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Feature Set Evaluation for Offline Handwriting Recognition Systems: Application to the Recurrent Neural Network Model

机译:离线手写识别系统的特征集评估:在递归神经网络模型中的应用

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摘要

The performance of handwriting recognition systems is dependent on the features extracted from the word image. A large body of features exists in the literature, but no method has yet been proposed to identify the most promising of these, other than a straightforward comparison based on the recognition rate. In this paper, we propose a framework for feature set evaluation based on a collaborative setting. We use a weighted vote combination of recurrent neural network (RNN) classifiers, each trained with a particular feature set. This combination is modeled in a probabilistic framework as a mixture model and two methods for weight estimation are described. The main contribution of this paper is to quantify the importance of feature sets through the combination weights, which reflect their strength and complementarity. We chose the RNN classifier because of its state-of-the-art performance. Also, we provide the first feature set benchmark for this classifier. We evaluated several feature sets on the IFN/ENIT and RIMES databases of Arabic and Latin script, respectively. The resulting combination model is competitive with state-of-the-art systems.
机译:手写识别系统的性能取决于从单词图像中提取的特征。文献中存在大量特征,但是除了基于识别率的直接比较之外,尚未提出任何方法来识别其中最有希望的特征。在本文中,我们提出了基于协作设置的特征集评估框架。我们使用递归神经网络(RNN)分类器的加权投票组合,每个分类器都经过特定的特征集训练。在概率框架中将此组合建模为混合模型,并描述了两种用于权重估计的方法。本文的主要贡献是通过组合权重量化特征集的重要性,这些组合权重反映了它们的强度和互补性。我们选择RNN分类器是因为它具有最先进的性能。此外,我们为此分类器提供了第一个功能集基准。我们分别在阿拉伯和拉丁文字的IFN / ENIT和RIMES数据库上评估了几个功能集。最终的组合模型与最先进的系统竞争。

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