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Towards Information Theoretic Measurement of Fidelity and Diversity in Handwriting Synthesis

机译:朝着手写合成中的保真度和多样性的信息理论测量

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One of the basic goals in handwriting synthesis is to produce samples with both sufficient fidelity (legibility) and diversity. It is not easy in general to automatically evaluate these two qualities, however. In this paper, we show how a relatively simple neural network-based generative model can be used to synthesize online handwritten digits that look quite natural. This autoregressive model contains a parameter which directly controls the fidelity and diversity of generated samples, and must be tuned in order to make a tradeoff between them. We show that optimizing this parameter on the basis of likelihood generally leads to poor results. Then, we propose another objective function for fidelity-diversity tradeoff which is derived from an information theoretic measure, and is approximated via sampling. The proposed approach has been experimented on English and Farsi digits, and as it was observed, the obtained handwriting samples are mostly legible and fairly diverse (representing multiple styles). Also, the plausibility of the proposed performance measure has been compared with log-likelihood and Maximum Mean Discrepancy.
机译:手写合成中的基本目标之一是产生具有足够保真度(易读性)和多样性的样品。然而,通常不容易自动评估这两个品质。在本文中,我们展示了如何使用相对简单的神经网络的生成模型来综合看起来非常自然的在线手写数字。此自动增加模型包含一个参数,它直接控制所生成的样本的保真度和多样性,并且必须进行调整以便在它们之间进行权衡。我们表明,在可能的基础上优化此参数通常会导致效果不佳。然后,我们提出了另一种目标函数,用于富裕的多样性权衡,其来自信息理论测量,并且通过采样近似。拟议的方法已经在英语和波斯语数字上进行了实验,并且在观察到的情况下,所获得的手写样本主要是清晰且相当多样的(代表多种风格)。此外,拟议的绩效措施的合理性已经与逻辑可能性和最大均值差异进行了比较。

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