Recognition of Surfaces Based on Haptic Information
(2015)Department of Automatic Control
- Abstract
- The main topic and focus in this thesis are surface recognition. In the sensing part, the surface information is collected as feature values. There are research approaches which focus on sensing surface tactile information by using sensors with robots. However, there are some disadvantages of using sensors. From that reason, this thesis proposes getting haptic surface information without sensors at the tip of robots. To this purpose, a disturbance observer is implemented to achieve the robust acceleration control and a reaction force observer is implemented to estimate the friction force along surfaces.
In the recognition part, a pattern recognition method needs to be applied for surface recognition. There are some pattern recognition... (More) - The main topic and focus in this thesis are surface recognition. In the sensing part, the surface information is collected as feature values. There are research approaches which focus on sensing surface tactile information by using sensors with robots. However, there are some disadvantages of using sensors. From that reason, this thesis proposes getting haptic surface information without sensors at the tip of robots. To this purpose, a disturbance observer is implemented to achieve the robust acceleration control and a reaction force observer is implemented to estimate the friction force along surfaces.
In the recognition part, a pattern recognition method needs to be applied for surface recognition. There are some pattern recognition methods, where selforganizing maps (SOM) is one of the solutions and has been investigated. SOM is able to summarize high-dimensional data to low dimension with preserving the topological properties of data. SOM is also suitable for multi-class recognition. Therefore, a surface recognition using SOM is proposed in this thesis. Multi-class surface recognition is achieved by the proposed method. The validity of the proposed method was confirmed through 7 surface recognition experiments. The recognition rate was over 90% for 5 of 7 surfaces in the time domain. (Less)
Please use this url to cite or link to this publication:
http://lup.lub.lu.se/student-papers/record/5148590
- author
- Nakano, Tomohiro
- supervisor
-
- Mahdi Ghazaei LU
- Anders Robertsson LU
- Rolf Johansson LU
- organization
- year
- 2015
- type
- H3 - Professional qualifications (4 Years - )
- subject
- ISSN
- ISSN 0280-5316
- other publication id
- ISRN LUTFD2/TFRT--5957--SE
- language
- English
- id
- 5148590
- date added to LUP
- 2015-03-06 09:37:02
- date last changed
- 2015-03-06 09:37:02
@misc{5148590, abstract = {{The main topic and focus in this thesis are surface recognition. In the sensing part, the surface information is collected as feature values. There are research approaches which focus on sensing surface tactile information by using sensors with robots. However, there are some disadvantages of using sensors. From that reason, this thesis proposes getting haptic surface information without sensors at the tip of robots. To this purpose, a disturbance observer is implemented to achieve the robust acceleration control and a reaction force observer is implemented to estimate the friction force along surfaces. In the recognition part, a pattern recognition method needs to be applied for surface recognition. There are some pattern recognition methods, where selforganizing maps (SOM) is one of the solutions and has been investigated. SOM is able to summarize high-dimensional data to low dimension with preserving the topological properties of data. SOM is also suitable for multi-class recognition. Therefore, a surface recognition using SOM is proposed in this thesis. Multi-class surface recognition is achieved by the proposed method. The validity of the proposed method was confirmed through 7 surface recognition experiments. The recognition rate was over 90% for 5 of 7 surfaces in the time domain.}}, author = {{Nakano, Tomohiro}}, issn = {{ISSN 0280-5316}}, language = {{eng}}, note = {{Student Paper}}, title = {{Recognition of Surfaces Based on Haptic Information}}, year = {{2015}}, }