GDFlow: Anomaly Detection with NCDE-based Normalizing Flow for Advanced Driver Assistance System
Kangjun Lee, Minha Kim, Youngho Jun, Simon S. Woo

TL;DR
GDFlow is a novel anomaly detection model for ADAS that uses NCDE-based normalizing flow to model continuous driving patterns, effectively identifying anomalies in limited, noisy, real-world datasets.
Contribution
The paper introduces GDFlow, combining NCDE and normalizing flow for improved anomaly detection in ADAS with unlabelled, limited data, outperforming existing methods.
Findings
Achieved state-of-the-art results on real EV driving data.
Outperformed six baseline methods across multiple datasets.
Demonstrated superior inference efficiency.
Abstract
For electric vehicles, the Adaptive Cruise Control (ACC) in Advanced Driver Assistance Systems (ADAS) is designed to assist braking based on driving conditions, road inclines, predefined deceleration strengths, and user braking patterns. However, the driving data collected during the development of ADAS are generally limited and lack diversity. This deficiency leads to late or aggressive braking for different users. Crucially, it is necessary to effectively identify anomalies, such as unexpected or inconsistent braking patterns in ADAS, especially given the challenge of working with unlabelled, limited, and noisy datasets from real-world electric vehicles. In order to tackle the aforementioned challenges in ADAS, we propose Graph Neural Controlled Differential Equation Normalizing Flow (GDFlow), a model that leverages Normalizing Flow (NF) with Neural Controlled Differential Equations…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Network Security and Intrusion Detection · Traffic Prediction and Management Techniques
