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Building a Compact MQDF Classifier by Sparse Coding and Vector Quantization Technique

机译:通过稀疏编码和矢量量化技术构建紧凑型MQDF分类器

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The modified quadratic discriminant function (MQDF) is a very popular handwritten Chinese character classifier thanks to its high performance with low computational complexity. However, it suffers from high memory requirement for the storage of its parameters. This paper proposes a compact MQDF classifier developed by integrating sparse coding and vector quantization (VQ) technique. To be specific, we use sparse coding to represent the parameters of MQDF in sparsity first, and then employ the VQ technique to further compress the sparse coding. The proposed method is evaluated by comparing the performance with three models, i.e., the original MQDF classifier, the compact MQDF classifier using the VQ technique, and the compact MQDF classifier using sparse coding. The effectiveness of our proposed approach has been confirmed and demonstrated by comparative experiments on ICDAR2013 competition dataset.
机译:改进的二次判别函数(MQDF)是一种非常受欢迎的手写汉字分类器,这是由于其高性能和低计算复杂度。然而,它遭受用于其参数存储的高存储需求。本文提出了一种通过集成稀疏编码和矢量量化(VQ)技术开发的紧凑型MQDF分类器。具体而言,我们首先使用稀疏编码来稀疏地表示MQDF的参数,然后使用VQ技术进一步压缩稀疏编码。通过将性能与三种模型(即原始MQDF分类器,使用VQ技术的紧凑型MQDF分类器和使用稀疏编码的紧凑型MQDF分类器)的性能进行比较来评估所提出的方法。我们提出的方法的有效性已经通过ICDAR2013竞争数据集上的对比实验得到了证实和证明。

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