1. h5py简单介绍
h5py文件是存放两类对象的容器,数据集(dataset)和组(group),dataset类似数组类的数据集合,和numpy的数组差不多。group是像文件夹一样的容器,它好比python中的字典,有键(key)和值(value)。group中可以存放dataset或者其他的group。”键”就是组成员的名称,”值”就是组成员对象本身(组或者数据集),下面来看下如何创建组和数据集。
1.1 创建一个h5py文件
import h5py
#要是读取文件的话,就把w换成r
f=h5py.File("myh5py.hdf5","w")
在当前目录下会生成一个myh5py.hdf5文件。
2. 创建dataset数据集
import h5py
f=h5py.File("myh5py.hdf5","w")
#deset1是数据集的name,(20,)代表数据集的shape,i代表的是数据集的元素类型
d1=f.create_dataset("dset1", (20,), 'i')
for key in f.keys():
 print(key)
 print(f[key].name)
 print(f[key].shape)
 print(f[key].value)
输出:
dset1
/dset1
(20,)
[0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0 0]
import h5py
import numpy as np
f=h5py.File("myh5py.hdf5","w")
a=np.arange(20)
d1=f.create_dataset("dset1",data=a)
for key in f.keys():
 print(f[key].name)
 print(f[key].value)
输出:
/dset1
[ 0 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19]
2. hpf5用于封装训练集和测试集
#============================================================
# This prepare the hdf5 datasets of the DRIVE database
#============================================================
 
import os
import h5py
import numpy as np
from PIL import Image
 
def write_hdf5(arr,outfile):
 with h5py.File(outfile,"w") as f:
 f.create_dataset("image", data=arr, dtype=arr.dtype)
 
#------------Path of the images --------------------------------------------------------------
#train
original_imgs_train = "./DRIVE/training/images/"
groundTruth_imgs_train = "./DRIVE/training/1st_manual/"
borderMasks_imgs_train = "./DRIVE/training/mask/"
#test
original_imgs_test = "./DRIVE/test/images/"
groundTruth_imgs_test = "./DRIVE/test/1st_manual/"
borderMasks_imgs_test = "./DRIVE/test/mask/"
#---------------------------------------------------------------------------------------------
 
Nimgs = 20
channels = 3
height = 584
width = 565
dataset_path = "./DRIVE_datasets_training_testing/"
 
def get_datasets(imgs_dir,groundTruth_dir,borderMasks_dir,train_test="null"):
 imgs = np.empty((Nimgs,height,width,channels))
 groundTruth = np.empty((Nimgs,height,width))
 border_masks = np.empty((Nimgs,height,width))
 for path, subdirs, files in os.walk(imgs_dir): #list all files, directories in the path
  for i in range(len(files)):
   #original
   print "original image: " +files[i]
   img = Image.open(imgs_dir+files[i])
   imgs[i] = np.asarray(img)
   #corresponding ground truth
   groundTruth_name = files[i][0:2] + "_manual1.gif"
   print "ground truth name: " + groundTruth_name
   g_truth = Image.open(groundTruth_dir + groundTruth_name)
   groundTruth[i] = np.asarray(g_truth)
   #corresponding border masks
   border_masks_name = ""
   if train_test=="train":
    border_masks_name = files[i][0:2] + "_training_mask.gif"
   elif train_test=="test":
    border_masks_name = files[i][0:2] + "_test_mask.gif"
   else:
    print "specify if train or test!!"
    exit()
   print "border masks name: " + border_masks_name
   b_mask = Image.open(borderMasks_dir + border_masks_name)
   border_masks[i] = np.asarray(b_mask)
 
 print "imgs max: " +str(np.max(imgs))
 print "imgs min: " +str(np.min(imgs))
 assert(np.max(groundTruth)==255 and np.max(border_masks)==255)
 assert(np.min(groundTruth)==0 and np.min(border_masks)==0)
 print "ground truth and border masks are correctly withih pixel value range 0-255 (black-white)"
 #reshaping for my standard tensors
 imgs = np.transpose(imgs,(0,3,1,2))
 assert(imgs.shape == (Nimgs,channels,height,width))
 groundTruth = np.reshape(groundTruth,(Nimgs,1,height,width))
 border_masks = np.reshape(border_masks,(Nimgs,1,height,width))
 assert(groundTruth.shape == (Nimgs,1,height,width))
 assert(border_masks.shape == (Nimgs,1,height,width))
 return imgs, groundTruth, border_masks
 
