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An Approach to Autonomous Self-localization of a Mobile Robot in Completely Unknown Environment using Evolving Fuzzy Rule-based Classifier

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An Approach to Autonomous Self-localization of a Mobile Robot in Completely Unknown Environment using Evolving Fuzzy Rule-based Classifier. / Zhou, Xiaowei; Angelov, Plamen.
Computational Intelligence in Security and Defense Applications, 2007. CISDA 2007. IEEE Symposium on. IEEE, 2007. p. 131-138.

Research output: Contribution in Book/Report/Proceedings - With ISBN/ISSNConference contribution/Paperpeer-review

Harvard

Zhou, X & Angelov, P 2007, An Approach to Autonomous Self-localization of a Mobile Robot in Completely Unknown Environment using Evolving Fuzzy Rule-based Classifier. in Computational Intelligence in Security and Defense Applications, 2007. CISDA 2007. IEEE Symposium on. IEEE, pp. 131-138, 2007 IEEE International Conference on Computational Intelligence Applications for Defense and Security, Honolulu, Hawaii, USA, 1/04/07. https://doi.org/10.1109/CISDA.2007.368145

APA

Zhou, X., & Angelov, P. (2007). An Approach to Autonomous Self-localization of a Mobile Robot in Completely Unknown Environment using Evolving Fuzzy Rule-based Classifier. In Computational Intelligence in Security and Defense Applications, 2007. CISDA 2007. IEEE Symposium on (pp. 131-138). IEEE. https://doi.org/10.1109/CISDA.2007.368145

Vancouver

Zhou X, Angelov P. An Approach to Autonomous Self-localization of a Mobile Robot in Completely Unknown Environment using Evolving Fuzzy Rule-based Classifier. In Computational Intelligence in Security and Defense Applications, 2007. CISDA 2007. IEEE Symposium on. IEEE. 2007. p. 131-138 doi: 10.1109/CISDA.2007.368145

Author

Zhou, Xiaowei ; Angelov, Plamen. / An Approach to Autonomous Self-localization of a Mobile Robot in Completely Unknown Environment using Evolving Fuzzy Rule-based Classifier. Computational Intelligence in Security and Defense Applications, 2007. CISDA 2007. IEEE Symposium on. IEEE, 2007. pp. 131-138

Bibtex

@inproceedings{7ea8f4e129134b11b84205290902c288,
title = "An Approach to Autonomous Self-localization of a Mobile Robot in Completely Unknown Environment using Evolving Fuzzy Rule-based Classifier",
abstract = "A novel approach to visual self-localization in completely unknown environment with a fully unsupervised and computationally efficient algorithm is proposed in this paper. It is based on the recently developed evolving fuzzy classifier (eClass). The problem of self localization and landmark recognition is of extreme importance for designing efficient and flexible land-based autonomous uninhabited vehicles (AUV). The availability of global coordinates, a GPS link, and unrestricted communication is often compromised by a number of factors, such as interference, weather, and mission objectives. The ability to self-localize and recognize landmarks is vital in such cases for an AUV to survive and function effectively. The self-organizing classifier (eClass) is designed by automatic labeling and grouping the landmarks that are detected in real-time based on the image data (video stream grabbed by the camera mounted on the mobile robot, AUV). The proposed approach makes possible autonomous joint landmark detection and recognition without the use of absolute coordinates, any communication link or any pre-training. The proposed algorithm is recursive, non-iterative, one pass and thus computationally inexpensive and suitable for real-time applications. A set of new formulae for on-line data normalization of the data are introduced in the paper. Real-life tests has been carried out in outdoor environment at the Lancaster University campus using Pioneer3 DX mobile robots equipped with a pan-tilt zoom camera and an on-board PC. The results illustrate the viability and flexibility of the proposed approach. Further investigations will be directed towards teams of mobile robots (AUV) performing a task in completely unknown environment (c) IEEE Press",
author = "Xiaowei Zhou and Plamen Angelov",
year = "2007",
month = apr,
day = "2",
doi = "10.1109/CISDA.2007.368145",
language = "English",
isbn = "1-4244-0700-1",
pages = "131--138",
booktitle = "Computational Intelligence in Security and Defense Applications, 2007. CISDA 2007. IEEE Symposium on",
publisher = "IEEE",
note = "2007 IEEE International Conference on Computational Intelligence Applications for Defense and Security ; Conference date: 01-04-2007 Through 04-04-2007",

