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python - 使用 Python(没有 SciPy)检测照片中的特定水印

转载 作者:太空狗 更新时间:2023-10-30 01:44:52 27 4
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我有大量图片(数十万张),对于每张图片,我都需要说明它的右上角是否有水印。水印始终相同并且位于相同位置。它采用带符号和一些文本的丝带形式。我正在寻找简单快速的方法来做到这一点,理想情况下,不使用 SciPy(因为它在我使用的服务器上不可用——但它可以使用 NumPy)

到目前为止,我已经尝试使用 PIL 和裁剪函数来隔离图像中应该有水印的区域,然后将直方图与 RMS 函数进行比较(参见 http://snipplr.com/view/757/compare-two-pil-images-in-python/ )。这不是很好,因为在两个方向上都有很多错误。

任何想法将不胜感激。谢谢

最佳答案

另一种可能性是使用机器学习。我的背景是自然语言处理(不是计算机视觉),但我尝试使用您的问题描述创建一个训练和测试集,它似乎有效(对看不见的数据 100% 准确)。

训练集

训练集由带水印(正例)和不带水印(负例)的相同图像组成。

测试集

测试集包含不在训练集中的图像。

示例数据

有兴趣的可以用example training and testing images试试.

代码:

完整版可用as a gist .摘录如下:

import glob

from classify import MultinomialNB
from PIL import Image


TRAINING_POSITIVE = 'training-positive/*.jpg'
TRAINING_NEGATIVE = 'training-negative/*.jpg'
TEST_POSITIVE = 'test-positive/*.jpg'
TEST_NEGATIVE = 'test-negative/*.jpg'

# How many pixels to grab from the top-right of image.
CROP_WIDTH, CROP_HEIGHT = 100, 100
RESIZED = (16, 16)


def get_image_data(infile):
image = Image.open(infile)
width, height = image.size
# left upper right lower
box = width - CROP_WIDTH, 0, width, CROP_HEIGHT
region = image.crop(box)
resized = region.resize(RESIZED)
data = resized.getdata()
# Convert RGB to simple averaged value.
data = [sum(pixel) / 3 for pixel in data]
# Combine location and value.
values = []
for location, value in enumerate(data):
values.extend([location] * value)
return values


def main():
watermark = MultinomialNB()
# Training
count = 0
for infile in glob.glob(TRAINING_POSITIVE):
data = get_image_data(infile)
watermark.train((data, 'positive'))
count += 1
print 'Training', count
for infile in glob.glob(TRAINING_NEGATIVE):
data = get_image_data(infile)
watermark.train((data, 'negative'))
count += 1
print 'Training', count
# Testing
correct, total = 0, 0
for infile in glob.glob(TEST_POSITIVE):
data = get_image_data(infile)
prediction = watermark.classify(data)
if prediction.label == 'positive':
correct += 1
total += 1
print 'Testing ({0} / {1})'.format(correct, total)
for infile in glob.glob(TEST_NEGATIVE):
data = get_image_data(infile)
prediction = watermark.classify(data)
if prediction.label == 'negative':
correct += 1
total += 1
print 'Testing ({0} / {1})'.format(correct, total)
print 'Got', correct, 'out of', total, 'correct'


if __name__ == '__main__':
main()

示例输出

Training 1
Training 2
Training 3
Training 4
Training 5
Training 6
Training 7
Training 8
Training 9
Training 10
Training 11
Training 12
Training 13
Training 14
Testing (1 / 1)
Testing (2 / 2)
Testing (3 / 3)
Testing (4 / 4)
Testing (5 / 5)
Testing (6 / 6)
Testing (7 / 7)
Testing (8 / 8)
Testing (9 / 9)
Testing (10 / 10)
Got 10 out of 10 correct
[Finished in 3.5s]

关于python - 使用 Python(没有 SciPy)检测照片中的特定水印,我们在Stack Overflow上找到一个类似的问题: https://stackoverflow.com/questions/16222178/

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