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首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >A comparison of experimental results with an evolution strategy and competitive neural networks for near real-time color quantization of image sequences
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A comparison of experimental results with an evolution strategy and competitive neural networks for near real-time color quantization of image sequences

机译:实验结果与进化策略和竞争神经网络的比较,用于图像序列的近实时色彩量化

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摘要

Color quantization of image sequences is a case of non-stationary clustering problem. The approach we adopt to deal with this kind of problems is to propose adaptive algorithms to compute the cluster representatives. We have studied the application of Competitive Neural Networks and Evolution Strategies to the one-pass adaptive solution of this problem. One-pass adaptation is imposed by the near real-time constraint that we try to achieve. In this paper we propose a simple and effective evolution strategy for this task. Two kinds of competitive neural networks are also applied. Experimental results show that the proposed evolution strategy can produce results comparable to that of competitive neural networks. [References: 24]
机译:图像序列的颜色量化是一种非平稳聚类问题。我们采用的解决此类问题的方法是提出自适应算法来计算集群代表。我们已经研究了竞争神经网络和进化策略在单次自适应解决方案中的应用。我们试图达到的接近实时的约束条件会强加一遍自适应。在本文中,我们针对此任务提出了一种简单有效的进化策略。还应用了两种竞争性神经网络。实验结果表明,提出的进化策略可以产生与竞争神经网络相当的结果。 [参考:24]

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