• tensorFlow(六)应用-基于CNN破解验证码


    TensorFlow基础见前博客

    简介

    传统的验证码识别算法一般需要把验证码分割为单个字符,然后逐个识别。本教程将验证码识别问题转化为分类的问题,实现对验证码进行整体识别。

    步骤简介

    本教程一共分为四个部分
    • generate_captcha.py - 利用 Captcha 库生成验证码;
    • captcha_model.py - CNN 模型;
    • train_captcha.py - 训练 CNN 模型;
    • predict_captcha.py - 识别验证码。

    数据学习

    安装 captcha 库

    pip install captcha

    获取训练数据

    本教程使用的验证码由数字、大写字母、小写字母组成,每个验证码包含 4 个字符,总共有 62^4 种组合,所以一共有 62^4 种不同的验证码。

    generate_captcha.py

    #-*- coding:utf-8 -*-
    from captcha.image import ImageCaptcha
    from PIL import Image
    import numpy as np
    import random
    import string
    
    class generateCaptcha():
        def __init__(self,
                     width = 160,#验证码图片的宽
                     height = 60,#验证码图片的高
                     char_num = 4,#验证码字符个数
                     characters = string.digits + string.ascii_uppercase + string.ascii_lowercase):#验证码组成,数字+大写字母+小写字母
            self.width = width
            self.height = height
            self.char_num = char_num
            self.characters = characters
            self.classes = len(characters)
    
        def gen_captcha(self,batch_size = 50):
            X = np.zeros([batch_size,self.height,self.width,1])
            img = np.zeros((self.height,self.width),dtype=np.uint8)
            Y = np.zeros([batch_size,self.char_num,self.classes])
            image = ImageCaptcha(width = self.width,height = self.height)
    
            while True:
                for i in range(batch_size):
                    captcha_str = ''.join(random.sample(self.characters,self.char_num))
                    img = image.generate_image(captcha_str).convert('L')
                    img = np.array(img.getdata())
                    X[i] = np.reshape(img,[self.height,self.width,1])/255.0
                    for j,ch in enumerate(captcha_str):
                        Y[i,j,self.characters.find(ch)] = 1
                Y = np.reshape(Y,(batch_size,self.char_num*self.classes))
                yield X,Y
    
        def decode_captcha(self,y):
            y = np.reshape(y,(len(y),self.char_num,self.classes))
            return ''.join(self.characters[x] for x in np.argmax(y,axis = 2)[0,:])
    
        def get_parameter(self):
            return self.width,self.height,self.char_num,self.characters,self.classes
    
        def gen_test_captcha(self):
            image = ImageCaptcha(width = self.width,height = self.height)
            captcha_str = ''.join(random.sample(self.characters,self.char_num))
            img = image.generate_image(captcha_str)
            img.save(captcha_str + '.jpg')
    
            X = np.zeros([1,self.height,self.width,1])
            Y = np.zeros([1,self.char_num,self.classes])
            img = img.convert('L')
            img = np.array(img.getdata())
            X[0] = np.reshape(img,[self.height,self.width,1])/255.0
            for j,ch in enumerate(captcha_str):
                Y[0,j,self.characters.find(ch)] = 1
            Y = np.reshape(Y,(1,self.char_num*self.classes))
            return X,Y

    理解训练数据

    • X:一个 mini-batch 的训练数据,其 shape 为 [ batch_size, height, width, 1 ],batch_size 表示每批次多少个训练数据,height 表示验证码图片的高,width 表示验证码图片的宽,1 表示图片的通道。
    • Y:X 中每个训练数据属于哪一类验证码,其形状为 [ batch_size, class ] ,对验证码中每个字符进行 One-Hot 编码,所以 class 大小为 4*62。
    执行:
    • 获取验证码和对应的分类
    cd /home/ubuntu;
    python
    from generate_captcha import generateCaptcha
    g = generateCaptcha()
    X,Y = g.gen_test_captcha()
    • 查看训练数据
    X.shape
    Y.shape

