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Uniform Color Spaces Clustering in an Unsupervised Manner

机译:均匀的颜色空间以无监督的方式聚类

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Color quantization is a critical task, frequently involved in image processing that reduces the number of distinct colors used in an image while retaining as much of the original representation capabilities. The key aspect here is to find the optimal palette and evaluate against unprocessed target images. The purpose of this paper is to compare the effectiveness of three well known unsupervised vector quantization algorithms (Neural Gas, Growing Neural Gas and Instantaneous Topological Map) in the field of color abstraction. Evaluation data for L*a*b* and L*u*v* uniform color spaces and a number of quality indices, exhibiting the performance in terms of overall quality, are presented.
机译:颜色量化是一种关键任务,通常涉及图像处理,该图像处理减少了图像中使用的不同颜色的数量,同时保持原始表示能力。这里的关键方面是找到最佳调色板并评估未处理的目标图像。本文的目的是比较三种众所周知的无人监督向量量化算法(神经气体,生长神经气体和瞬时拓扑图)在彩色抽象领域的有效性。提出了L * A * B *和L * v *均匀颜色空间和许多质量指标的评估数据,展示了在整体质量方面表现出性能。

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