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CameraCalibrate(相机标定)

于 2017-07-26 发布 文件大小:11676KB
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下载积分: 1 下载次数: 7

代码说明:

  利用棋盘格对相机进行标定,加入误差判定及像素空间到实际物理空间的距离计算(The camera is calibrated by checkerboard, the error is added and the distance of pixel space to the actual physical space is calculated)

文件列表:

CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\calibdata.txt
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\CameraCalibrate.cpp
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\CameraCalibrate.vcxproj
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\CameraCalibrate.vcxproj.filters
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\CameraCalibrate.vcxproj.user
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\CameraCalibrate.Build.CppClean.log
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\CameraCalibrate.exe.embed.manifest
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\CameraCalibrate.exe.embed.manifest.res
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\CameraCalibrate.exe.intermediate.manifest
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\CameraCalibrate.lastbuildstate
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\CameraCalibrate.log
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\CameraCalibrate.obj
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\CameraCalibrate.vcxprojResolveAssemblyReference.cache
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\CameraCalibrate.write.1.tlog
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\CameraCalibrate_manifest.rc
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\CL.read.1.tlog
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\CL.write.1.tlog
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\link-cvtres.read.1.tlog
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\link-cvtres.write.1.tlog
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\link.4560-cvtres.read.1.tlog
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\link.4560-cvtres.write.1.tlog
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\link.4560.read.1.tlog
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\link.4560.write.1.tlog
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\link.6252-cvtres.read.1.tlog
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\link.6252-cvtres.write.1.tlog
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\link.6252.read.1.tlog
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\link.6252.write.1.tlog
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\link.7472-cvtres.read.1.tlog
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\link.7472-cvtres.write.1.tlog
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\link.7472.read.1.tlog
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\link.7472.write.1.tlog
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\link.7572-cvtres.read.1.tlog
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\link.7572-cvtres.write.1.tlog
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\link.7572.read.1.tlog
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\link.7572.write.1.tlog
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\link.read.1.tlog
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\link.write.1.tlog
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\mt.read.1.tlog
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\mt.write.1.tlog
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\rc.read.1.tlog
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\rc.write.1.tlog
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\vc100.idb
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug\vc100.pdb
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate.sdf
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate.sln
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate.suo
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\ipch\cameracalibrate-bc1af7ba\cameracalibrate-35ec5c5c.ipch
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\说明.txt
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate\Debug
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\ipch\cameracalibrate-bc1af7ba
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\CameraCalibrate
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)\ipch
CameraCalibrate(相机标定)\CameraCalibrate(相机标定)
CameraCalibrate(相机标定)

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