神经网络在人体皮肤生物物理阻抗表征中的应用

S. Ribar, V. Mitić, G. Lazovic
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引用次数: 1

摘要

人工神经网络基本上是执行输入-输出映射的结构。这种映射模拟了生物神经网络中的信号处理。生物神经网络的基本元素是神经元。神经元接收来自其他神经元或环境的输入信号,对其进行处理,并生成表示网络中另一个神经元的输入的输出。神经元可以改变它们对输入信号的敏感性。每个神经元都有一个简单的规则来处理输入信号。生物神经网络具有通过许多并行连接处理信号的特性(大规模并行处理)。将这些并联连接中所有神经元的活动相加,表示整个网络的输出。生物神经网络的主要特征是神经元灵敏度的变化会导致整个网络的操作发生变化。这被称为适应,与生物体的学习过程有关。本文使用一组人工神经网络对人体皮肤生物物理阻抗数据进行分类。
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Neural Networks Application on Human Skin Biophysical Impedance Characterizations
Artificial neural networks (ANNs) are basically the structures that perform input–output mapping. This mapping mimics the signal processing in biological neural networks. The basic element of biological neural network is a neuron. Neurons receive input signals from other neurons or the environment, process them, and generate their output which represents the input to another neuron of the network. Neurons can change their sensitivity to input signals. Each neuron has a simple rule to process an input signal. Biological neural networks have the property that signals are processed through many parallel connections (massively parallel processing). The activity of all neurons in these parallel connections is summed and represents the output of the whole network. The main feature of biological neural networks is that changes in the sensitivity of the neurons lead to changes in the operation of the entire network. This is called adaptation and is correlated with the learning process of living organisms. In this paper, a set of artificial neural networks are used for classifying the human skin biophysical impedance data.
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