On noise reduction for handwritten writer identification

Karl S. Ni, P. Callier, B. Hatch, Jonathan Mastarone, James Cline
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引用次数: 0

Abstract

Academic work in identifying writers of handwritten documents has previously focused on clean benchmark datasets: plain white documents with uniform writing instruments. Solutions on this type of data have achieved hit-in-top-10 accuracy rates reaching upwards of 98%. Unfortunately, transferring competitive techniques to handwritten documents with noise is nontrivial, where performance drops by two-thirds. Noise in the context of handwritten documents can manifest itself in many ways, from irrelevant structured additions, e.g., graph paper, to unstructured partial occlusion, e.g. coffee stains and stamps. Additional issues that confound algorithmic writer identification solutions include the use of different writing implement, age, and writing state of mind. The proposed work explores training denoising neural networks to aid in identifying authors of handwritten documents. Our algorithms are trained on existing clean datasets artificially augmented with noise, and we evaluate them on a commissioned dataset, which features a diverse but balanced set of writers, writing implements, and writing substrates (incorporating various types of noise). Using the proposed denoising algorithm, we exceed the state of the art in writer identification of noisy handwritten documents by a significant margin.
手写体识别中的降噪研究
识别手写文档作者的学术工作以前集中在干净的基准数据集上:带有统一书写工具的纯白色文档。这类数据的解决方案在前10名的命中率达到98%以上。不幸的是,将竞争性技术转移到有噪声的手写文档中并非易事,性能会下降三分之二。手写文档中的噪声可以以多种方式表现出来,从不相关的结构化添加(例如,坐标纸)到非结构化的局部遮挡(例如,咖啡渍和邮票)。混淆算法作者识别解决方案的其他问题包括使用不同的写作工具、年龄和写作状态。提出的工作探索训练去噪神经网络,以帮助识别手写文件的作者。我们的算法是在现有的干净数据集上进行训练的,人工增强了噪声,我们在一个委托的数据集上对它们进行评估,该数据集具有多样化但平衡的作家、写作工具和写作基质(包含各种类型的噪声)。使用所提出的去噪算法,我们在嘈杂的手写文档的作者识别方面超越了目前的技术水平。
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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