Fast Distributional Smoothing for Regularization in CTC Applied to Text Recognition

Ryohei Tanaka, Soichiro Ono, Akio Furuhata
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引用次数: 2

Abstract

Many recent text recognition studies achieved successful performance by applying a sequential-label prediction framework such as connectionist temporal classification. Meanwhile, regularization is known to be essential to avoid overfitting when training deep neural networks. Regularization techniques that allow for semi-supervised learning have a greater impact than those that do not. Among widely researched single-label regularization techniques, virtual adversarial training (VAT) performs successfully by smoothing posterior distributions around training data points. However, VAT is almost solely applied to single-label prediction tasks, not to sequential-label prediction tasks. This is because the number of possible candidates in the label sequence exponentially increases with the sequence length, making it impractical to calculate posterior distributions and the divergence between them. Investigating this problem, we have found that there is an easily computable upper bound for divergence. Here, we propose fast distributional smoothing (FDS) as a method for drastically reducing computational costs by minimizing this upper bound. FDS allows regularization at practical computational costs in both supervised and semi-supervised learning. An experiment under simple settings confirmed that upper-bound minimization decreases divergence. Experiments also show that FDS improves scene text recognition performance and enhances state-of-the-art regularization performance. Furthermore, experiments show that FDS enables efficient semi-supervised learning in sequential-label prediction tasks and that it outperforms a conventional semi-supervised method.
基于快速分布平滑的CTC正则化算法在文本识别中的应用
最近的许多文本识别研究通过应用序列标签预测框架(如连接主义时态分类)取得了成功的性能。同时,在训练深度神经网络时,正则化是避免过拟合的必要条件。允许半监督学习的正则化技术比那些不允许的有更大的影响。在广泛研究的单标签正则化技术中,虚拟对抗训练(VAT)通过平滑训练数据点周围的后验分布而获得成功。然而,增值税几乎只适用于单标签预测任务,而不适用于顺序标签预测任务。这是因为标签序列中可能的候选数随着序列长度呈指数增长,使得计算后验分布和它们之间的散度变得不切实际。研究这个问题,我们发现散度有一个容易计算的上界。在这里,我们提出快速分布平滑(FDS)作为一种通过最小化上界来大幅减少计算成本的方法。FDS允许在监督和半监督学习中以实际的计算成本进行正则化。简单设置下的实验证实,上界极小化降低了散度。实验还表明,FDS提高了场景文本识别性能,提高了最先进的正则化性能。此外,实验表明,FDS在序列标签预测任务中实现了高效的半监督学习,并且优于传统的半监督学习方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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