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Transfer and Extraction of the Style of Handwritten Letters using Deep Learning

机译:深入学习的手写字母的转移和提取

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How can we learn, transfer and extract handwriting styles using deep neural networks? This paper explores these questions using a deep conditioned autoencoder on the IRON-OFF handwriting data-set. We perform three experiments that systematically explore the quality of our style extraction procedure. First, We compare our model to handwriting benchmarks using multidimensional performance metrics. Second, we explore the quality of style transfer, i.e. how the model performs on new, unseen writers. In both experiments, we improve the metrics of state of the art methods by a large margin. Lastly, we analyze the latent space of our model, and we show that it separates consistently writing styles.
机译:我们如何使用深神经网络学习,转移和提取手写样式?本文在熨斗off手写数据集上使用深度调节的AutoEncoder探讨了这些问题。我们进行三项实验,系统探索了风格提取程序的质量。首先,我们将模型与使用多维性能指标的手写基准进行比较。其次,我们探讨了风格转移的质量,即,模型如何在新的,看不见的作家上进行。在这两个实验中,我们通过大边缘改善现有技术的状态指标。最后,我们分析了我们模型的潜在空间,我们表明它始终如一地分开了写作风格。

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