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Characterization and Synthesis of Objects Using Growing Neural Gas

机译:使用生长神经气体的对象的特征和合成

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In this article it is made a study of the characterization capacity and synthesis of objects of the self-organizing neural models. These networks, by means of their competitive learning, try to preserve the topology of an input space. This capacity is being used for the representation of objects and their movement with topology preserving networks. We characterized the object to represent by means of the obtained maps and kept information solely on the coordinates and the colour from the neurons. From this information it is made the synthesis of the original images, applying mathematical morphology and simple filters on the information which it is had.
机译:在本文中,它逐一研究了自组织神经模型的对象的表征能力和合成。通过竞争的学习,这些网络尝试保留输入空间的拓扑。这种容量用于对象的表示及其与拓扑保存网络的移动。我们的特征在于通过所获得的地图来表示的目的,并仅在坐标上保持信息和来自神经元的颜色。根据此信息,它是对原始图像的合成,在其信息上应用数学形态和简单过滤器。

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