如何识别带有彩色背景图像的文本?

How to recognize text with colored background images?

我是 opencv 和 python 以及 tesseract 的新手。现在,我正在创建一个脚本来识别图像中的文本。我的代码适用于黑色文本和白色背景或黑色背景的白色文本,但不适用于彩色图像。例如,带有蓝色背景的白色文本,例如按钮。字体也会影响这个吗?在这种情况下,我找到 Reboot 文本(按钮)

这是示例图片

我尝试了一堆通过opencv进行图像预处理的代码和方法,但都没有得到结果。图像二值化、降噪、灰度都不好

这是示例代码:

from PIL import Image
import pytesseract
import cv2
import numpy as np

# image = Image.open('image.png')
# image = image.convert('-1')
# image.save('new.png')

filename = 'image.png'
outputname = 'converted.png'

# grayscale -----------------------------------------------------
image = cv2.imread(filename)
gray_image = cv2.cvtColor(image, cv2.COLOR_BGR2GRAY)
cv2.imwrite(outputname,gray_image)

# binarize -----------------------------------------------------
im_gray = cv2.imread(outputname, cv2.IMREAD_GRAYSCALE)
(thresh, im_bw) = cv2.threshold(im_gray, 128, 255, cv2.THRESH_BINARY | cv2.THRESH_OTSU)
cv2.imwrite(outputname, im_bw)

# remove noise -----------------------------------------------------
im = cv2.imread(outputname)
morph = im.copy()

kernel = cv2.getStructuringElement(cv2.MORPH_RECT, (1, 1))
morph = cv2.morphologyEx(morph, cv2.MORPH_CLOSE, kernel)
morph = cv2.morphologyEx(morph, cv2.MORPH_OPEN, kernel)

kernel = cv2.getStructuringElement(cv2.MORPH_RECT, (2, 2))
image_channels = np.split(np.asarray(morph), 3, axis=2)

channel_height, channel_width, _ = image_channels[0].shape

# apply Otsu threshold to each channel
for i in range(0, 3):
    _, image_channels[i] = cv2.threshold(image_channels[i], 0, 255, cv2.THRESH_OTSU | cv2.THRESH_BINARY)
    image_channels[i] = np.reshape(image_channels[i], newshape=(channel_height, channel_width, 1))

# merge the channels
image_channels = np.concatenate((image_channels[0], image_channels[1], image_channels[2]), axis=2)

# save the denoised image
cv2.imwrite(outputname, image_channels)

image = Image.open(outputname)
data_string = pytesseract.image_to_data(image, config='--oem 1')
data_string = data_string.encode('utf-8')
open('image.tsv', 'wb').write(data_string)

通过 运行 代码,我得到了这张图片: [![在此处输入图片描述][1]][1]

以及带 TSV 参数的 tesseract 结果:

level   page_num    block_num   par_num line_num    word_num    left    top width   height  conf    text
1   1   0   0   0   0   0   0   1024    768 -1  
2   1   1   0   0   0   2   13  1002    624 -1  
3   1   1   1   0   0   2   13  1002    624 -1  
4   1   1   1   1   0   172 13  832 22  -1  
5   1   1   1   1   1   172 13  127 22  84  CONFIGURATION
5   1   1   1   1   2   822 17  59  11  92  CENTOS
5   1   1   1   1   3   887 17  7   11  95  7
5   1   1   1   1   4   900 17  104 11  95  INSTALLATION
4   1   1   1   2   0   86  29  900 51  -1  
5   1   1   1   2   1   86  35  15  45  12  4
5   1   1   1   2   2   825 30  27  40  50  Bes
5   1   1   1   2   3   952 29  34  40  51  Hel
4   1   1   1   3   0   34  91  87  17  -1  
5   1   1   1   3   1   34  91  87  17  90  CentOS
4   1   1   1   4   0   2   116 9   8   -1  
5   1   1   1   4   1   2   116 9   8   0   ‘
4   1   1   1   5   0   184 573 57  14  -1  
5   1   1   1   5   1   184 573 57  14  90  Complete!
4   1   1   1   6   0   634 606 358 14  -1  
5   1   1   1   6   1   634 606 43  10  89  CentOS
5   1   1   1   6   2   683 609 7   7   96  is
5   1   1   1   6   3   696 609 24  7   96  now
5   1   1   1   6   4   725 606 67  14  96  successfully
5   1   1   1   6   5   797 606 45  10  96  installed
5   1   1   1   6   6   848 606 18  10  96  and
5   1   1   1   6   7   872 599 29  25  96  ready
5   1   1   1   6   8   906 599 15  25  95  for
5   1   1   1   6   9   928 609 20  11  96  you
5   1   1   1   6   10  953 608 12  8   96  to
5   1   1   1   6   11  971 606 21  10  95  use!
4   1   1   1   7   0   775 623 217 14  -1  
5   1   1   1   7   1   775 623 15  10  95  Go
5   1   1   1   7   2   796 623 31  10  96  ahead
5   1   1   1   7   3   833 623 18  10  96  and
5   1   1   1   7   4   857 623 38  10  96  reboot
5   1   1   1   7   5   900 625 12  8   96  to
5   1   1   1   7   6   918 625 25  8   95  start
5   1   1   1   7   7   949 626 28  11  96  using
5   1   1   1   7   8   983 623 9   10  93  it!

