# Generated by the protocol buffer compiler. DO NOT EDIT!
# source: caffe.proto
import sys
_b=sys.version_info[0]<3 and (lambda x:x) or (lambda x:x.encode('latin1'))
from google.protobuf.internal import enum_type_wrapper
from google.protobuf import descriptor as _descriptor
from google.protobuf import message as _message
from google.protobuf import reflection as _reflection
from google.protobuf import symbol_database as _symbol_database
from google.protobuf import descriptor_pb2
# @@protoc_insertion_point(imports)
_sym_db = _symbol_database.Default()
DESCRIPTOR = _descriptor.FileDescriptor(
name='caffe.proto',
package='caffe',
syntax='proto2',
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Caffe:Visual Studio 2015 Build\x64\Release , CPU only, annaconda3 Python 3.5 编译后的程序,需要先在annaconda3 目录下构建虚拟3.5环境 conda create -n py35 python=3.5 anaconda
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caffe.rar (32个子文件)
caffe
proto
__init__.py 0B
caffe_pb2.py 247KB
python35.dll 3.74MB
classifier.py 3KB
libgfortran-3.dll 1.22MB
opencv_imgcodecs310.dll 2.63MB
__init__.py 552B
boost_python-vc140-mt-1_61.dll 276KB
io.py 12KB
coord_map.py 7KB
boost_chrono-vc140-mt-1_61.dll 33KB
caffehdf5.dll 2.2MB
libopenblas.dll 36.56MB
gflags.dll 137KB
boost_thread-vc140-mt-1_61.dll 113KB
pycaffe.py 11KB
CONCRT140.dll 327KB
caffezlib1.dll 81KB
boost_filesystem-vc140-mt-1_61.dll 136KB
libquadmath-0.dll 324KB
VCRUNTIME140.dll 86KB
detector.py 8KB
glog.dll 112KB
opencv_imgproc310.dll 24.39MB
draw.py 10KB
imagenet
ilsvrc_2012_mean.npy 1.5MB
_caffe.pyd 3.47MB
caffehdf5_hl.dll 102KB
net_spec.py 8KB
opencv_core310.dll 10.54MB
libgcc_s_seh-1.dll 81KB
boost_system-vc140-mt-1_61.dll 24KB
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