<?xml version="1.0"?>
<!--
Stump-based 20x20 frontal eye detector.
Created by Shameem Hameed (http://umich.edu/~shameem)
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<featureType>HAAR</featureType>
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<width>20</width>
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人眼识别分类器 haarcasecade-eye.xml
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Python使用Opencv进行图像人脸、眼睛识别实例演示 https://blog.csdn.net/qq_38161040/article/details/130183285
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