LoGoColor: Local-Global 3D Colorization for 360{\deg} Scenes

arXiv — cs.CVThursday, December 11, 2025 at 5:00:00 AM
  • LoGoColor has been introduced as a novel pipeline for 3D colorization, specifically designed to enhance the visualization of complex 360-degree scenes. This approach addresses the limitations of existing methods that rely on 2D image colorization models, which often produce oversimplified results due to color averaging during training. By generating a new set of consistently colorized training views, LoGoColor aims to preserve color diversity and ensure multi-view consistency.
  • The development of LoGoColor is significant as it represents a step forward in the fields of robotics and medical imaging, where accurate and visually appealing 3D models are crucial. The ability to maintain color consistency across multiple views can improve the effectiveness of 3D visualizations, making them more useful for applications such as robotic navigation and medical diagnostics.
  • This advancement in 3D colorization aligns with broader trends in artificial intelligence and computer vision, where there is a growing emphasis on enhancing the quality of visual outputs. The integration of multispectral imaging and novel generative models highlights the ongoing efforts to refine color accuracy and depth estimation in various applications, reflecting a collective push towards more sophisticated and reliable visual technologies.
— via World Pulse Now AI Editorial System

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