    可以在 /home/ubuntu 目录下查看生成的验证码,jpg 格式的图片可以点击查看。

    模型学习

    CNN 模型

      总共 5 层网络,前 3 层为卷积层,第 4、5 层为全连接层。对 4 层隐藏层都进行 dropout。网络结构如下所示: input——>conv——>pool——>dropout——>conv——>pool——>dropout——>conv——>pool——>dropout——>fully connected layer——>dropout——>fully connected layer——>output
     
    示例代码:
    # -*- coding: utf-8 -*
    import tensorflow as tf
    import math
    
    class captchaModel():
        def __init__(self,
                     width = 160,
                     height = 60,
                     char_num = 4,
                     classes = 62):
            self.width = width
            self.height = height
            self.char_num = char_num
            self.classes = classes
    
        def conv2d(self,x, W):
            return tf.nn.conv2d(x, W, strides=[1, 1, 1, 1], padding='SAME')
    
        def max_pool_2x2(self,x):
            return tf.nn.max_pool(x, ksize=[1, 2, 2, 1],
                                  strides=[1, 2, 2, 1], padding='SAME')
    
        def weight_variable(self,shape):
            initial = tf.truncated_normal(shape, stddev=0.1)
            return tf.Variable(initial)
    
        def bias_variable(self,shape):
            initial = tf.constant(0.1, shape=shape)
            return tf.Variable(initial)
    
        def create_model(self,x_images,keep_prob):
            #first layer
            w_conv1 = self.weight_variable([5, 5, 1, 32])
            b_conv1 = self.bias_variable([32])
            h_conv1 = tf.nn.relu(tf.nn.bias_add(self.conv2d(x_images, w_conv1), b_conv1))
            h_pool1 = self.max_pool_2x2(h_conv1)
            h_dropout1 = tf.nn.dropout(h_pool1,keep_prob)
            conv_width = math.ceil(self.width/2)
            conv_height = math.ceil(self.height/2)
    
            #second layer
            w_conv2 = self.weight_variable([5, 5, 32, 64])
            b_conv2 = self.bias_variable([64])
            h_conv2 = tf.nn.relu(tf.nn.bias_add(self.conv2d(h_dropout1, w_conv2), b_conv2))
            h_pool2 = self.max_pool_2x2(h_conv2)
            h_dropout2 = tf.nn.dropout(h_pool2,keep_prob)
            conv_width = math.ceil(conv_width/2)
            conv_height = math.ceil(conv_height/2)
    
            #third layer
            w_conv3 = self.weight_variable([5, 5, 64, 64])
            b_conv3 = self.bias_variable([64])
            h_conv3 = tf.nn.relu(tf.nn.bias_add(self.conv2d(h_dropout2, w_conv3), b_conv3))
            h_pool3 = self.max_pool_2x2(h_conv3)
            h_dropout3 = tf.nn.dropout(h_pool3,keep_prob)
            conv_width = math.ceil(conv_width/2)
            conv_height = math.ceil(conv_height/2)
    
            #first fully layer
            conv_width = int(conv_width)
            conv_height = int(conv_height)
            w_fc1 = self.weight_variable([64*conv_width*conv_height,1024])
            b_fc1 = self.bias_variable([1024])
            h_dropout3_flat = tf.reshape(h_dropout3,[-1,64*conv_width*conv_height])
            h_fc1 = tf.nn.relu(tf.nn.bias_add(tf.matmul(h_dropout3_flat, w_fc1), b_fc1))
            h_fc1_drop = tf.nn.dropout(h_fc1, keep_prob)
    
