一种高效、可扩展、鲁棒手写数字识别的Saak变换方法

Yueru Chen, Zhuwei Xu, Shanshan Cai, Yujian Lang, C.-C. Jay Kuo
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引用次数: 33

摘要

本文提出了一种基于Saak变换的高效、可扩展、鲁棒的手写数字识别方法。首先,使用多阶段Saak变换提取输入图像的一系列联合空间-光谱表示。然后,将Saak系数作为特征输入到SVM分类器中进行分类任务。为了控制Saak系数的大小,我们采用有损Saak变换,该变换使用主成分分析(PCA)来选择较小的变换核集。LeNet-5等卷积神经网络(CNN)很好地解决了手写数字识别问题。我们对LeNet-5和基于Saak变换的解决方案在可扩展性和鲁棒性方面的性能以及在相当精度水平下无损和有损Saak变换的效率进行了比较研究。
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A Saak Transform Approach to Efficient, Scalable and Robust Handwritten Digits Recognition
An efficient, scalable and robust approach to the handwritten digits recognition problem based on the Saak transform is proposed in this work. First, multi-stage Saak transforms are used to extract a family of joint spatial-spectral representations of input images. Then, the Saak coefficients are used as features and fed into the SVM classifier for the classification task. In order to control the size of Saak coefficients, we adopt a lossy Saak transform that uses the principal component analysis (PCA) to select a smaller set of transform kernels. The handwritten digits recognition problem is well solved by the convolutional neural network (CNN) such as the LeNet-5. We conduct a comparative study on the performance of the LeNet-5 and the Saak-transform-based solutions in terms of scalability and robustness as well as the efficiency of lossless and lossy Saak transforms under a comparable accuracy level.
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