if not os.path.exists(dataset_path):
 os.makedirs(dataset_path)
#getting the training datasets
imgs_train, groundTruth_train, border_masks_train = get_datasets(original_imgs_train,groundTruth_imgs_train,borderMasks_imgs_train,"train")
print "saving train datasets"
write_hdf5(imgs_train, dataset_path + "DRIVE_dataset_imgs_train.hdf5")
write_hdf5(groundTruth_train, dataset_path + "DRIVE_dataset_groundTruth_train.hdf5")
write_hdf5(border_masks_train,dataset_path + "DRIVE_dataset_borderMasks_train.hdf5")
 
#getting the testing datasets
imgs_test, groundTruth_test, border_masks_test = get_datasets(original_imgs_test,groundTruth_imgs_test,borderMasks_imgs_test,"test")
print "saving test datasets"
write_hdf5(imgs_test,dataset_path + "DRIVE_dataset_imgs_test.hdf5")
write_hdf5(groundTruth_test, dataset_path + "DRIVE_dataset_groundTruth_test.hdf5")
write_hdf5(border_masks_test,dataset_path + "DRIVE_dataset_borderMasks_test.hdf5")
遍历文件夹下的所有文件 os.walk( dir )
for parent, dir_names, file_names in os.walk(parent_dir): for i in file_names: print file_name
parent: 父路径
dir_names: 子文件夹
file_names: 文件名
以上这篇基于h5py的使用及数据封装代码就是小编分享给大家的全部内容了,希望能给大家一个参考,也希望大家多多支持。
                                    标签:
                                        
                            h5py,数据,封装
                                免责声明:本站文章均来自网站采集或用户投稿,网站不提供任何软件下载或自行开发的软件!
                                如有用户或公司发现本站内容信息存在侵权行为,请邮件告知! 858582#qq.com
                            
                        暂无“基于h5py的使用及数据封装代码”评论...
                                    稳了!魔兽国服回归的3条重磅消息!官宣时间再确认!
昨天有一位朋友在大神群里分享,自己亚服账号被封号之后居然弹出了国服的封号信息对话框。
这里面让他访问的是一个国服的战网网址,com.cn和后面的zh都非常明白地表明这就是国服战网。
而他在复制这个网址并且进行登录之后,确实是网易的网址,也就是我们熟悉的停服之后国服发布的暴雪游戏产品运营到期开放退款的说明。这是一件比较奇怪的事情,因为以前都没有出现这样的情况,现在突然提示跳转到国服战网的网址,是不是说明了简体中文客户端已经开始进行更新了呢?
更新动态
2025年11月04日
                                2025年11月04日
                    - 小骆驼-《草原狼2(蓝光CD)》[原抓WAV+CUE]
 - 群星《欢迎来到我身边 电影原声专辑》[320K/MP3][105.02MB]
 - 群星《欢迎来到我身边 电影原声专辑》[FLAC/分轨][480.9MB]
 - 雷婷《梦里蓝天HQⅡ》 2023头版限量编号低速原抓[WAV+CUE][463M]
 - 群星《2024好听新歌42》AI调整音效【WAV分轨】
 - 王思雨-《思念陪着鸿雁飞》WAV
 - 王思雨《喜马拉雅HQ》头版限量编号[WAV+CUE]
 - 李健《无时无刻》[WAV+CUE][590M]
 - 陈奕迅《酝酿》[WAV分轨][502M]
 - 卓依婷《化蝶》2CD[WAV+CUE][1.1G]
 - 群星《吉他王(黑胶CD)》[WAV+CUE]
 - 齐秦《穿乐(穿越)》[WAV+CUE]
 - 发烧珍品《数位CD音响测试-动向效果(九)》【WAV+CUE】
 - 邝美云《邝美云精装歌集》[DSF][1.6G]
 - 吕方《爱一回伤一回》[WAV+CUE][454M]