LENVIZ: A High-Resolution Low-Exposure Night Vision Benchmark Dataset

arXiv — cs.CVThursday, December 11, 2025 at 5:00:00 AM
  • The LENVIZ dataset has been introduced as a high-resolution, low-exposure benchmark for night vision and low-light image enhancement, comprising over 230,000 frames captured in diverse indoor and outdoor environments. This dataset aims to address the challenges of enhancing images taken in low-illumination conditions, which is critical for applications like surveillance and autonomous driving.
  • The development of the LENVIZ dataset is significant as it provides researchers and developers with a comprehensive resource to improve algorithms for low-light image processing. By offering high-quality ground truth data, it facilitates advancements in technologies that rely on accurate image enhancement in challenging lighting scenarios.
  • This initiative reflects a broader trend in artificial intelligence and computer vision, where the focus is increasingly on improving image quality under adverse conditions. The integration of various methodologies, such as multi-scale networks and dynamic sensing systems, highlights the ongoing efforts to enhance visual perception technologies, particularly for nighttime applications.
— via World Pulse Now AI Editorial System

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