<?xml version="1.0"?>
<!--
Stump-based 20x20 gentle adaboost frontal face detector.
This detector uses tree of stage classifiers instead of a cascade
Created by Rainer Lienhart.
////////////////////////////////////////////////////////////////////////////////////////
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For Open Source Computer Vision Library
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<cascade type_id="opencv-cascade-classifier"><stageType>BOOST</stageType>
<featureType>HAAR</featureType>
<height>20</height>
<width>20</width>
<stageParams>
<maxWeakCount>406</maxWeakCount></stageParams>
<featureParams>
<maxCatCount>0</maxCatCount></featureParams>
<stageNum>47</stageNum>
<stages>
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opencv xml分类器
共20个文件
xml:20个
需积分: 0 0 下载量 168 浏览量
2024-05-03
10:14:04
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Opencv自带训练好的人脸检测模型,存储在sources/data/haarcascades文件夹和sources/data/lbpcascades文件夹下。 其中几个.xml文件如下: 人脸检测器(默认):haarcascade_frontalface_default.xml 人脸检测器(快速Harr):haarcascade_frontalface_alt2.xml 人脸检测器(侧视):haarcascade_profileface.xml 眼部检测器(左眼):haarcascade_lefteye_2splits.xml 眼部检测器(右眼):haarcascade_righteye_2splits.xml 嘴部检测器:haarcascade_mcs_mouth.xml 鼻子检测器:haarcascade_mcs_nose.xml 身体检测器:haarcascade_fullbody.xml 人脸检测器(快速LBP):lbpcascade_frontalface.xml
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OpenCV_xml.zip (20个子文件)
OpenCV_xml
haarcascade_mcs_mouth.xml 490KB
haarcascade_profileface.xml 809KB
haarcascade_smile.xml 184KB
haarcascade_frontalface_alt.xml 661KB
haarcascade_russian_plate_number.xml 74KB
haarcascade_license_plate_rus_16stages.xml 47KB
haarcascade_frontalcatface.xml 402KB
haarcascade_lefteye_2splits.xml 191KB
haarcascade_eye.xml 333KB
haarcascade_mcs_nose.xml 1.05MB
haarcascade_lowerbody.xml 386KB
haarcascade_frontalcatface_extended.xml 374KB
haarcascade_upperbody.xml 767KB
haarcascade_frontalface_default.xml 908KB
haarcascade_frontalface_alt_tree.xml 2.56MB
haarcascade_righteye_2splits.xml 192KB
haarcascade_frontalface_alt2.xml 528KB
haarcascade_eye_tree_eyeglasses.xml 588KB
haarcascade_licence_plate_rus_16stages.xml 47KB
haarcascade_fullbody.xml 466KB
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