如您所见,"Reboot" 文本未显示。也许是因为字体?还是颜色?

这里有两种不同的方法:

1.传统图像处理和轮廓滤波

主要思想是提取ROI然后应用Tesseract OCR。

  • 将图像转换为灰度和高斯模糊
  • 自适应阈值
  • 寻找轮廓
  • 遍历轮廓并使用轮廓近似和面积进行过滤
  • 提取投资回报率

一旦我们从自适应阈值化获得二值图像,我们就会找到轮廓并使用 cv2.arcLength()cv2.approxPolyDP() 的轮廓近似进行过滤。如果轮廓有四个点,我们假设它是矩形或正方形。此外,我们使用轮廓区域应用第二个过滤器,以确保我们隔离正确的 ROI。这是提取的 ROI

import cv2

image = cv2.imread('1.png')
gray = cv2.cvtColor(image, cv2.COLOR_BGR2GRAY)
blur = cv2.GaussianBlur(gray, (3,3), 0)
thresh = cv2.adaptiveThreshold(blur,255,cv2.ADAPTIVE_THRESH_GAUSSIAN_C, cv2.THRESH_BINARY_INV,9,3)

cnts = cv2.findContours(thresh, cv2.RETR_EXTERNAL, cv2.CHAIN_APPROX_SIMPLE)
cnts = cnts[0] if len(cnts) == 2 else cnts[1]

ROI_number = 0
for c in cnts:
    area = cv2.contourArea(c)
    peri = cv2.arcLength(c, True)
    approx = cv2.approxPolyDP(c, 0.05 * peri, True)
    if len(approx) == 4 and area > 2200:
        x,y,w,h = cv2.boundingRect(approx)
        ROI = image[y:y+h, x:x+w]
        cv2.imwrite('ROI_{}.png'.format(ROI_number), ROI)
        ROI_number += 1

现在我们可以将其放入 Pytesseract 中。注意 Pytesseract 要求图像文本为黑色而背景为白色,因此我们首先进行一些预处理。这是 Pytesseract

的预处理图像和结果

Reboot

import cv2
import pytesseract

pytesseract.pytesseract.tesseract_cmd = r"C:\Program Files\Tesseract-OCR\tesseract.exe"

image = cv2.imread('ROI.png',0)
thresh = cv2.threshold(image, 0, 255, cv2.THRESH_BINARY + cv2.THRESH_OTSU)[1]

result = 255 - thresh 

data = pytesseract.image_to_string(result, lang='eng',config='--psm 10 ')
print(data)

cv2.imshow('thresh', thresh)
cv2.imshow('result', result)
cv2.waitKey()

通常情况下,您还需要使用形态学变换来平滑图像,但对于这种情况,文本就足够了

2。颜色阈值

第二种方法是使用具有下限和上限 HSV 阈值的颜色阈值来创建一个掩码,我们可以在其中提取 ROI。查看 以获得完整示例。提取出 ROI 后,我们按照相同的步骤对图像进行预处理,然后再将其放入 Pytesseract