Tactile identification of textures using machine learning/ deep learning
In the recent years, Artificial Intelligence technology has grown exponentially, especially in sub-areas such as Machine Learning and Deep Learning. However, many of its applications rely on image acquisition techniques to obtain datasets. This project seeks to establish a method to identify a...
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其他作者: | |
格式: | Final Year Project |
語言: | English |
出版: |
Nanyang Technological University
2022
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主題: | |
在線閱讀: | https://hdl.handle.net/10356/157614 |
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總結: | In the recent years, Artificial Intelligence technology has grown exponentially, especially
in sub-areas such as Machine Learning and Deep Learning. However, many of its
applications rely on image acquisition techniques to obtain datasets. This project seeks to
establish a method to identify an object, based on its haptic properties, and using Machine
Learning and/or Deep Learning techniques.
In this project, different materials are tested across a consistent laboratory setup by
applying the same amount of force over time through the use of a robotic arm in a
laboratory setup. The pressure received on each material is recorded as a dataset. The
collected datasets are then fed into a coded program containing a Machine Learning/
Deep Learning algorithm, where the algorithm learns the characteristics of each labelled
dataset and establishes a trained model based on the set of material and algorithm.
Thereafter, the unseen dataset of a material can be tested on the newly trained Machine
Learning/ Deep Learning model, to predict and identify the material as a result.
This report will cover on the considerations behind the project, the documentation of
experimental processes and parameters, and provide an analysis and conclusion for the
above. |
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