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An Efficient Arabic HMM System Based on Convolutional Features Learning

机译:基于卷积特征学习的高效阿拉伯肝化系统

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Published works recently indicate that the generic features extracted from the convolutional neural networks are very powerful. This paper shows that CNN feature can be used with a HMM system [1] for Arabic handwritten word recognition, to yield classification results that outperform the handcrafted features. These features are usually based on heuristic approaches that describe either basic geometric properties or statistical distributions of raw pixel values. The CNN features based HMM is shown satisfactory recognition accuracy on the well-known IFN/ENIT database and outperformed some other prominent existing methods.
机译:公布作品最近表示从卷积神经网络中提取的通用功能非常强大。本文表明,CNN特征可以与阿拉伯语手写词识别的HMM系统[1]一起使用,以产生优于手工特征的分类结果。这些功能通常基于描述原始几何属性的启发式方法或原始像素值的统计分布。基于CNN特征的HMM在众所周知的IFN / ENIT数据库上显示了令人满意的识别准确性,并且优于其他一些突出的现有方法。

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