}

RIS

TY - GEN

T1 - An Approach to Autonomous Self-localization of a Mobile Robot in Completely Unknown Environment using Evolving Fuzzy Rule-based Classifier

AU - Zhou, Xiaowei

AU - Angelov, Plamen

PY - 2007/4/2

Y1 - 2007/4/2

N2 - A novel approach to visual self-localization in completely unknown environment with a fully unsupervised and computationally efficient algorithm is proposed in this paper. It is based on the recently developed evolving fuzzy classifier (eClass). The problem of self localization and landmark recognition is of extreme importance for designing efficient and flexible land-based autonomous uninhabited vehicles (AUV). The availability of global coordinates, a GPS link, and unrestricted communication is often compromised by a number of factors, such as interference, weather, and mission objectives. The ability to self-localize and recognize landmarks is vital in such cases for an AUV to survive and function effectively. The self-organizing classifier (eClass) is designed by automatic labeling and grouping the landmarks that are detected in real-time based on the image data (video stream grabbed by the camera mounted on the mobile robot, AUV). The proposed approach makes possible autonomous joint landmark detection and recognition without the use of absolute coordinates, any communication link or any pre-training. The proposed algorithm is recursive, non-iterative, one pass and thus computationally inexpensive and suitable for real-time applications. A set of new formulae for on-line data normalization of the data are introduced in the paper. Real-life tests has been carried out in outdoor environment at the Lancaster University campus using Pioneer3 DX mobile robots equipped with a pan-tilt zoom camera and an on-board PC. The results illustrate the viability and flexibility of the proposed approach. Further investigations will be directed towards teams of mobile robots (AUV) performing a task in completely unknown environment (c) IEEE Press

AB - A novel approach to visual self-localization in completely unknown environment with a fully unsupervised and computationally efficient algorithm is proposed in this paper. It is based on the recently developed evolving fuzzy classifier (eClass). The problem of self localization and landmark recognition is of extreme importance for designing efficient and flexible land-based autonomous uninhabited vehicles (AUV). The availability of global coordinates, a GPS link, and unrestricted communication is often compromised by a number of factors, such as interference, weather, and mission objectives. The ability to self-localize and recognize landmarks is vital in such cases for an AUV to survive and function effectively. The self-organizing classifier (eClass) is designed by automatic labeling and grouping the landmarks that are detected in real-time based on the image data (video stream grabbed by the camera mounted on the mobile robot, AUV). The proposed approach makes possible autonomous joint landmark detection and recognition without the use of absolute coordinates, any communication link or any pre-training. The proposed algorithm is recursive, non-iterative, one pass and thus computationally inexpensive and suitable for real-time applications. A set of new formulae for on-line data normalization of the data are introduced in the paper. Real-life tests has been carried out in outdoor environment at the Lancaster University campus using Pioneer3 DX mobile robots equipped with a pan-tilt zoom camera and an on-board PC. The results illustrate the viability and flexibility of the proposed approach. Further investigations will be directed towards teams of mobile robots (AUV) performing a task in completely unknown environment (c) IEEE Press

U2 - 10.1109/CISDA.2007.368145

DO - 10.1109/CISDA.2007.368145

M3 - Conference contribution/Paper

SN - 1-4244-0700-1

SP - 131

EP - 138

BT - Computational Intelligence in Security and Defense Applications, 2007. CISDA 2007. IEEE Symposium on

PB - IEEE

T2 - 2007 IEEE International Conference on Computational Intelligence Applications for Defense and Security

Y2 - 1 April 2007 through 4 April 2007

ER -