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Visual Quality Recognition of Nonwovens using Wavelet Texture Analysis and Robust Bayesian Neural Network

机译:基于小波纹理分析和鲁棒贝叶斯神经网络的非织造布视觉质量识别

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Abstract An approach to recognize the visual quality of nonwovens by combining wavelet texture analysis, Bayesian neural network and outlier detection is proposed in this paper. Nonwoven images (625) of five different grades, 125 of each grade, are decomposed at four levels with wavelet base sym6 and two energy-based features, norm-1 L1 and norm-2 L2, are calculated from wavelet coefficients of each high frequency subband to train and test Bayesian neural network. To detect the outlier in the training set, scaled outlier probability of training set and outlier probability of each sample are introduced. When the nonwoven images are decomposed at level 3, with 500 samples to train the Bayesian neural network, the average recognition accuracy of test set is 98.4%. Experimental results on the 625 nonwoven images indicate that the energy-based features are expressive and powerful in characterizing texture of nonwoven images and the robust Bayesian neural network has excellent recognition performance.
机译:摘要提出了一种结合小波纹理分析,贝叶斯神经网络和离群值检测的非织造布视觉质量识别方法。五个不同等级的非织造图像(625),每个等级分别为125个,以小波基sym6分解为四个级别,并根据每个高频的小波系数计算两个基于能量的特征norm-1 L1和norm-2 L2子带来训练和测试贝叶斯神经网络。为了检测训练集中的离群值,引入了缩放的训练集离群值概率和每个样本的离群值概率。当非织造图像在3级分解时,用500个样本训练贝叶斯神经网络,则测试集的平均识别精度为98.4%。在625张非织造图像上的实验结果表明,基于能量的特征在表征非织造图像的纹理方面表现力强,并且强大的贝叶斯神经网络具有出色的识别性能。

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