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A novel method for offline handwriting-based writer identification

机译:一种基于脱机手写作家识别的新方法

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Handwriting-based writer identification is a hot research topic in the pattern recognition field. Nowadays, online handwriting-based writer identification is steadily growing toward its maturity. On the contrary, offline handwriting-based writer identification still remains as a challenging problem because writing features only can be extracted from the handwriting image in this situation. As a result, plenty of dynamic writing information, which is very valuable for writer identification, is lost. At present, 2D Gabor filter method is widely acknowledged as a good method for offline handwriting identification, however it still suffers from some inherent disadvantages, such as the high computational cost. In this paper, we present a novel wavelet-based GGD method to replace the traditional 2D Gabor filters. Shown in our experiments, this novel method not only achieves better experiment results but also greatly reduces the elapsed time on calculation.
机译:基于手写的作家识别是模式识别领域的热门研究主题。如今,基于网上手写的作者识别稳定地朝着其成熟度达成。相反,基于离线手写的作者识别仍然是一个具有挑战性的问题,因为只能在这种情况下从手写图像中提取写作特征。结果,大量的动态写入信息,这对作家识别非常有价值,丢失。目前,2D Gabor滤波器方法被广泛地确认为离线手写识别的好方法,但它仍然存在一些固有的缺点,例如高计算成本。在本文中,我们介绍了一种基于小波的GGD方法来取代传统的2D Gabor滤波器。在我们的实验中显示,这种新方法不仅达到了更好的实验结果,而且大大降低了计算的经过时间。

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