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Towards Feature Learning for HMM-based Offline Handwriting Recognition

机译:面向基于HMM的离线手写识别的特征学习

摘要

Statistical modelling techniques for automatic reading systems substantially rely on the availability of compact and meaningful feature representations. State-of-the-art feature extraction for offline handwriting recognition is usually based on heuristic approaches that describe either basic geometric properties or statistical distributions of raw pixel values. Working well on average, still fundamental insights into the nature of handwriting are desired. In this paper we present a novel approach for the automatic extraction of appearance-based representations of offline handwriting data. Given the framework of deep belief networks -- Restricted Boltzmann Machines -- a two-stage method for feature learning and optimization is developed. Given two standard corpora of both Arabic and Roman handwriting data it is demonstrated across script boundaries, that automatically learned features achieve recognition results comparable to state-of-the-art handcrafted features. Given these promising results the potential of feature learning for future reading systems is discussed.
机译:用于自动阅读系统的统计建模技术基本上依赖于紧凑而有意义的特征表示的可用性。用于脱机手写识别的最新特征提取通常基于描述基本几何特性或原始像素值的统计分布的启发式方法。平均而言,如果工作良好,则仍需要对笔迹性质的基本见解。在本文中,我们提出了一种新颖的方法,用于自动提取离线手写数据的基于外观的表示形式。给定深度信念网络的框架-受限玻尔兹曼机-开发了一种用于特征学习和优化的两阶段方法。给定阿拉伯和罗马手写数据的两种标准语料库,可以跨脚本边界进行演示,自动学习的功能可实现与最新手工制作功能相当的识别结果。鉴于这些有希望的结果,讨论了特征学习在未来阅读系统中的潜力。

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