            #second fully layer
            w_fc2 = self.weight_variable([1024,self.char_num*self.classes])
            b_fc2 = self.bias_variable([self.char_num*self.classes])
            y_conv = tf.add(tf.matmul(h_fc1_drop, w_fc2), b_fc2)
    
            return y_conv

    训练 CNN 模型

    每批次采用 64 个训练样本,每 100 次循环采用 100 个测试样本检查识别准确度,当准确度大于 99% 时,训练结束,采用 GPU 需要 4-5 个小时左右,CPU 大概需要 20 个小时左右。

    示例代码:

    现在您可以在 /home/ubuntu 目录下创建源文件 train_captcha.py,内容可参考:
    #-*- coding:utf-8 -*-
    import tensorflow as tf
    import numpy as np
    import string
    import generate_captcha
    import captcha_model
    
    if __name__ == '__main__':
        captcha = generate_captcha.generateCaptcha()
        width,height,char_num,characters,classes = captcha.get_parameter()
    
        x = tf.placeholder(tf.float32, [None, height,width,1])
        y_ = tf.placeholder(tf.float32, [None, char_num*classes])
        keep_prob = tf.placeholder(tf.float32)
    
        model = captcha_model.captchaModel(width,height,char_num,classes)
        y_conv = model.create_model(x,keep_prob)
        cross_entropy = tf.reduce_mean(tf.nn.sigmoid_cross_entropy_with_logits(labels=y_,logits=y_conv))
        train_step = tf.train.AdamOptimizer(1e-4).minimize(cross_entropy)
    
        predict = tf.reshape(y_conv, [-1,char_num, classes])
        real = tf.reshape(y_,[-1,char_num, classes])
        correct_prediction = tf.equal(tf.argmax(predict,2), tf.argmax(real,2))
        correct_prediction = tf.cast(correct_prediction, tf.float32)
        accuracy = tf.reduce_mean(correct_prediction)
    
        saver = tf.train.Saver()
        with tf.Session() as sess:
            sess.run(tf.global_variables_initializer())
            step = 1
            while True:
                batch_x,batch_y = next(captcha.gen_captcha(64))
                _,loss = sess.run([train_step,cross_entropy],feed_dict={x: batch_x, y_: batch_y, keep_prob: 0.75})
                print ('step:%d,loss:%f' % (step,loss))
                if step % 100 == 0:
                    batch_x_test,batch_y_test = next(captcha.gen_captcha(100))
                    acc = sess.run(accuracy, feed_dict={x: batch_x_test, y_: batch_y_test, keep_prob: 1.})
                    print ('###############################################step:%d,accuracy:%f' % (step,acc))
                    if acc > 0.99:
                        saver.save(sess,"./capcha_model.ckpt")
                        break
                step += 1

    然后执行:

    cd /home/ubuntu;
    python train_captcha.py

    执行结果:

    step:75193,loss:0.010931
    step:75194,loss:0.012859
    step:75195,loss:0.008747
    step:75196,loss:0.009147
    step:75197,loss:0.009351
    step:75198,loss:0.009746
    step:75199,loss:0.010014
    step:75200,loss:0.009024
    ###############################################step:75200,accuracy:0.992500
    View Code

    使用训练好的模型:

    作为实验,你可以通过调整 train_captcha.py 文件中 if acc > 0.99: 代码行的准确度节省训练时间(比如将 0.99 为 0.01),体验训练过程;我们已经通过长时间的训练得到了一个训练好的模型,可以通过如下命令将训练集下载到本地。
     
    wget http://tensorflow-1253902462.cosgz.myqcloud.com/captcha/capcha_model.zip
    unzip -o capcha_model.zip

    识别验证码

    测试数据集:

    我们在腾讯云的 COS 上准备了 100 个验证码作为测试集,使用 wget 命令获取:
    wget http://tensorflow-1253902462.cosgz.myqcloud.com/captcha/captcha.zip
    unzip -q captcha.zip

    然后执行:

    cd /home/ubuntu;
    python predict_captcha.py captcha/0hWn.jpg

    执行结果:

    0hWn
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  • 原文地址:https://www.cnblogs.com/fclbky/p/9646780.html
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