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Breaking Text-Based CAPTCHA with Sparse Convolutional Neural Networks

机译:用稀疏的卷积神经网络打破基于文本的CAPTCHA

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CAPTCHA is an automated test designed to check if the user is human. Though other approaches are explored (such as object recognition), the text-based CAPTCHA is still the main test used by many web service providers, to separate human users from bots. In this paper, a sparse Convolutional Neural Network (CNN) to break text-based CAPTCHA is proposed. Unlike previous CNN solutions, which mainly use fine-tuning and transfer learning from pre-trained models, the proposed framework does not require a pre-trained model. The spar-sity constraint deactivates connections between neurons in the CNN fully connected layers that leads to improved accuracy compared to the baseline approach. Visualization of the spatial distribution of neuron activity shed light on the internal learning and the effect of the sparsity constraint.
机译:CAPTCHA是一个自动化测试,旨在检查用户是否是人类的。虽然探索了其他方法(如对象识别),但基于文本的CAPTCHA仍然是许多Web服务提供商使用的主要测试,以将人类用户与机器人分开。在本文中,提出了一种破坏基于文本的CAPTCHA的稀疏卷积神经网络(CNN)。与以前的CNN解决方案不同,主要使用从预先训练的模型中使用微调和转移学习,所提出的框架不需要预先训练的模型。翼梁 - Sity约束在CNN完全连接的层中取消了神经元之间的连接,与基线方法相比提高了精度。神经元活性棚空间分布对内部学习的空间分布及稀疏限制的影响。

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