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Normalised Local Naïve Bayes Nearest-Neighbour Classifier for Offline Writer Identification

机译:用于离线作家识别的标准化本地朴素贝叶斯最近邻居分类器

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Writer identification and verification can be viewed as a classification problem, where each writer represents a class. We propose a classifier for offline, text-independent, and segmentation-free writer identification based on the Local Naïve Bayes Nearest-Neighbour (Local NBNN) classification. Our proposed method takes into consideration the particularity of handwriting patterns by adding a constraint to prevent the matching of irrelevant keypoints. Furthermore, a normalisation factor is proposed to cope with the prevalent problem of unbalanced data. The method has been evaluated on several public datasets of different writing systems and state-of-the-art results are shown to be improved.
机译:作家识别和验证可以看作是一个分类问题,其中每个作家代表一个类。我们基于本地朴素贝叶斯最近邻居(Local NBNN)分类,提出了一种用于离线,独立于文本且无分段的作家识别的分类器。我们提出的方法通过添加一个约束来防止不相关的关键点匹配,从而考虑了手写模式的特殊性。此外,提出了归一化因子来解决普遍存在的不平衡数据问题。该方法已经在不同书写系统的几个公共数据集上进行了评估,并且显示了最新的结果。

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