Knowledge Integration Strategies in Autonomous Vehicle Prediction and Planning: A Comprehensive Survey
- URL: http://arxiv.org/abs/2502.10477v1
- Date: Thu, 13 Feb 2025 19:32:41 GMT
- Title: Knowledge Integration Strategies in Autonomous Vehicle Prediction and Planning: A Comprehensive Survey
- Authors: Kumar Manas, Adrian Paschke,
- Abstract summary: This survey examines the integration of knowledge-based approaches into autonomous driving systems.
We systematically review methodologies for incorporating domain knowledge, traffic rules, and commonsense reasoning into these systems.
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- Abstract: This comprehensive survey examines the integration of knowledge-based approaches into autonomous driving systems, with a focus on trajectory prediction and planning. We systematically review methodologies for incorporating domain knowledge, traffic rules, and commonsense reasoning into these systems, spanning purely symbolic representations to hybrid neuro-symbolic architectures. In particular, we analyze recent advancements in formal logic and differential logic programming, reinforcement learning frameworks, and emerging techniques that leverage large foundation models and diffusion models for knowledge representation. Organized under a unified literature survey section, our discussion synthesizes the state-of-the-art into a high-level overview, supported by a detailed comparative table that maps key works to their respective methodological categories. This survey not only highlights current trends -- including the growing emphasis on interpretable AI, formal verification in safety-critical systems, and the increased use of generative models in prediction and planning -- but also outlines the challenges and opportunities for developing robust, knowledge-enhanced autonomous driving systems.
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