• caffe多标签生成lmdb


    #encoding:utf-8
    import numpy as np
    import os
    import lmdb
    from PIL import Image 
    import numpy as np 
    import sys
    # Make sure that caffe is on the python path:
    #TODO
    caffe_root = ''
    TRAIN_LMDB = ''
    VAL_LMDB = ''
    ORGINAL_IMAGES_PATH = ''
    sys.path.insert(0, caffe_root + '/python')
    import caffe
    ####################pre-treatment############################
    #txt with labels eg. (0001.jpg 2 5)
    file_input=open('your label txt','r')
    img_list=[]
    label1_list=[]
    label2_list=[]
    for line in file_input.readlines():
        content=line.strip()
        content=content.split(' ')
        #可在这里顺便截取label有效位
        img_list.append(content[0])
        label1_list.append(content[1])
        label2_list.append(content[2])
        del content
    file_input.close() 
    ####################train data(images)############################
    #your data lmdb path
    #注意一定要先删除之前生成的lmdb,因为lmdb会在之前的数据基础上新增数据,而不会先清空
    #os.system('rm -rf  ' + your data(images) lmdb path)
    in_db=lmdb.open(TRAIN_LMDB,map_size=int(1e12))
    with in_db.begin(write=True) as in_txn:
        for in_idx,in_ in enumerate(img_list):         
            im_file=ORGINAL_IMAGES_PATH+in_
            im=Image.open(im_file)
            im = im.resize((w,h),Image.BILINEAR)#放缩图片,分类一般用
            #双线性BILINEAR,分割一般用最近邻NEAREST,**注意准备测试数据时一定要一致**
            im=np.array(im) # im: (w,h)RGB->(h,w,3)RGB
            im=im[:,:,::-1]#把im的RGB调整为BGR
            im=im.transpose((2,0,1))#把height*width*channel调整为channel*height*width
            im_dat=caffe.io.array_to_datum(im)
            in_txn.put('{:0>10d}'.format(in_idx),im_dat.SerializeToString())   
            print 'data train: {} [{}/{}]'.format(in_, in_idx+1, len(img_list))        
            del im_file, im, im_dat
    in_db.close()
    print 'train data(images) are done!'
    ######train data of label################    
    #your labels lmdb path
    in_db=lmdb.open(VAL_LMDB,map_size=int(1e12))
    with in_db.begin(write=True) as in_txn:
        for in_idx,in_ in enumerate(img_list):
            target_label=np.zeros((2,1,1))# 2种label
            target_label[0,0,0]=label1_list[in_idx]
            target_label[1,0,0]=label2_list[in_idx]
            label_data=caffe.io.array_to_datum(target_label)
            in_txn.put('{:0>10d}'.format(in_idx),label_data.SerializeToString())
            print 'label train: {} [{}/{}]'.format(in_, in_idx+1, len(img_list))
            del target_label, label_data    
    in_db.close()
    print 'train labels are done!'
    
    

    参考

    https://blog.csdn.net/u013010889/article/details/53098346

  • 相关阅读:
    CF375D Tree and Queries
    进制转换
    贪心问题
    next_permutation函数
    C++ STL
    一些排序总结
    KMP算法
    围圈报数
    车辆调度—模拟栈的操作
    搜索题
  • 原文地址:https://www.cnblogs.com/Shambryce/p/11161908.html
Copyright © 2020-2023  润新知