Automatic Clustering for Unsupervised Risk Diagnosis of Vehicle Driving for Smart Road
Xiupeng Shi, Yiik Diew Wong, Chen Chai, Michael Zhi-Feng Li, Tianyi, Chen, Zeng Zeng

TL;DR
This paper introduces Autocluster, an unsupervised clustering framework that automatically optimizes risk feature extraction, algorithm selection, and hyperparameters for vehicle risk diagnosis in smart roads, addressing ground truth scarcity.
Contribution
It presents a domain-specific auto-optimizable clustering pipeline integrating feature selection, quality evaluation, and hyperparameter tuning for vehicle risk assessment.
Findings
Autocluster reliably detects multiple risk exposures in vehicle data.
It effectively handles imbalanced clustering without ground truth.
The method improves risk diagnosis accuracy in smart road scenarios.
Abstract
Early risk diagnosis and driving anomaly detection from vehicle stream are of great benefits in a range of advanced solutions towards Smart Road and crash prevention, although there are intrinsic challenges, especially lack of ground truth, definition of multiple risk exposures. This study proposes a domain-specific automatic clustering (termed Autocluster) to self-learn the optimal models for unsupervised risk assessment, which integrates key steps of risk clustering into an auto-optimisable pipeline, including feature and algorithm selection, hyperparameter auto-tuning. Firstly, based on surrogate conflict measures, indicator-guided feature extraction is conducted to construct temporal-spatial and kinematical risk features. Then we develop an elimination-based model reliance importance (EMRI) method to unsupervised-select the useful features. Secondly, we propose balanced Silhouette…
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Taxonomy
TopicsTraffic Prediction and Management Techniques · Traffic and Road Safety · Autonomous Vehicle Technology and Safety
