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python简单实现图片文字分割

2021-12-30 00:28上不了山的小非洲 Python

这篇文章主要为大家详细介绍了python简单实现图片文字分割,文中示例代码介绍的非常详细,具有一定的参考价值,感兴趣的小伙伴们可以参考一下

本文为大家分享了python简单实现图片文字分割的具体代码,供大家参考,具体内容如下

原图:

python简单实现图片文字分割

图片预处理:图片二值化以及图片降噪处理。

# 图片二值化
def binarization(img,threshold):
  #图片二值化操作
  width,height=img.size
  im_new = img.copy()
  for i in range(width):
      for j in range(height):
          a = img.getpixel((i, j))
          aa = 0.30 * a[0] + 0.59 * a[1] + 0.11 * a[2]
          if (aa <= threshold):
              im_new.putpixel((i, j), (0, 0, 0))
          else:
              im_new.putpixel((i, j), (255, 255, 255))

  # im_new.show()  # 显示图像
  return im_new
# 图片降噪处理
def clear_noise(img):
  # 图片降噪处理

  x, y = img.width, img.height
  for i in range(x-1):
      for j in range(y-1):
          if sum_9_region(img, i, j) < 600:
              # 改变像素点颜色,白色
              img.putpixel((i, j), (255,255,255))
  # img = np.array(img)
  #     # cv2.imwrite('handle_two.png', img)
  #     # img = Image.open('handle_two.png')
  img.show()
  return img

# 获取田字格内当前像素点的像素值
def sum_9_region(img, x, y):
  """
  田字格
  """
  # 获取当前像素点的像素值

  a1 = img.getpixel((x - 1, y - 1))[0]
  a2 = img.getpixel((x - 1, y))[0]
  a3 = img.getpixel((x - 1, y+1 ))[0]
  a4 = img.getpixel((x, y - 1))[0]
  a5 = img.getpixel((x, y))[0]
  a6 = img.getpixel((x, y+1 ))[0]
  a7 = img.getpixel((x+1 , y - 1))[0]
  a8 = img.getpixel((x+1 , y))[0]
  a9 = img.getpixel((x+1 , y+1))[0]
  width = img.width
  height = img.height

  if a5 == 255:  # 如果当前点为白色区域,则不统计邻域值
      return 2550

  if y == 0:  # 第一行
      if x == 0:  # 左上顶点,4邻域
          # 中心点旁边3个点
          sum_1 = a5 + a6 + a8 + a9
          return 4*255 - sum_1
      elif x == width - 1:  # 右上顶点
          sum_2 = a5 + a6 + a2 + a3
          return 4*255 - sum_2
      else:  # 最上非顶点,6邻域
          sum_3 = a2 + a3+ a5 + a6 + a8 + a9
          return 6*255 - sum_3

  elif y == height - 1:  # 最下面一行
      if x == 0:  # 左下顶点
          # 中心点旁边3个点
          sum_4 = a5 + a8 + a7 + a4
          return 4*255 - sum_4
      elif x == width - 1:  # 右下顶点
          sum_5 = a5 + a4 + a2 + a1
          return 4*255 - sum_5
      else:  # 最下非顶点,6邻域
          sum_6 = a5+ a2 + a8 + a4 +a1 + a7
          return 6*255 - sum_6

  else:  # y不在边界
      if x == 0:  # 左边非顶点
          sum_7 = a4 + a5 + a6 + a7 + a8 + a9
          return 6*255 - sum_7
      elif x == width - 1:  # 右边非顶点
          sum_8 = a4 + a5 + a6 + a1 + a2 + a3
          return 6*255 - sum_8
      else:  # 具备9领域条件的
          sum_9 = a1 + a2 + a3 + a4 + a5 + a6 + a7 + a8 + a9
          return 9*255 - sum_9

经过二值化和降噪后得到的图片

python简单实现图片文字分割

对图片进行水平投影与垂直投影:

# 传入二值化后的图片进行垂直投影
def vertical(img):
  """传入二值化后的图片进行垂直投影"""
  pixdata = img.load()
  w,h = img.size
  ver_list = []
  # 开始投影
  for x in range(w):
      black = 0
      for y in range(h):
          if pixdata[x,y][0] == 0:
              black += 1
      ver_list.append(black)
  # 判断边界
  l,r = 0,0
  flag = False
  t=0#判断分割数量
  cuts = []
  for i,count in enumerate(ver_list):
      # 阈值这里为0
      if flag is False and count > 0:
          l = i
          flag = True
      if flag and count == 0:
          r = i-1
          flag = False
          cuts.append((l,r))#记录边界点
          t += 1
  #print(t)
  return cuts,t

# 传入二值化后的图片进行水平投影
def horizontal(img):
  """传入二值化后的图片进行水平投影"""
  pixdata = img.load()
  w,h = img.size
  ver_list = []
  # 开始投影
  for y in range(h):
      black = 0
      for x in range(w):
          if pixdata[x,y][0] == 0:
              black += 1
      ver_list.append(black)
  # 判断边界
  l,r = 0,0
  flag = False
  # 分割区域数
  t=0
  cuts = []
  for i,count in enumerate(ver_list):
      # 阈值这里为0
      if flag is False and count > 0:
          l = i
          flag = True
      if flag and count == 0:
          r = i-1
          flag = False
          cuts.append((l,r))
          t += 1
  return cuts,t

