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Learning Deep Representations for Word Spotting under Weak Supervision

机译:在弱势监督下学习精彩斑点的深刻表示

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Convolutional Neural Networks have made their mark in various fields of computer vision in recent years. They have achieved state-of-the-art performance in the field of document analysis as well. However, CNNs require a large amount of annotated training data and, hence, great manual effort. In our approach, we introduce a method to drastically reduce the manual annotation effort while retaining the high performance of a CNN for word spotting in handwritten documents. The model is learned with weak supervision using a combination of synthetically generated training data and a small subset of the training partition of the handwritten data set. We show that the network achieves results highly competitive to the state-of-the-art in word spotting with shorter training times and a fraction of the annotation effort.
机译:卷积神经网络近年来在电脑视野的各种领域作了标志。它们也在文档分析领域取得了最先进的性能。但是,CNNS需要大量的注释培训数据,因此,巨大的手动努力。在我们的方法中,我们介绍了一种彻底减少了手动注释工作的方法,同时保留了手写文档中的单词斑点的CNN的高性能。使用综合生成的训练数据的组合和手写数据集的训练分区的小子集,通过弱监督学习模型。我们表明,网络达到了最先进的培训时间和注释努力的一小部分,达到了最先进的结果。

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