离线手写写作者识别的结构学习

U. Porwal, Chetan Ramaiah, Arti Shivram, V. Govindaraju
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引用次数: 8

摘要

足够的标记数据的可用性是任何学习算法性能的关键。然而,在文档分析中,获取大量的标记数据是困难的。标记样本的稀缺性通常是影响文档分析算法性能的主要瓶颈。然而,未标记的数据样本大量存在。我们提出了一个半监督框架,用于离线手写文档的作者识别,该框架利用隐藏在未标记样本中的信息。作者识别是一个复杂的任务,我们的框架试图用结构学习来模拟笔迹的细微差别。该框架通过将主任务分解为若干子任务,选择最佳假设空间,对学习问题的复杂性进行建模。所有与子任务相关的假设空间将通过检索与所有候选假设空间高度对应的公共最优子结构来用于最佳模型选择。我们使用公开可用的IAM数据集来显示我们方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Structural Learning for Writer Identification in Offline Handwriting
Availability of sufficient labeled data is key to the performance of any learning algorithm. However, in document analysis obtaining the large amount of labeled data is difficult. Scarcity of labeled samples is often a main bottleneck in the performance of algorithms for document analysis. However, unlabeled data samples are present in abundance. We propose a semi supervised framework for writer identification for offline handwritten documents that leverages the information hidden in the unlabeled samples. The task of writer identification is a complex one and our framework tries to model the nuances of handwriting with the use of structural learning. This framework models the complexity of learning problem by selecting the best hypotheses space by breaking the main task into several sub tasks. All the hypotheses spaces pertaining to the sub tasks will be used for the best model selection by retrieving a common optimal sub structure that has high correspondence with all of the candidate hypotheses spaces. We have used publically available IAM data set to show the efficacy of our method.
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