DriveRX: A Vision-Language Reasoning Model for Cross-Task Autonomous Driving

arXiv — cs.CVWednesday, January 14, 2026 at 5:00:00 AM
  • DriveRX has been introduced as a vision-language reasoning model aimed at enhancing cross-task autonomous driving by addressing the limitations of traditional end-to-end models, which struggle with complex scenarios due to a lack of structured reasoning. This model is part of a broader framework called AutoDriveRL, which optimizes four core tasks through a unified training approach.
  • The development of DriveRX is significant as it represents a step forward in autonomous driving technology, enabling more effective multi-stage decision-making processes. This advancement could lead to improved safety and efficiency in autonomous vehicles, which are increasingly becoming integral to modern transportation systems.
  • The introduction of DriveRX aligns with ongoing efforts in the AI field to enhance reasoning capabilities in vision-language models, reflecting a growing recognition of the need for structured approaches in complex environments. This trend is echoed in various initiatives aimed at improving model calibration, bias mitigation, and cultural safety, indicating a broader commitment to refining AI technologies for real-world applications.
— via World Pulse Now AI Editorial System

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