Self-awareness in Intelligent Vehicles: Experience Based Abnormality
Detection
- URL: http://arxiv.org/abs/2010.15056v1
- Date: Wed, 28 Oct 2020 16:08:54 GMT
- Title: Self-awareness in Intelligent Vehicles: Experience Based Abnormality
Detection
- Authors: Divya Kanapram, Pablo Marin-Plaza, Lucio Marcenaro, David Martin,
Arturo de la Escalera, Carlo Regazzoni
- Abstract summary: This paper introduces a novel method to detect abnormalities based on internal cross-correlation parameters of the vehicle.
It is possible to train a Dynamic Bayesian Network (DBN) model to automatically evaluate and detect when the vehicle is potentially misbehaving.
- Score: 4.721146043492144
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The evolution of Intelligent Transportation System in recent times
necessitates the development of self-driving agents: the self-awareness
consciousness. This paper aims to introduce a novel method to detect
abnormalities based on internal cross-correlation parameters of the vehicle.
Before the implementation of Machine Learning, the detection of abnormalities
were manually programmed by checking every variable and creating huge nested
conditions that are very difficult to track. Nowadays, it is possible to train
a Dynamic Bayesian Network (DBN) model to automatically evaluate and detect
when the vehicle is potentially misbehaving. In this paper, different scenarios
have been set in order to train and test a switching DBN for Perimeter
Monitoring Task using a semantic segmentation for the DBN model and Hellinger
Distance metric for abnormality measurements.
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