基于SVM的CAPTCHA识别算法优化研究

Li Wei, Xiang Li, Tingrong Cao, Quan Zhang, LiangQi Zhou, Wenli Wang
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引用次数: 3

摘要

图像验证码是当前网络应用中主要的安全验证方式。验证码的识别效率是影响网络数据爬行的一个难题,具有现实的研究意义和价值。提出了一种基于支持向量机的图像识别方法。在充分分析现有SVM识别机制流程的基础上,首先对图像进行二值化和滤波,进行字符图像预处理,然后进行特征提取,最后建立分类模型进行识别。通过对粘附、旋转等多个类别的特征进行训练和比较,证明了该方法可以获得快速准确的结果。
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Research on Optimization of CAPTCHA Recognition Algorithm Based on SVM
Image verification code is the main mode of security verification in current network applications. The identification efficiency of verification code is a difficult problem that affects network data crawling, which has realistic research significance and value. This paper proposed an SVM (Support Vector Machine)-based recognition method. On the basis of fully analyzing the existing SVM recognition mechanism process, the image is first binarized and filtered for character image preprocessing, then feature extraction, and then classification model is established for recognition. It is proved that this method can achieve fast and accurate results by training and comparing characters in many categories such as adhesion and rotation.
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