NDST: Neural Driving Style Transfer for Human-Like Vision-Based Autonomous Driving
Donghyun Kim, Aws Khalil, Haewoon Nam, Jaerock Kwon

TL;DR
This paper introduces NDST, a neural style transfer method for autonomous vehicles that personalizes driving styles to improve user comfort without compromising safety.
Contribution
The paper presents a novel Neural Driving Style Transfer approach that personalizes AV driving behavior by integrating a self-adapting style transfer module into existing models.
Findings
NDST successfully transfers driving styles between different behaviors.
The approach maintains safety standards while enhancing personalization.
Validation with two contrasting styles demonstrates effectiveness.
Abstract
Autonomous Vehicles (AV) and Advanced Driver Assistant Systems (ADAS) prioritize safety over comfort. The intertwining factors of safety and comfort emerge as pivotal elements in ensuring the effectiveness of Autonomous Driving (AD). Users often experience discomfort when AV or ADAS drive the vehicle on their behalf. Providing a personalized human-like AD experience, tailored to match users' unique driving styles while adhering to safety prerequisites, presents a significant opportunity to boost the acceptance of AVs. This paper proposes a novel approach, Neural Driving Style Transfer (NDST), inspired by Neural Style Transfer (NST), to address this issue. NDST integrates a Personalized Block (PB) into the conventional Baseline Driving Model (BDM), allowing for the transfer of a user's unique driving style while adhering to safety parameters. The PB serves as a self-configuring system,…
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Taxonomy
TopicsVideo Surveillance and Tracking Methods · Visual Attention and Saliency Detection · Advanced Neural Network Applications
