首页> 外文会议>International Conference on Microelectronics, Signals and Systems >Convolutional And Residual Networks For Iris Recognition
【24h】

Convolutional And Residual Networks For Iris Recognition

机译:虹膜识别的卷积和剩余网络

获取原文

摘要

Biometrics is essential for authenticating an individual. The existing methods of authentication includes fingerprint scanning, speech recognition, face recognition and iris recognition. The iris recognition is regarded as the most accurate. There are many textural and geometrical elements in a human eye that can be used to uniquely identify an iris pattern. An iris pattern is stable and it is not possible to replicate it. The human iris being a very potential and reliable tool for human identification has the ability to identify individuals with a high degree of assurance. The extraction of good features is the most significant step in an iris recognition system. Initially the iris is augmented. Then, the features can be extracted using a mixed architecture that includes Convolutional Neural Networks(CNN) and residual neural networks. The CNN learns image feature representations automatically. Every neuron accepts input from a small portion of the preceding layer. Weights are made of a set of learnable filters produced randomly and are locally shared. The feature map is the outcome of every filter convolved through the entire image. The pooling layer implements the down sampling operation and decrement the spatial size. The max pooling operation obtains the maximum value from each of a cluster of neurons at the previous layer. The fully connected layer use the extracted features in the preceding layer to do the classification task. The nodes belonging to this layer accepts input from all the nodes in the previous layer. The classifier is needed after feature extraction to find the corresponding label for every test image. The residual network consists of many residual blocks. The presence of an identity mapping distinguishes it from a plain block or convolution block. It has the ability to use knowledge acquired in previous layers. The framework gains advantages from both architectures, i.e., fast convergence from the convolution network and the non-saturation feat
机译:生物识别性对于验证个人至关重要。现有的认证方法包括指纹扫描,语音识别,面部识别和虹膜识别。虹膜识别被认为是最准确的。人眼中有许多纹理和几何元素,可用于唯一地识别虹膜模式。虹膜模式是稳定的,无法复制它。人类逆镜是人类识别的一个非常潜力和可靠的工具,具有能够识别具有高度保证的个人。良好特征的提取是虹膜识别系统中最重要的步骤。最初,虹膜是增强的。然后,可以使用包括卷积神经网络(CNN)和残差神经网络的混合架构来提取该特征。 CNN自动学习图像特征表示。每个神经元接受从前一层的一小部分的输入。重量由一组随机生产的可学习过滤器组成,并在本地共享。特征映射是通过整个图像卷积的每个过滤器的结果。池层实现了下降采样操作并减少空间尺寸。最大池操作从前一层处的每个神经元群中的每个群体获得最大值。完全连接的层使用前面图层中的提取特征进行分类任务。属于此图层的节点接受从上一层中的所有节点的输入。特征提取后需要分类器,以查找每个测试图像的相应标签。残余网络由许多残差组成。身份映射的存在将其与普通块或卷积块区分开来。它有能力在以前层中使用所获取的知识。该框架从卷积网络和非饱和度壮举中获得了架构,即快速收敛的优势

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号