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Highly-accurate fast candidate reduction method for Japanese/Chinese character recognition

机译:高精度的日语/汉字识别快速候选词约简方法

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A high-speed pattern matching algorithm is required for developing real-time character recognition applications especially for mobile devices with limited computational performances. Multilingual scene text recognition has recently become more important for mobile and wearable devices. Since Japanese and Chinese have thousands of characters, not only the accuracy but also the speed of classifiers are crucial. We formalized the candidate reduction technique for the Nearest Neighbor (NN) search with high-dimensional feature vectors, and proposed a tree-based clustering method to realize a fast handwritten character recognition. It works fine with ETL9B dataset consisting of Japanese handwritten characters and HCL2000 Chinese handwritten character dataset. In this paper, we propose an improved candidate reduction method based on our former one. The experimental results show that our method is 60.48% faster and more accurate than the former method.
机译:需要一种高速模式匹配算法,用于开发实时字符识别应用,尤其是具有有限的计算性能的移动设备。多语种场景文本识别最近对移动和可穿戴设备变得更加重要。自日语和中国人有数千个字符以来,不仅是准确性,而且还是分类器的速度至关重要。我们将候选邻居(NN)搜索的候选减少技术正式化,并提出了一种基于树的聚类方法来实现快速手写的字符识别。它适用于ETL9B数据集,由日语手写字符和HCL2000 Chandwritte字符数据集组成。在本文中,我们提出了一种基于我们前一体的候选候选方法。实验结果表明,我们的方法比以前的方法快60.48%。

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