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Examples of Artificial Perceptions in Optical Character Recognition and Iris Recognition

机译:光学字符识别和虹膜识别中的人工看法的例子

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This paper assumes the hypothesis that human learning is perception based, and consequently, the learning process and perceptions should not be represented and investigated independently or modeled in different simulation spaces. In order to keep the analogy between the artificial and human learning, the former is assumed here as being based on the artificial perception. Hence, instead of choosing to apply or develop a Computational Theory of (human) Perceptions, we choose to mirror the human perceptions in a numeric (computational) space as artificial perceptions and to analyze the interdependence between artificial learning and artificial perception in the same numeric space, using one of the simplest tools of Artificial Intelligence and Soft Computing, namely the perceptrons. As practical applications, we choose to work around two examples: Optical Character Recognition and Iris Recognition. In both cases a simple Turing test shows that artificial perceptions of the difference between two characters and between two irides are fuzzy, whereas the corresponding human perceptions are, in fact, crisp.
机译:本文假设人类学习是基于感知的假设,因此,不应在不同的模拟空间中独立地表示和研究学习过程和感知。为了保持人为和人类学习之间的类比,前者在此被认为是基于人工感知。因此,不是选择申请或制定(人类)感知的计算理论,我们选择在数字(计算)空间中以人为观察映射人类的感知,并分析在相同数字中的人工学习和人工感知之间的相互依赖性空间,使用最简单的人工智能和软计算,即意大利人。作为实际应用,我们选择在两个示例中工作:光学字符识别和虹膜识别。在这两种情况下,一个简单的图灵测试表明,人工语对两个角色之间的差异和两个IRIDE之间的差异是模糊的,而相应的人类看法实际上是清脆的。

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