Hierarchical Self Organizing Map for novelty detection using mobile robot with robust sensor

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Abstract

This paper presents a novelty detection method based on Self Organizing Map neural network using a mobile robot. Based on hierarchical neural network, the network is divided into three networks; position, orientation and sensor measurement network. A simulation was done to demonstrate and validate the proposed method using MobileSim. Three cases of abnormal events; new, missing and shifted objects are employed for performance evaluation. The result of detection was then filtered for false positive detection. The result shows that the inspection produced less than 2% false positive detection at high sensitivity settings. © Published under licence by IOP Publishing Ltd.

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Sha’abani, M. N. A. H., Miskon, M. F., & Sakidin, H. (2013). Hierarchical Self Organizing Map for novelty detection using mobile robot with robust sensor. In IOP Conference Series: Materials Science and Engineering (Vol. 53). https://doi.org/10.1088/1757-899X/53/1/012018

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