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Automated paper impurities evaluation using feature representations based on ADMM sparse codes

机译:使用基于ADMM稀疏代码的特征表示自动纸质杂质评估

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摘要

To automatic detect and characterize paper impurities with computer vision, we present a novel two parts evaluation procedure with feature representations using Alternating Direction Method of Multipliers (ADMM) sparse codes. The method is based on an offline training step to obtain sparse coefficients and codebooks via learning extracted features with ADMM optimization, followed by an online detection step to use linear SVM classifier to assess defective paper samples from non-defective ones. Our approach bridges the gap between paper impurities evaluation and sparse feature representations, taking advantages of existing ADMM algorithms to handle sparse codes problem. We compare different feature descriptors and sparse code methods to implement the procedure and experimentally validate it on a dataset of 11 paper classes. Experiment results show that the proposed method is competitive and effective in terms of evaluation accuracy and speed.
机译:通过计算机视觉自动检测和表征纸质杂质,我们介绍了一种新颖的两个零件评估程序,具有使用乘数(ADMM)稀疏代码的交替方向方法的特征表示。 该方法基于离线训练步骤,通过使用ADMM优化的学习提取的特征来获得稀疏系数和码本,然后是在线检测步骤来使用线性SVM分类器来评估来自非缺陷的纸张样本。 我们的方法桥接纸质杂质评估和稀疏特征表示之间的差距,采用现有的ADMM算法处理稀疏代码问题。 我们比较不同的特征描述符和稀疏代码方法来实现过程,并在11个纸张类的数据集上进行实验验证。 实验结果表明,在评价准确和速度方面,该方法具有竞争力且有效。

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