On explainability of tactile data representation for robots
The ability of texture classification is highly desired for robots. Current machine learning models working on texture classification tasks, despite having high accuracy, are inherently limited in interpretability. Therefore, modifications for better explainability are expected. In this work, we...
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2021
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sg-ntu-dr.10356-1502092023-07-07T18:16:56Z On explainability of tactile data representation for robots Tian, Tian Lin Zhiping School of Electrical and Electronic Engineering EZPLin@ntu.edu.sg Engineering::Electrical and electronic engineering The ability of texture classification is highly desired for robots. Current machine learning models working on texture classification tasks, despite having high accuracy, are inherently limited in interpretability. Therefore, modifications for better explainability are expected. In this work, we propose an explainable and efficient representation learning method. Texture property, stiffness and roughness characteristics specifically, as two crucial aspects when humans distinguish among different materials, are collected in a low-cost manner and infused to bootstrap the representation learning process in order to achieve better performance. In particular, two dedicated neurons in the representation vector are assigned to learn stiffness and roughness. By leveraging on these properties with physical notion in the latent space, the proposed method improves the classification accuracy. By testing on degrading the number of training samples and length of latent vector, we demonstrate that our method is able to retain performance under adverse condition. In general, the proposed representation learning method provides improvements in texture classification accuracy and efficiency as well as the interpretability of the latent representation. Bachelor of Engineering (Electrical and Electronic Engineering) 2021-06-12T13:49:14Z 2021-06-12T13:49:14Z 2021 Final Year Project (FYP) Tian, T. (2021). On explainability of tactile data representation for robots. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/150209 https://hdl.handle.net/10356/150209 en application/pdf Nanyang Technological University |
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Engineering::Electrical and electronic engineering Tian, Tian On explainability of tactile data representation for robots |
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The ability of texture classification is highly desired for robots. Current machine learning models working on texture classification tasks, despite having high accuracy, are inherently limited in interpretability. Therefore, modifications for better explainability are expected.
In this work, we propose an explainable and efficient representation learning method. Texture property, stiffness and roughness characteristics specifically, as two crucial aspects when humans distinguish among different materials, are collected in a low-cost manner and infused to bootstrap the representation learning process in order to achieve better performance. In particular, two dedicated neurons in the representation vector are assigned to learn stiffness and roughness. By leveraging on these properties with physical notion in the latent space, the proposed method improves the classification accuracy. By testing on degrading the number of training samples and length of latent vector, we demonstrate that our method is able to retain performance under adverse condition. In general, the proposed representation learning method provides improvements in texture classification accuracy and efficiency as well as the interpretability of the latent representation. |
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Lin Zhiping |
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Lin Zhiping Tian, Tian |
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Final Year Project |
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Tian, Tian |
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Tian, Tian |
title |
On explainability of tactile data representation for robots |
title_short |
On explainability of tactile data representation for robots |
title_full |
On explainability of tactile data representation for robots |
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On explainability of tactile data representation for robots |
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On explainability of tactile data representation for robots |
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on explainability of tactile data representation for robots |
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Nanyang Technological University |
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2021 |
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https://hdl.handle.net/10356/150209 |
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