CCC: Color Classified Colorization
Mrityunjoy Gain, Avi Deb Raha, Rameswar Debnath

TL;DR
This paper introduces a novel colorization method that formulates the task as a multinomial classification problem with class balancing, achieving superior results on multiple datasets through a new evaluation metric and edge refinement techniques.
Contribution
The paper's main contribution is the formulation of colorization as a class-based classification problem with a novel class balancing strategy and a new edge refinement method using SAM.
Findings
Outperforms state-of-the-art models in visualization and CNR metrics.
Effectively balances major and minor classes for better color diversity.
Achieves satisfactory results in multiple quantitative metrics.
Abstract
Automatic colorization of gray images with objects of different colors and sizes is challenging due to inter- and intra-object color variation and the small area of the main objects due to extensive backgrounds. The learning process often favors dominant features, resulting in a biased model. In this paper, we formulate the colorization problem into a multinomial classification problem and then apply a weighted function to classes. We propose a set of formulas to transform color values into color classes and vice versa. Class optimization and balancing feature distribution are the keys for good performance. Observing class appearance on various extremely large-scale real-time images in practice, we propose 215 color classes for our colorization task. During training, we propose a class-weighted function based on true class appearance in each batch to ensure proper color saturation of…
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Taxonomy
TopicsPigment Synthesis and Properties
MethodsSparse Evolutionary Training · Colorization · Segment Anything Model
