Classifiers for decoding patterns in the response of an artificial retina

H. Teodorescu, M. Hulea
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引用次数: 3

Abstract

We present a neural classifier able to reliably determine the correlation between elementary image patterns and the characteristics of the chaotic regime of an artificial retina based on nonlinear dynamics. While the classifier is a typical neural one, it has the role of completing the neural retina with the equivalent of the upper layers of neurons in the nervous system of mammals. Without this classification stage, the proper use of the retina is imperfect, hence the significance of reporting on it. The performance of the classifier is discussed in relation to the application requirements. This paper represents a preliminary, abstracted version of a paper to be published in a journal.
人工视网膜反应解码模式的分类器
我们提出了一种基于非线性动力学的神经分类器,能够可靠地确定基本图像模式与人工视网膜混沌状态特征之间的相关性。虽然分类器是一种典型的神经分类器,但它的作用相当于哺乳动物神经系统的上层神经元来完成神经视网膜。没有这个分类阶段,视网膜的正确使用是不完善的,因此报道它的意义。根据应用需求讨论了分类器的性能。这篇论文代表了即将发表在期刊上的论文的初步摘要版本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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