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首页> 外文期刊>Physica, D. Nonlinear phenomena >SYNERGETIC LEARNING FOR UNSUPERVISED TEXTURE CLASSIFICATION TASKS
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SYNERGETIC LEARNING FOR UNSUPERVISED TEXTURE CLASSIFICATION TASKS

机译:协同学习无监督的纹理分类任务

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摘要

Synergetic computers form a class of self-organized algorithms. Due to their close similarity to nonlinear self-organized systems in physics and chemistry they are potential candidates for a new sort of image processing hardware. We will study the performance of an unsupervised synergetic learning algorithm with classification problems on both artifical and real texture data and will show that unsupervised synergetic learning can be successfully used for unsupervised pattern classification. [References: 23]
机译:协同计算机形成一类自组织算法。由于它们在物理和化学上与非线性自组织系统非常相似,因此它们是新型图像处理硬件的潜在候选者。我们将在人工和真实纹理数据上研究带有分类问题的无监督协同学习算法的性能,并表明无监督协同学习可以成功地用于无监督模式分类。 [参考:23]

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