Conditional Latent Block Model: a Multivariate Time Series Clustering Approach for Autonomous Driving Validation
Etienne Goffinet, Anthony Coutant, Mustapha Lebbah, Hanane Azzag and, Lo\"ic Giraldi

TL;DR
This paper introduces FunCLBM, a novel multivariate time series co-clustering model tailored for autonomous driving validation, enabling feature selection and scenario interpretation in high-dimensional simulation data.
Contribution
It extends the Functional Latent Block Model to incorporate dependency structures, providing a new approach for structured feature selection and clustering in high-dimensional time series.
Findings
Effective on simulated data
Proven on real Renault datasets
Enhances scenario interpretability
Abstract
Autonomous driving systems validation remains one of the biggest challenges car manufacturers must tackle in order to provide safe driverless cars. The high complexity stems from several factors: the multiplicity of vehicles, embedded systems, use cases, and the very high required level of reliability for the driving system to be at least as safe as a human driver. In order to circumvent these issues, large scale simulations reproducing this huge variety of physical conditions are intensively used to test driverless cars. Therefore, the validation step produces a massive amount of data, including many time-indexed ones, to be processed. In this context, building a structure in the feature space is mandatory to interpret the various scenarios. In this work, we propose a new co-clustering approach adapted to high-dimensional time series analysis, that extends the standard model-based…
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Taxonomy
TopicsTime Series Analysis and Forecasting · Anomaly Detection Techniques and Applications · Fermentation and Sensory Analysis
MethodsFeature Selection
