Object recognition based on flexible tactile sensor glove and deep learning

In recent years, the development of human-machine interaction systems has increasingly relied on haptic sensing technology, which enables machines to sense and respond to physical stimuli. The flexible tactile sensor glove has attracted attention for its potential applications in robotics, healthcar...

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Main Author: Zhang, Jiaqi
Other Authors: Leong Wei Lin
Format: Thesis-Master by Coursework
Language:English
Published: Nanyang Technological University 2024
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Online Access:https://hdl.handle.net/10356/181328
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-1813282024-11-25T08:31:41Z Object recognition based on flexible tactile sensor glove and deep learning Zhang, Jiaqi Leong Wei Lin School of Electrical and Electronic Engineering wlleong@ntu.edu.sg Engineering In recent years, the development of human-machine interaction systems has increasingly relied on haptic sensing technology, which enables machines to sense and respond to physical stimuli. The flexible tactile sensor glove has attracted attention for its potential applications in robotics, healthcare and assistive technology. These systems offer a new approach to object recognition by capturing tactile data, which can be processed using deep learning models to improve recognition accuracy. This dissertation investigates the design and realization of a flexible tactile glove system for object identification. The experiment involves the fabrication of twenty flexible pressure sensors, which are subsequently embedded into a glove capturing tactile data from eight distinct objects. The data collected from the pressure sensors are pre-processed and utilized to train deep learning models, including LSTM, 1D-CNN, 2D-CNN, 2DCNN-LSTM, and MLP for objects classification. This study focuses on how the configuration of sensors and the selection of network models significantly influence improvements in recognition performance. Experimental results indicate that the 2D-CNN model achieved the highest accuracy, reaching 95.6%. This is attributed to the model's ability to generate superior generalization, making it particularly effective in handling the spatial texture information within tactile data. Similar to previous studies demonstrating the viability of sensor gloves and hybrid neural networks for object identification, this work highlights the issues of model overfitting and emphasizes the need for larger datasets to achieve better generalization. These findings contribute to advancements in human-computer interaction, robotic, and assistive technologies, paving the way for future research into a more refined and adjustable system. Master's degree 2024-11-25T08:31:40Z 2024-11-25T08:31:40Z 2024 Thesis-Master by Coursework Zhang, J. (2024). Object recognition based on flexible tactile sensor glove and deep learning. Master's thesis, Nanyang Technological University, Singapore. https://hdl.handle.net/10356/181328 https://hdl.handle.net/10356/181328 en application/pdf Nanyang Technological University
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering
spellingShingle Engineering
Zhang, Jiaqi
Object recognition based on flexible tactile sensor glove and deep learning
description In recent years, the development of human-machine interaction systems has increasingly relied on haptic sensing technology, which enables machines to sense and respond to physical stimuli. The flexible tactile sensor glove has attracted attention for its potential applications in robotics, healthcare and assistive technology. These systems offer a new approach to object recognition by capturing tactile data, which can be processed using deep learning models to improve recognition accuracy. This dissertation investigates the design and realization of a flexible tactile glove system for object identification. The experiment involves the fabrication of twenty flexible pressure sensors, which are subsequently embedded into a glove capturing tactile data from eight distinct objects. The data collected from the pressure sensors are pre-processed and utilized to train deep learning models, including LSTM, 1D-CNN, 2D-CNN, 2DCNN-LSTM, and MLP for objects classification. This study focuses on how the configuration of sensors and the selection of network models significantly influence improvements in recognition performance. Experimental results indicate that the 2D-CNN model achieved the highest accuracy, reaching 95.6%. This is attributed to the model's ability to generate superior generalization, making it particularly effective in handling the spatial texture information within tactile data. Similar to previous studies demonstrating the viability of sensor gloves and hybrid neural networks for object identification, this work highlights the issues of model overfitting and emphasizes the need for larger datasets to achieve better generalization. These findings contribute to advancements in human-computer interaction, robotic, and assistive technologies, paving the way for future research into a more refined and adjustable system.
author2 Leong Wei Lin
author_facet Leong Wei Lin
Zhang, Jiaqi
format Thesis-Master by Coursework
author Zhang, Jiaqi
author_sort Zhang, Jiaqi
title Object recognition based on flexible tactile sensor glove and deep learning
title_short Object recognition based on flexible tactile sensor glove and deep learning
title_full Object recognition based on flexible tactile sensor glove and deep learning
title_fullStr Object recognition based on flexible tactile sensor glove and deep learning
title_full_unstemmed Object recognition based on flexible tactile sensor glove and deep learning
title_sort object recognition based on flexible tactile sensor glove and deep learning
publisher Nanyang Technological University
publishDate 2024
url https://hdl.handle.net/10356/181328
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