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Writer Verification using CNN Feature Extraction

机译:使用CNN特征提取进行作家验证

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We propose an end-to-end learning method based on statistical features extracted on set-of-samples level as a step toward solving the writer verification problem which is about deciding whether two handwriting sources are identical given handwriting samples from the two sources. The set-of-samples features are extracted on top of single sample features. Single sample features are traditionally learned using sample-to-sample comparison similarity learning. In this paper, we learn it as a sub-module of an end-to-end two-sets-of-samples comparison similarity learning. We compare human-engineered (GSC features) single sample features and automatically learned features using convolutional neural networks (CNN) and find the latter performs better with abundant training data and data augmentation. The statistical features on sets of samples capture both inner-writer variabilities and intra-writer variabilities. Experiments are conducted on frequently occurring words and digraphs such as "and" and "th" from around 1500 writers. We perform experiments on pre-training using sample-to-sample similarity learning and end-to-end fine-tuning. The results show that two-sets-of-samples comparison gives much better accuracy than sample-to-sample comparison. In addition, the end-to-end training based on parametric statistical features gives better accuracy than standard distribution comparison tests such as the K-S test based on distance space.
机译:我们提出了一种基于在样本集级别上提取的统计特征的端到端学习方法,以解决书写者验证问题,这是在给定来自两个来源的笔迹样本的情况下确定两个笔迹来源是否相同的步骤。样本集功能是在单个样本功能之上提取的。传统上,使用样本间比较相似性学习来学习单个样本特征。在本文中,我们将其作为端到端两样本比较比较学习的子模块进行学习。我们使用卷积神经网络(CNN)比较了人为工程(GSC特征)的单个样本特征和自动学习的特征,并发现后者在大量训练数据和数据扩充下的性能更好。样本集上的统计特征同时捕获内部写入者变异和内部写入者变异。实验是针对大约1500位作家中经常出现的单词和二字图(例如“ and”和“ th”)进行的。我们使用样本间相似性学习和端到端微调对预训练进行实验。结果表明,两组样本的比较比样本间的比较提供了更好的准确性。此外,基于参量统计特征的端到端训练比标准分布比较测试(例如基于距离空间的K-S测试)具有更高的准确性。

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