车牌识别Hyperlpr

上传者: cool16888 | 上传时间: 2019-12-21 19:35:42 | 文件大小: 25.37MB | 文件类型: rar
HyperLPR是一个使用深度学习针对对中文车牌识别的实现,开源地址:https://github.com/zeusees/HyperLPR,在windows下,使用vs2013编译成功,编译前需要修改opencv340的include和lib路径。

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style='color:#111;'> 7.23KB </span>","children":null,"spread":false},{"title":"x64","children":[{"title":"Release","children":[{"title":"SegmentationFreeRecognizer.obj <span style='color:#111;'> 3.44MB </span>","children":null,"spread":false},{"title":"lpre2e.log <span style='color:#111;'> 11.93KB </span>","children":null,"spread":false},{"title":"vc120.pdb <span style='color:#111;'> 1.92MB </span>","children":null,"spread":false},{"title":"FineMapping.obj <span style='color:#111;'> 3.41MB </span>","children":null,"spread":false},{"title":"CNNRecognizer.obj <span style='color:#111;'> 3.38MB </span>","children":null,"spread":false},{"title":"lpre2e.Build.CppClean.log <span style='color:#111;'> 993B </span>","children":null,"spread":false},{"title":"PlateDetection.obj <span style='color:#111;'> 3.35MB </span>","children":null,"spread":false},{"title":"PlateSegmentation.obj <span style='color:#111;'> 3.47MB </span>","children":null,"spread":false},{"title":"Recognizer.obj <span style='color:#111;'> 3.37MB </span>","children":null,"spread":false},{"title":"e2e.obj <span style='color:#111;'> 3.54MB </span>","children":null,"spread":false},{"title":"lpre2e.tlog","children":[{"title":"lpre2e.lastbuildstate <span style='color:#111;'> 150B </span>","children":null,"spread":false},{"title":"CL.write.1.tlog <span style='color:#111;'> 2.99KB </span>","children":null,"spread":false},{"title":"CL.read.1.tlog <span style='color:#111;'> 295.15KB </span>","children":null,"spread":false},{"title":"cl.command.1.tlog <span style='color:#111;'> 4.16KB </span>","children":null,"spread":false},{"title":"link.write.1.tlog <span style='color:#111;'> 996B </span>","children":null,"spread":false},{"title":"link.command.1.tlog <span style='color:#111;'> 2.19KB </span>","children":null,"spread":false},{"title":"link.read.1.tlog <span style='color:#111;'> 4.75KB </span>","children":null,"spread":false}],"spread":false},{"title":"Pipeline.obj <span style='color:#111;'> 3.46MB </span>","children":null,"spread":false},{"title":"FastDeskew.obj <span style='color:#111;'> 3.27MB </span>","children":null,"spread":false}],"spread":false}],"spread":true},{"title":"e2e.cpp <span style='color:#111;'> 5.45KB </span>","children":null,"spread":false}],"spread":true}],"spread":true}],"spread":true}]

评论信息

  • fzu_heda2008 :
    我用vs2013可以正常识别正面蓝牌车牌,windows版本其他颜色车牌有问题
    2018-08-28
  • 贤皇大人 :
    不知道怎么编译前需要修改opencv340的include和lib路径。
    2018-03-27
  • 超级无敌大泡泡 :
    不错我用的vs2015+opencv340,直接就配置成功了,正是我想要的,良心资源
    2018-02-09

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