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Batch Neural Gas with Deterministic Initialization for Color Quantization

机译:批量神经气体具有多种颜色量化的确定性初始化

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Color quantization is an important operation with many applications in graphics and image processing. Clustering methods based on the competitive learning paradigm, in particular self-organizing maps, have been extensively applied to this problem. In this paper, we investigate the performance of the batch neural gas algorithm as a color quantizer. In contrast to self-organizing maps, this competitive learning algorithm does not impose a fixed topology and is insensitive to initialization. Experiments on publicly available test images demonstrate that, when initialized by a deterministic preclustering method, the batch neural gas algorithm outperforms some of the most popular quantizers in the literature.
机译:颜色量化是图形和图像处理中许多应用的重要操作。基于竞争学习范式的聚类方法,特别是自组织地图,已广泛应用于此问题。在本文中,我们研究了批量神经气体算法作为颜色量化器的性能。与自组织地图相比,这种竞争学习算法不会强加固定拓扑,对初始化不敏感。在公开的测试图像上的实验表明,当通过确定性的预格料方法初始化时,批量神经气体算法优于文献中的一些最受欢迎的量化器。

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