LED: Light Enhanced Depth Estimation at Night

arXiv — cs.CVWednesday, November 19, 2025 at 5:00:00 AM
  • The introduction of Light Enhanced Depth (LED) represents a significant advancement in nighttime depth estimation for autonomous driving, addressing the limitations of existing models that rely on daytime data and costly LiDAR systems. LED utilizes high
  • This development is crucial for enhancing the safety and reliability of autonomous vehicles, as accurate depth perception is essential for navigation in challenging nighttime conditions. By improving depth estimation, LED could facilitate safer autonomous driving experiences.
  • The broader implications of this technology resonate with ongoing discussions in the field of AI and autonomous systems, particularly regarding the integration of cost
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