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Active Transfer Learning for Persian Offline Signature Verification

机译:主动离线学习,用于波斯语脱机签名验证

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Offline Signature Verification (OSV) remains a challenging pattern recognition task, especially in the presence of skilled forgeries that are not available during the training. This challenge is aggravated when there are small labeled training data available but with large intra-personal variations. In this study, we address this issue by employing an active learning approach, which selects the most informative instances to label and therefore reduces the human labeling effort significantly. Our proposed OSV includes three steps: feature learning, active learning, and final verification. We benefit from transfer learning using a pre-trained CNN for feature learning. We also propose SVM-based active learning for each user to separate his genuine signatures from the random forgeries. We finally used the SVMs to verify the authenticity of the questioned signature. We examined our proposed active transfer learning method on UTSig: A Persian offline signature dataset. We achieved near 13% improvement compared to the random selection of instances. Our results also showed 1% improvement over the state-of-the-art method in which a fully supervised setting with five more labeled instances per user was used.
机译:脱机签名验证(OSV)仍然是具有挑战性的模式识别任务,尤其是在存在训练期间无法获得的熟练伪造的情况下。当可用的标签训练数据少但人际差异大时,这一挑战就更加严峻。在这项研究中,我们通过采用主动学习方法来解决此问题,该方法选择信息最丰富的实例进行标记,从而显着减少了人工标记的工作量。我们建议的OSV包括三个步骤:特征学习,主动学习和最终验证。我们受益于使用预训练的CNN进行特征学习的转移学习。我们还建议为每个用户提供基于SVM的主动​​学习,以将其真实签名与随机伪造分开。最后,我们使用SVM来验证所质疑签名的真实性。我们在UTSig上研究了我们提出的主动转移学习方法:波斯脱机签名数据集。与实例的随机选择相比,我们实现了近13%的改进。我们的结果还显示,与使用每位用户另外五个标记实例的完全受监督设置的最新方法相比,该方法提高了1%。

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