整合端到端和模块化驾驶方法,实现自动驾驶中的在线拐角检测

Gemb Kaljavesi, Xiyan Su, Frank Diermeyer
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引用次数: 0

摘要

在线拐角情况检测对于确保自动驾驶车辆的安全至关重要。目前的自动驾驶方法可分为模块化方法和端到端方法。为了充分利用这两种方法的优势,我们提出了一种在线拐角检测方法,将端到端方法集成到模块化系统中。模块化系统接管主要驾驶任务,端到端网络作为辅助任务并行运行,然后利用系统之间的分歧进行拐角检测。我们在一辆真实车辆上实施了这种方法,并对其进行了定性评估。我们的结果表明,以卓越的态势感知能力而著称的端到端网络作为辅助驾驶系统,能够有效地促进转弯检测。这些研究结果表明,这种方法具有提高自动驾驶汽车安全性的潜力。
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Integrating End-to-End and Modular Driving Approaches for Online Corner Case Detection in Autonomous Driving
Online corner case detection is crucial for ensuring safety in autonomous driving vehicles. Current autonomous driving approaches can be categorized into modular approaches and end-to-end approaches. To leverage the advantages of both, we propose a method for online corner case detection that integrates an end-to-end approach into a modular system. The modular system takes over the primary driving task and the end-to-end network runs in parallel as a secondary one, the disagreement between the systems is then used for corner case detection. We implement this method on a real vehicle and evaluate it qualitatively. Our results demonstrate that end-to-end networks, known for their superior situational awareness, as secondary driving systems, can effectively contribute to corner case detection. These findings suggest that such an approach holds potential for enhancing the safety of autonomous vehicles.
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