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Classification of Surimi Gel Strength Patterns Using Backpropagation Neural Network and Principal Component Analysis

机译:利用反向化神经网络的Surimi凝胶强度模式分类和主成分分析

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This paper proposes two practically and efficiently supervised and unsupervised classifications for surimi gel strength patterns. An supervised learning method, backpropagation neural network with three layers of 17-34-4 neurons for each later, is used. An unsupervised classification method consists of the data dimensionality reduction step via the PCA algorithm and classification step using correlation coefficient similarity measure. In the similarity measure step, each surimi gel strength pattern is compared with the surimi eigen-gel patterns, produced by the PCA step. In this paper, we consider a datum pattern as a datum dimension. The training data sets (12 patterns or 12 data dimensions) of surimi gel strength are collected from 4 experiments having different fixed setting temperature at 35oC, 40oC, 45oC, and 50oC, respectively. Testing data sets (48 patterns) are including original training set and their added Gaussian noise with 1, 3 and 5 points, respectively. From the experiments, two proposed methods can classify all testing data sets into its proper class.
机译:本文提出了两种实际上有效地监督的Surimi Gel强度模式的监督和无监督分类。使用监督学习方法,使用具有三层17-34-4神经元的反向衰减神经网络。无监督的分类方法包括通过PCA算法和使用相关系数相似度测量的分类步骤的数据维度降低步骤。在相似度测量步骤中,将每个Surimi凝胶强度模式与由PCA步骤产生的Surimi Eigen-凝胶模式进行比较。在本文中,我们将基准模式视为基准维度。从35℃,40oC,45oC和50oC的不同固定设定温度的4个实验中收集来自SURIMI凝胶强度的训练数据集(12个模式或12个数据尺寸)。测试数据集(48个模式)包括原始训练集,分别增加了1,3和5点的高斯噪声。从实验中,两个提出的方法可以将所有测试数据集分类为其适当的类。

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