric E-Tongue system and measured 13 different kinds of liquid samples, such as tea, wine, beverage, functional materials, etc. Owing to the noise of system and a variety of environmental conditions, the acquired E-Tongue data shows inseparable patterns. To this end, from the viewpoint of algorithm, we propose a local discriminant preservation projection (LDPP) model, an under-studied subspace learning algorithm, that concerns the local discrimination and neighborhood structure preservation. In contrast with other conventional subspace projection methods, LDPP has two merits. On one hand, with local discrimination it has a higher tolerance to abnormal data or outliers. On the other hand, it can project the data to a more separable space with local structure preservation. Further, support vector machine, extreme learning machine (ELM), and kernelized ELM (KELM) have been used as classifiers for taste recognition in E-Tongue. Experimental results demonstrate that the proposed E-Tongue is effective for multiple tastes recognition in both efficiency and effectiveness. Particularly, the proposed LDPPbased KELM classifier model achieves the best taste recognition performance of 98%. The developed benchmark data sets and codes will be released and downloaded in http://www.leizhang.tk/ tempcode.html. 2020-05-22T08:11:37Z 2020-05-22T08:11:37Z 2018 Journal Article Zhang, L., Wang, X., Huang, G.-B., Liu, T., & Tan, X. (2019). Taste recognition in E-Tongue using local discriminant preservation projection. IEEE Transactions on Cybernetics, 49(3), 947-960. doi:10.1109/TCYB.2018.2789889 2168-2267 https://hdl.handle.net/10356/139911 10.1109/TCYB.2018.2789889 29994190 2-s2.0-85040954252 3 49 947 960 en IEEE Transactions on Cybernetics © 2018 IEEE. All rights reserved. |
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Engineering::Electrical and electronic engineering Electronic Tongue (E-Tongue) Extreme Learning Machine (ELM) Zhang, Lei Wang, Xuehan Huang, Guang-Bin Liu, Tao Tan, Xiaoheng Taste recognition in E-Tongue using local discriminant preservation projection |
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Electronic tongue (E-Tongue), as a novel taste analysis tool, shows a promising perspective for taste recognition. In this paper, we constructed a voltammetric E-Tongue system and measured 13 different kinds of liquid samples, such as tea, wine, beverage, functional materials, etc. Owing to the noise of system and a variety of environmental conditions, the acquired E-Tongue data shows inseparable patterns. To this end, from the viewpoint of algorithm, we propose a local discriminant preservation projection (LDPP) model, an under-studied subspace learning algorithm, that concerns the local discrimination and neighborhood structure preservation. In contrast with other conventional subspace projection methods, LDPP has two merits. On one hand, with local discrimination it has a higher tolerance to abnormal data or outliers. On the other hand, it can project the data to a more separable space with local structure preservation. Further, support vector machine, extreme learning machine (ELM), and kernelized ELM (KELM) have been used as classifiers for taste recognition in E-Tongue. Experimental results demonstrate that the proposed E-Tongue is effective for multiple tastes recognition in both efficiency and effectiveness. Particularly, the proposed LDPPbased KELM classifier model achieves the best taste recognition performance of 98%. The developed benchmark data sets and codes will be released and downloaded in http://www.leizhang.tk/ tempcode.html. |
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School of Electrical and Electronic Engineering |
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School of Electrical and Electronic Engineering Zhang, Lei Wang, Xuehan Huang, Guang-Bin Liu, Tao Tan, Xiaoheng |
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Article |
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Zhang, Lei Wang, Xuehan Huang, Guang-Bin Liu, Tao Tan, Xiaoheng |
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Zhang, Lei |
title |
Taste recognition in E-Tongue using local discriminant preservation projection |
title_short |
Taste recognition in E-Tongue using local discriminant preservation projection |
title_full |
Taste recognition in E-Tongue using local discriminant preservation projection |
title_fullStr |
Taste recognition in E-Tongue using local discriminant preservation projection |
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Taste recognition in E-Tongue using local discriminant preservation projection |
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taste recognition in e-tongue using local discriminant preservation projection |
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2020 |
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https://hdl.handle.net/10356/139911 |
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