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OpenCV_face_detector
- This zip file contains source code and windows executables for carrying out face detection on a gray scale image. The code implements Viola-Jones adaboosted algorithm for face detection by providing a mex implementation of OpenCV s face detector. Ins
Face-Detection
- 基于Adaboost级联分类的人脸和人眼检测,其中的三个xml是Adaboost分类器参数-Adaboost cascade based on the human face and eye detection, three of which are Adaboost classifier parameters xml
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- 射频识别(Radio Frequency Identification, RFID)技术的快速发展,使RFID中间件已经成为业界关注的 焦点。初步探讨了RF ID中间件中事件规则管理的内容,并提出一种灵活的RFID事件规则管理框架,全面介绍 了RFID事件编码、模式过滤、目标事件识别以及业务规则定义四个环节的内容,重点阐述了一种基于XML语言 的业务规则定义方法及其执行引擎的底层实现,从而为构建更加具有个性化和扩展能力的RFID应用奠定了基 础。-RFID (Radio Freq
facedetect
- Face recognition haar training xml file
FaceDetection
- FaceDetection是一个静态人脸检测程序,此外本程序需要导入一个分类器文件haarcascade_frontalface_alt.xml,该文件在OpenCV中提供,请读者将该文件复制到程序同一目录下,程序即可正确运行。-FaceDetection is a static face detection program, in addition to the program needs to import a classifier file haarcascade_frontalface_
HaarViewer
- 基于opencv1.0与mfc,显示haar特征,打开一个haar xml文件,就可以以图像方式,直观的查看里面的haar特征了。-Based on opencv1.0 with mfc display the haar characteristics, open a haar xml file, image, intuitive view inside haar features.
FaceMatch
- 这是基于OpenCv的xml分类器做的一个人脸匹配项目-This is based on the OpenCv xml classifier to do a face matches
QQValidationCodeRecognition
- 字符验证识别练习,可进行字符拆分,比如验证码、车牌号、身份证号等字符的识别与拆分,使用了比较多的外部类库,比如AForge.Controls.dll、AForge.Genetic.dll、AForge.MachineLearning.dll等,并配合有XML文件供参考-Character Verification recognition exercises, can be split characters, such as the verification code, license plate
Face
- FaceDetection是一个静态人脸检测程序,注意FaceDetection需要OpenCV提供的库支持,因此请首先到相关网站上下载并安装OpenCV,此外本程序需要导入一个分类器文件haarcascade_frontalface_alt.xml,该文件在OpenCV中提供,请读者将该文件复制到程序同一目录下,程序即可正确运行。-FaceDetection is a static face detection process, the attention required FaceDetec
CNN.tar
- 卷积神经网路 包括了MLP层,conv层,pooling层,RBM层,LRN层,采用xml配置文件设置参数,实现训练识别-Convolution neural network, including the MLP layer, conv layer, pooling layer, RBM layer, LRN layer, using xml configuration file to set parameters to achieve recognition training