这两段代码目的主要是为了分割得到水平和垂直位置的每个字所占的大小,接下来就是对预处理好的图片文字进行分割。

# 创建获得图片路径并处理图片函数
def get_im_path():

  OpenFile = tk.Tk()#创建新窗口
  OpenFile.withdraw()
  file_path = filedialog.askopenfilename()

  im = Image.open(file_path)
  # 阈值
  th = getthreshold(im) - 16
  print(th)
  # 原图直接二值化
  im_new1 = binarization(im, th)
  im_new1.show()
  # 直方图均衡化
  im1 = his_bal(im)
  im1.show()
  im_new_np = np.array(his_bal(im))

  th1 = getthreshold(im1) - 16
  print(th1)
  # 二值化
  im_new = binarization(im1, th1)
  # 降噪
  im_new_cn = clear_noise(im_new)
  height = im_new_cn.size[1]
  print(height)
  # 算出水平投影和垂直投影的数值
  v, vt = vertical(im_new1)
  h, ht = horizontal(im_new1)
  # 算出分割区域
  a = []
  for i in range(vt):
      a.append((v[i][0], 0, v[i][1], height))
  print(a)

  im_new.show()  # 直方图均衡化后再二值化

  # 切割
  for i, n in enumerate(a, 1):
      temp = im_new_cn.crop(n)  # 调用crop函数进行切割
      temp.show()
      temp.save("c/%s.png" % i)

至此大概就完成了。

接下来是文件的全部代码:

import numpy as np
from PIL import Image
import queue
import  matplotlib.pyplot as plt
import  tkinter as tk
from tkinter import filedialog#导入文件对话框函数库

window = tk.Tk()
window.title('图片选择界面')
window.geometry('400x100')

var = tk.StringVar()


# 创建获得图片路径并处理图片函数
def get_im_path():

  OpenFile = tk.Tk()#创建新窗口
  OpenFile.withdraw()
  file_path = filedialog.askopenfilename()

  im = Image.open(file_path)
  # 阈值
  th = getthreshold(im) - 16
  print(th)
  # 原图直接二值化
  im_new1 = binarization(im, th)
  im_new1.show()
  # 直方图均衡化
  im1 = his_bal(im)
  im1.show()
  im_new_np = np.array(his_bal(im))

  th1 = getthreshold(im1) - 16
  print(th1)
  # 二值化
  im_new = binarization(im1, th1)
  # 降噪
  im_new_cn = clear_noise(im_new)
  height = im_new_cn.size[1]
  print(height)
  # 算出水平投影和垂直投影的数值
  v, vt = vertical(im_new1)
  h, ht = horizontal(im_new1)
  # 算出分割区域
  a = []
  for i in range(vt):
      a.append((v[i][0], 0, v[i][1], height))
  print(a)

  im_new.show()  # 直方图均衡化后再二值化

  # 切割
  for i, n in enumerate(a, 1):
      temp = im_new_cn.crop(n)  # 调用crop函数进行切割
      temp.show()
      temp.save("c/%s.png" % i)

# 传入二值化后的图片进行垂直投影
def vertical(img):
  """传入二值化后的图片进行垂直投影"""
  pixdata = img.load()
  w,h = img.size
  ver_list = []
  # 开始投影
  for x in range(w):
      black = 0
      for y in range(h):
          if pixdata[x,y][0] == 0:
              black += 1
      ver_list.append(black)
  # 判断边界
  l,r = 0,0
  flag = False
  t=0#判断分割数量
  cuts = []
  for i,count in enumerate(ver_list):
      # 阈值这里为0
      if flag is False and count > 0:
          l = i
          flag = True
      if flag and count == 0:
          r = i-1
          flag = False
          cuts.append((l,r))#记录边界点
          t += 1
  #print(t)
  return cuts,t

# 传入二值化后的图片进行水平投影
def horizontal(img):
  """传入二值化后的图片进行水平投影"""
  pixdata = img.load()
  w,h = img.size
  ver_list = []
  # 开始投影
  for y in range(h):
      black = 0
      for x in range(w):
          if pixdata[x,y][0] == 0:
              black += 1
      ver_list.append(black)
  # 判断边界
  l,r = 0,0
  flag = False
  # 分割区域数
  t=0
  cuts = []
  for i,count in enumerate(ver_list):
      # 阈值这里为0
      if flag is False and count > 0:
          l = i
          flag = True
      if flag and count == 0:
          r = i-1
          flag = False
          cuts.append((l,r))
          t += 1
  return cuts,t

