首页> 外文学位 >The human face recognition problem: A solution based on third-order synthetic neural networks and isodensity analysis.
【24h】

The human face recognition problem: A solution based on third-order synthetic neural networks and isodensity analysis.

机译:人脸识别问题:基于三阶合成神经网络和等度分析的解决方案。

获取原文
获取原文并翻译 | 示例

摘要

Third-order synthetic neural networks are applied to the recognition of isodensity facial images extracted from digitized grayscale facial images. A key property of neural networks is their ability to recognize invariances and extract essential parameters from complex high-dimensional data. In pattern recognition an input image must be recognized regardless of its position, size, and angular orientation. In order to achieve this, the neural network needs to learn the relationships between the input pixels. Pattern recognition requires the nonlinear subdivision of the pattern space into subsets representing the objects to be identified. Single-layer neural networks can only perform linear discrimination. However, multilayer first-order networks and high-order neural networks can both achieve this. The most significant advantage of a higher-order net over a traditional multilayer perceptron is that invariances to 2-dimensional geometric transformations can be incorporated into the network and need not be learned through prolonged training with an extensive family of exemplars. It is shown that a third-order network can be used to achieve translation-, scale-, and rotation-invariant recognition with a significant reduction in training time over other neural net paradigms such as the multilayer perceptron. A model based on an enhanced version of the Widrow-Hoff training algorithm and a new momentum paradigm are introduced and applied to the complex problem of human face recognition under varying facial expressions. Arguments for the use of isodensity information in the recognition algorithm are put forth and it is shown how the technique of coarse-coding is applied to reduce the memory required for computer simulations. The combination of isodensity information and neural networks for image recognition is described and its merits over other image recognition methods are explained. It is shown that isodensity information coupled with the use of an "adaptive threshold strategy" (ATS) yields a system that is relatively impervious to image contrast noise. The new momentum paradigm produces much faster convergence rates than ordinary momentum and renders the network behaviour independent of its training parameters over a broad range of parameter values.
机译:三阶合成神经网络被应用于识别从数字化灰度面部图像中提取的等渗面部图像。神经网络的关键特性是它们能够识别不变性并从复杂的高维数据中提取基本参数。在模式识别中,无论其位置,大小和角度方向如何,都必须识别输入图像。为了实现这一点,神经网络需要学习输入像素之间的关系。模式识别需要将模式空间非线性细分为代表要识别对象的子集。单层神经网络只能执行线性判别。但是,多层一阶网络和高阶神经网络都可以实现此目的。与传统的多层感知器相比,高阶网络的最显着优势是可以将二维几何变换的不变性合并到网络中,而无需通过广泛的示例家族的长期培训来学习。结果表明,与其他神经网络范例(例如多层感知器)相比,三阶网络可用于实现平移,缩放和旋转不变的识别,并且训练时间显着减少。引入了基于Widrow-Hoff训练算法的增强版本的模型和新的动量范式,并将其应用于复杂的面部表情下人脸识别的复杂问题。提出了在识别算法中使用等价度信息的论点,并说明了如何应用粗编码技术来减少计算机仿真所需的内存。描述了等密度信息和神经网络相结合的图像识别方法,并说明了其优于其他图像识别方法的优点。示出了等渗度信息与“自适应阈值策略”(ATS)的使用相结合产生了相对于图像对比度噪声不可渗透的系统。新的动量范例产生的收敛速度比普通动量快得多,并且使网络行为在广泛的参数值范围内独立于其训练参数。

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