(编辑:jimmy 日期: 2024/11/15 浏览:2)
下载的数据是pascal voc2012的数据,已经有annotation了,不过是xml格式的,训练的模型是在Google模型的基础上加了两层网络,因此要在原始图像中裁剪出用于训练的部分图像。
另外,在原来给的标注框的基础上,做了点框的移动。最后同类目标存储在同一文件夹中。
from __future__ import division import os from PIL import Image import xml.dom.minidom import numpy as np ImgPath = 'C:/Users/Desktop/XML_try/img/' AnnoPath = 'C:/Users/Desktop/XML_try/xml/' ProcessedPath = 'C:/Users/Desktop/CropedVOC/' imagelist = os.listdir(ImgPath) for image in imagelist: image_pre, ext = os.path.splitext(image) imgfile = ImgPath + image xmlfile = AnnoPath + image_pre + '.xml' DomTree = xml.dom.minidom.parse(xmlfile) annotation = DomTree.documentElement filenamelist = annotation.getElementsByTagName('filename') #[<DOM Element: filename at 0x381f788>] filename = filenamelist[0].childNodes[0].data objectlist = annotation.getElementsByTagName('object') i = 1 for objects in objectlist: namelist = objects.getElementsByTagName('name') objectname = namelist[0].childNodes[0].data savepath = ProcessedPath + objectname if not os.path.exists(savepath): os.makedirs(savepath) bndbox = objects.getElementsByTagName('bndbox') cropboxes = [] for box in bndbox: x1_list = box.getElementsByTagName('xmin') x1 = int(x1_list[0].childNodes[0].data) y1_list = box.getElementsByTagName('ymin') y1 = int(y1_list[0].childNodes[0].data) x2_list = box.getElementsByTagName('xmax') x2 = int(x2_list[0].childNodes[0].data) y2_list = box.getElementsByTagName('ymax') y2 = int(y2_list[0].childNodes[0].data) w = x2 - x1 h = y2 - y1 obj = np.array([x1,y1,x2,y2]) shift = np.array([[0.8,0.8,1.2,1.2],[0.9,0.9,1.1,1.1],[1,1,1,1],[0.7,0.7,1,1],[1,1,1.2,1.2], [0.7,1,1,1.2],[1,0.7,1.2,1],[(x1+w*1/3)/x1,(y1+h*1/3)/y1,(x2+w*1/3)/x2,(y2+h*1/3)/y2], [(x1-w*1/3)/x1,(y1-h*1/3)/y1,(x2-w*1/3)/x2,(y2-h*1/3)/y2]]) XYmatrix = np.tile(obj,(9,1)) cropboxes = XYmatrix * shift img = Image.open(imgfile) for cropbox in cropboxes: cropedimg = img.crop(cropbox) cropedimg.save(savepath + '/' + image_pre + '_' + str(i) + '.jpg') i += 1
补充知识:python-----截取xml文件画框的图片并保存
from __future__ import division import os from PIL import Image import xml.dom.minidom import numpy as np ImgPath = r'D:\tmp\video_wang_mod\01\00022_8253_0021_3\output/' AnnoPath = r'D:\tmp\video_wang_mod\01\00022_8253_0021_3\Annotations/' ProcessedPath = r'D:\tmp\video_wang_mod\01\00022_8253_0021_3\cut/' imagelist = os.listdir(ImgPath) for image in imagelist: image_pre, ext = os.path.splitext(image) imgfile = ImgPath + image print(imgfile) if not os.path.exists(AnnoPath + image_pre + '.xml' ): continue xmlfile = AnnoPath + image_pre + '.xml' DomTree = xml.dom.minidom.parse(xmlfile) annotation = DomTree.documentElement filenamelist = annotation.getElementsByTagName('filename') filename = filenamelist[0].childNodes[0].data objectlist = annotation.getElementsByTagName('object') i = 1 for objects in objectlist: namelist = objects.getElementsByTagName('name') objectname = namelist[0].childNodes[0].data savepath = ProcessedPath + objectname if not os.path.exists(savepath): os.makedirs(savepath) bndbox = objects.getElementsByTagName('bndbox') cropboxes = [] for box in bndbox: x1_list = box.getElementsByTagName('xmin') x1 = int(x1_list[0].childNodes[0].data) y1_list = box.getElementsByTagName('ymin') y1 = int(y1_list[0].childNodes[0].data) x2_list = box.getElementsByTagName('xmax') x2 = int(x2_list[0].childNodes[0].data) y2_list = box.getElementsByTagName('ymax') y2 = int(y2_list[0].childNodes[0].data) w = x2 - x1 h = y2 - y1 obj = np.array([x1,y1,x2,y2]) shift = np.array([[1,1,1,1]]) XYmatrix = np.tile(obj,(1,1)) cropboxes = XYmatrix * shift img = Image.open(imgfile) for cropbox in cropboxes: cropedimg = img.crop(cropbox) cropedimg.save(savepath + '/' + image_pre + '_' + str(i) + '.jpg') i += 1
以上这篇Python 读取xml数据,cv2裁剪图片实例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。