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<!--
Stump-based 20x20 gentle adaboost frontal face detector.
Created by Rainer Lienhart.
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openpose-1.7.0所有模型文件
共15个文件
prototxt:6个
caffemodel:5个
sh:1个
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2024-01-07
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包含openpose1.60或者1.7.0编译时候需要的模型文件夹,注意这个是模型文件夹,编译时候只需要复制models文件夹到源码对应目录即可。包含face,hand,pose模型
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models.zip (15个子文件)
models
getModels.sh 1KB
face
haarcascade_frontalface_alt.xml 661KB
pose_deploy.prototxt 25KB
pose_iter_116000.caffemodel 146.6MB
pose
body_25
pose_deploy.prototxt 41KB
pose_iter_584000.caffemodel 99.86MB
mpi
pose_deploy_linevec_faster_4_stages.prototxt 31KB
pose_iter_160000.caffemodel 196.41MB
pose_deploy_linevec.prototxt 45KB
coco
pose_iter_440000.caffemodel 199.58MB
pose_deploy_linevec.prototxt 45KB
hand
pose_iter_102000.caffemodel 140.52MB
pose_deploy.prototxt 26KB
getModels.bat 2KB
cameraParameters
flir
17012332.xml.example 825B
共 15 条
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