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Image Classification System Based on Cortical Representations and Unsupervised Neural Network Learning

机译:基于皮层表示和无监督神经网络学习的图像分类系统

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A preprocessor based on a computational model of simple cells in the mammalian primary visual cortex is combined with a self-organising artificial neural network classifier. After learning with a sequence of input images, the output units of the system turn out to correspond to classes of input images and this correspondence follows closely human perception. In particular, groups of output units which are selective for images of human faces emerge. In this respect the output units mimic the behaviour of face selective cells that have been found in the inferior temporal cortex of primates. The system is capable of memorising image patterns, building autonomously its own internal representations, and correctly classifying new patterns without using any a priory model of the visual world.
机译:基于哺乳动物初级视觉皮层中简单细胞计算模型的预处理器与自组织人工神经网络分类器结合在一起。在学习了一系列输入图像之后,系统的输出单元将显示为对应于输入图像的类别,并且这种对应关系密切遵循人类的感知。特别是出现了对人脸图像具有选择性的输出单元组。在这方面,输出单元模仿在灵长类的下颞叶皮质中发现的面部选择细胞的行为。该系统能够记住图像模式,自动建立自己的内部表示,并正确分类新模式,而无需使用任何视觉世界的先验模型。

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