1 收集数据

  为了方便,我找了11张月儿的照片做数据集,如图1,当然这在实际应用过程中是远远不够的

tensorflow目标检测API之建立自己的数据集-LMLPHP

2 labelImg软件的安装

  使用labelImg软件(下载地址:https://github.com/tzutalin/labelImg)为图片做标签

下载下来之后解压缩,用Anaconda Prompt cd到解压缩后的labelImg文件目录下,例如  cd C:\Users\admin\Desktop\labelImg-master

然后安装pyqt,输入命令  conda install pyqt=5(注意:一定要使用管理员方式运行命令)

完成后输入命令   pyrcc5 -o resources.py resources.qrc,这个命令没有返回

最后执行   python labelImg.py,如果提示缺少包则安装就行

运行结果如图2

tensorflow目标检测API之建立自己的数据集-LMLPHP

3 labelImg软件的使用

点击Open Dir打开数据集所在的文件夹,将图片导入。如图3所示。

tensorflow目标检测API之建立自己的数据集-LMLPHP

在界面中按下w键,选择你的目标,然后在弹出的框中为你的目标确定一个名字。如图4

tensorflow目标检测API之建立自己的数据集-LMLPHP

标记完之后每张图片都有一个对应的xml文件,如图5所示

tensorflow目标检测API之建立自己的数据集-LMLPHP

4 标签文件的格式转换(一定要将这一步中的代码放在object_detection文件夹下)

(1)xml转csv

代码(xml_to_csv.py)

# -*- coding: utf-8 -*-

import os
import glob
import pandas as pd
import xml.etree.ElementTree as ET os.chdir('C:/Code/models-master/research/object_detection/my_train_images/train') # 这个是我文件夹的目录,改成你自己的
path = 'C:/Code/models-master/research/object_detection/my_train_images/train' # 训练图片的路径,改成你自己的 def xml_to_csv(path):
xml_list = []
for xml_file in glob.glob(path + '/*.xml'):
tree = ET.parse(xml_file)
root = tree.getroot()
for member in root.findall('object'):
value = (root.find('filename').text,
int(root.find('size')[0].text),
int(root.find('size')[1].text),
member[0].text,
int(member[4][0].text),
int(member[4][1].text),
int(member[4][2].text),
int(member[4][3].text)
)
xml_list.append(value)
column_name = ['filename', 'width', 'height', 'class', 'xmin', 'ymin', 'xmax', 'ymax']
xml_df = pd.DataFrame(xml_list, columns=column_name)
return xml_df def main():
image_path = path
xml_df = xml_to_csv(image_path)
xml_df.to_csv('gaoyue_train.csv', index=None) # 输出xsv文件的名字,改成你自己的
print('Successfully converted xml to csv.') main()

运行之后可以看到train文件夹下多了一个gaoyue.csv文件,重复上面的代码,更改文件夹,将test数据也生成一个.csv文件。

tensorflow目标检测API之建立自己的数据集-LMLPHP

(2)csv转tfrecord

代码(csv_to_tfrecord.py)

# -*- coding: utf-8 -*-

"""
Usage:
# From tensorflow/models/
# Create train data:
python generate_tfrecord.py --csv_input=data/tv_vehicle_labels.csv --output_path=train.record
# Create test data:
python generate_tfrecord.py --csv_input=data/test_labels.csv --output_path=test.record
""" import os
import io
import pandas as pd
import tensorflow as tf from PIL import Image
from object_detection.utils import dataset_util
from collections import namedtuple, OrderedDict os.chdir('C:/Code/models-master/research/object_detection') # 当前工作目录 flags = tf.app.flags
flags.DEFINE_string('csv_input', '', 'Path to the CSV input')
flags.DEFINE_string('output_path', '', 'Path to output TFRecord')
FLAGS = flags.FLAGS # TO-DO replace this with label map
def class_text_to_int(row_label):
if row_label == 'gaoyue':
return 1
# elif row_label == 'vehicle':
# return 2
else:
return 0 def split(df, group):
data = namedtuple('data', ['filename', 'object'])
gb = df.groupby(group)
return [data(filename, gb.get_group(x)) for filename, x in zip(gb.groups.keys(), gb.groups)] def create_tf_example(group, path):
with tf.gfile.GFile(os.path.join(path, '{}'.format(group.filename)), 'rb') as fid:
encoded_jpg = fid.read()
encoded_jpg_io = io.BytesIO(encoded_jpg)
image = Image.open(encoded_jpg_io)
width, height = image.size filename = group.filename.encode('utf8')
image_format = b'jpg'
xmins = []
xmaxs = []
ymins = []
ymaxs = []
classes_text = []
classes = [] for index, row in group.object.iterrows():
xmins.append(row['xmin'] / width)
xmaxs.append(row['xmax'] / width)
ymins.append(row['ymin'] / height)
ymaxs.append(row['ymax'] / height)
classes_text.append(row['class'].encode('utf8'))
classes.append(class_text_to_int(row['class'])) tf_example = tf.train.Example(features=tf.train.Features(feature={
'image/height': dataset_util.int64_feature(height),
'image/width': dataset_util.int64_feature(width),
'image/filename': dataset_util.bytes_feature(filename),
'image/source_id': dataset_util.bytes_feature(filename),
'image/encoded': dataset_util.bytes_feature(encoded_jpg),
'image/format': dataset_util.bytes_feature(image_format),
'image/object/bbox/xmin': dataset_util.float_list_feature(xmins),
'image/object/bbox/xmax': dataset_util.float_list_feature(xmaxs),
'image/object/bbox/ymin': dataset_util.float_list_feature(ymins),
'image/object/bbox/ymax': dataset_util.float_list_feature(ymaxs),
'image/object/class/text': dataset_util.bytes_list_feature(classes_text),
'image/object/class/label': dataset_util.int64_list_feature(classes),
}))
return tf_example def main(_):
writer = tf.python_io.TFRecordWriter(FLAGS.output_path)
# path = os.path.join(os.getcwd(), 'images/train')
path = os.path.join(os.getcwd(), 'my_train_images/train') # 当前路径加上你图片存放的路径
examples = pd.read_csv(FLAGS.csv_input)
grouped = split(examples, 'filename')
for group in grouped:
tf_example = create_tf_example(group, path)
writer.write(tf_example.SerializeToString()) writer.close()
output_path = os.path.join(os.getcwd(), FLAGS.output_path)
print('Successfully created the TFRecords: {}'.format(output_path)) if __name__ == '__main__':
tf.app.run()

然后打开Anaconda Prompt cd到你csv_to_tfrecord.py文件所在的地方

输入命令

python csv_to_tfrecord.py --csv_input=my_train_images/test/gaoyue_test.csv  --output_path=gaoyue_train.record   (csv_to_tfrecord.py为转换的代码文件,csv_input是你要转换的csv文件所在的路径,output_path是你输出tfrecord文件的路径)

运行结果如图所示

tensorflow目标检测API之建立自己的数据集-LMLPHP

生成 gaoyue_train.csv文件

tensorflow目标检测API之建立自己的数据集-LMLPHP

05-27 06:31