# 获得阈值算出平均像素
def getthreshold(im):
  #获得阈值 算出平均像素
  wid, hei = im.size
  hist = [0] * 256
  th = 0
  for i in range(wid):
      for j in range(hei):
          gray = int(0.3 * im.getpixel((i, j))[0] + 0.59 * im.getpixel((i, j))[1] + 0.11 * im.getpixel((i, j))[2])
          th = gray + th
          hist[gray] += 1


  threshold = int(th/(wid*hei))
  return threshold

# 直方图均衡化 提高对比度
def his_bal(im):
  #直方图均衡化 提高对比度

  # 统计灰度直方图
  im_new = im.copy()
  wid, hei = im.size
  hist = [0] * 256
  for i in range(wid):
      for j in range(hei):
          gray = int(0.3*im.getpixel((i,j))[0]+0.59*im.getpixel((i,j))[1]+0.11*im.getpixel((i,j))[2])
          hist[gray] += 1

  # 计算累积分布函数
  cdf = [0] * 256
  for i in range(256):
      if i == 0:
          cdf[i] = hist[i]
      else:
          cdf[i] = cdf[i - 1] + hist[i]

  # 用累积分布函数计算输出灰度映射函数LUT
  new_gray = [0] * 256
  for i in range(256):
      new_gray[i] = int(cdf[i] / (wid * hei) * 255 + 0.5)

  # 遍历原图像,通过LUT逐点计算新图像对应的像素值
  for i in range(wid):
      for j in range(hei):
          gray = int(0.3*im.getpixel((i,j))[0]+0.59*im.getpixel((i,j))[1]+0.11*im.getpixel((i,j))[2])
          im_new.putpixel((i, j), new_gray[gray])
  return im_new

# 图片二值化
def binarization(img,threshold):
  #图片二值化操作
  width,height=img.size
  im_new = img.copy()
  for i in range(width):
      for j in range(height):
          a = img.getpixel((i, j))
          aa = 0.30 * a[0] + 0.59 * a[1] + 0.11 * a[2]
          if (aa <= threshold):
              im_new.putpixel((i, j), (0, 0, 0))
          else:
              im_new.putpixel((i, j), (255, 255, 255))

  # im_new.show()  # 显示图像
  return im_new

# 图片降噪处理
def clear_noise(img):
  # 图片降噪处理

  x, y = img.width, img.height
  for i in range(x-1):
      for j in range(y-1):
          if sum_9_region(img, i, j) < 600:
              # 改变像素点颜色,白色
              img.putpixel((i, j), (255,255,255))
  # img = np.array(img)
  #     # cv2.imwrite('handle_two.png', img)
  #     # img = Image.open('handle_two.png')
  img.show()
  return img

# 获取田字格内当前像素点的像素值
def sum_9_region(img, x, y):
  """
  田字格
  """
  # 获取当前像素点的像素值

  a1 = img.getpixel((x - 1, y - 1))[0]
  a2 = img.getpixel((x - 1, y))[0]
  a3 = img.getpixel((x - 1, y+1 ))[0]
  a4 = img.getpixel((x, y - 1))[0]
  a5 = img.getpixel((x, y))[0]
  a6 = img.getpixel((x, y+1 ))[0]
  a7 = img.getpixel((x+1 , y - 1))[0]
  a8 = img.getpixel((x+1 , y))[0]
  a9 = img.getpixel((x+1 , y+1))[0]
  width = img.width
  height = img.height

  if a5 == 255:  # 如果当前点为白色区域,则不统计邻域值
      return 2550

  if y == 0:  # 第一行
      if x == 0:  # 左上顶点,4邻域
          # 中心点旁边3个点
          sum_1 = a5 + a6 + a8 + a9
          return 4*255 - sum_1
      elif x == width - 1:  # 右上顶点
          sum_2 = a5 + a6 + a2 + a3
          return 4*255 - sum_2
      else:  # 最上非顶点,6邻域
          sum_3 = a2 + a3+ a5 + a6 + a8 + a9
          return 6*255 - sum_3

  elif y == height - 1:  # 最下面一行
      if x == 0:  # 左下顶点
          # 中心点旁边3个点
          sum_4 = a5 + a8 + a7 + a4
          return 4*255 - sum_4
      elif x == width - 1:  # 右下顶点
          sum_5 = a5 + a4 + a2 + a1
          return 4*255 - sum_5
      else:  # 最下非顶点,6邻域
          sum_6 = a5+ a2 + a8 + a4 +a1 + a7
          return 6*255 - sum_6

  else:  # y不在边界
      if x == 0:  # 左边非顶点
          sum_7 = a4 + a5 + a6 + a7 + a8 + a9
          return 6*255 - sum_7
      elif x == width - 1:  # 右边非顶点
          sum_8 = a4 + a5 + a6 + a1 + a2 + a3
          return 6*255 - sum_8
      else:  # 具备9领域条件的
          sum_9 = a1 + a2 + a3 + a4 + a5 + a6 + a7 + a8 + a9
          return 9*255 - sum_9

btn_Open = tk.Button(window,
  text='打开图像',      # 显示在按钮上的文字
  width=15, height=2,
  command=get_im_path)     # 点击按钮式执行的命令

btn_Open.pack()


# 运行整体窗口
window.mainloop()

以上就是本文的全部内容,希望对大家的学习有所帮助,也希望大家多多支持服务器之家。

原文链接:https://blog.csdn.net/weixin_43898483/article/details/110950073

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