• tensorflow实现验证码识别案例


    1、知识点

    """
    验证码分析:
        对图片进行分析:
                    1、分割识别
                    2、整体识别
    输出:[3,5,7]  -->softmax转为概率[0.04,0.16,0.8] ---> 交叉熵计算损失值 (目标值和预测值的对数) 
    tf.argmax(预测值,2)
    验证码样例:[NAZP] [XCVB] [WEFW] ,都是字母的
    """

    2、将数据写入TFRecords

    import tensorflow as tf
    import os
    os.environ['TF_CPP_MIN_LOG_LEVEL'] = '2'
    
    
    FLAGS = tf.app.flags.FLAGS
    tf.app.flags.DEFINE_string("tfrecords_dir", "./tfrecords/captcha.tfrecords", "验证码tfrecords文件")
    tf.app.flags.DEFINE_string("captcha_dir", "../data/Genpics/", "验证码图片路径")
    tf.app.flags.DEFINE_string("letter", "ABCDEFGHIJKLMNOPQRSTUVWXYZ", "验证码字符的种类")
    
    
    def dealwithlabel(label_str):
    
        # 构建字符索引 {0:'A', 1:'B'......}
        num_letter = dict(enumerate(list(FLAGS.letter)))
    
        # 键值对反转 {'A':0, 'B':1......}
        letter_num = dict(zip(num_letter.values(), num_letter.keys()))
    
        print(letter_num)
    
        # 构建标签的列表
        array = []
    
        # 给标签数据进行处理[[b"NZPP"]......]
        for string in label_str:
    
            letter_list = []# [1,2,3,4]
    
            # 修改编码,b'FVQJ'到字符串,并且循环找到每张验证码的字符对应的数字标记
            for letter in string.decode('utf-8'):
                letter_list.append(letter_num[letter])
    
            array.append(letter_list)
    
        # [[13, 25, 15, 15], [22, 10, 7, 10], [22, 15, 18, 9], [16, 6, 13, 10], [1, 0, 8, 17], [0, 9, 24, 14].....]
        print(array)
    
        # 将array转换成tensor类型
        label = tf.constant(array)
    
        return label
    
    
    def get_captcha_image():
        """
        获取验证码图片数据
        :param file_list: 路径+文件名列表
        :return: image
        """
        # 构造文件名
        filename = []
    
        for i in range(6000):
            string = str(i) + ".jpg"
            filename.append(string)
    
        # 构造路径+文件
        file_list = [os.path.join(FLAGS.captcha_dir, file) for file in filename]
    
        # 构造文件队列
        file_queue = tf.train.string_input_producer(file_list, shuffle=False)
    
        # 构造阅读器
        reader = tf.WholeFileReader()
    
        # 读取图片数据内容
        key, value = reader.read(file_queue)
    
        # 解码图片数据
        image = tf.image.decode_jpeg(value)
    
        image.set_shape([20, 80, 3])
    
        # 批处理数据 [6000, 20, 80, 3]
        image_batch = tf.train.batch([image], batch_size=6000, num_threads=1, capacity=6000)
    
        return image_batch
    
    
    def get_captcha_label():
        """
        读取验证码图片标签数据
        :return: label
        """
        file_queue = tf.train.string_input_producer(["../data/Genpics/labels.csv"], shuffle=False)
    
        reader = tf.TextLineReader()
    
        key, value = reader.read(file_queue)
    
        records = [[1], ["None"]]
    
        number, label = tf.decode_csv(value, record_defaults=records)
    
        # [["NZPP"], ["WKHK"], ["ASDY"]]
        label_batch = tf.train.batch([label], batch_size=6000, num_threads=1, capacity=6000)
    
        return label_batch
    
    
    def write_to_tfrecords(image_batch, label_batch):
        """
        将图片内容和标签写入到tfrecords文件当中
        :param image_batch: 特征值
        :param label_batch: 标签纸
        :return: None
        """
        # 转换类型
        label_batch = tf.cast(label_batch, tf.uint8)
    
        print(label_batch)
    
        # 建立TFRecords 存储器
        writer = tf.python_io.TFRecordWriter(FLAGS.tfrecords_dir)
    
        # 循环将每一个图片上的数据构造example协议块,序列化后写入
        for i in range(6000):
            # 取出第i个图片数据,转换相应类型,图片的特征值要转换成字符串形式
            image_string = image_batch[i].eval().tostring()
    
            # 标签值,转换成整型
            label_string = label_batch[i].eval().tostring()
    
            # 构造协议块
            example = tf.train.Example(features=tf.train.Features(feature={
                "image": tf.train.Feature(bytes_list=tf.train.BytesList(value=[image_string])),
                "label": tf.train.Feature(bytes_list=tf.train.BytesList(value=[label_string]))
            }))
    
            writer.write(example.SerializeToString())
    
        # 关闭文件
        writer.close()
    
        return None
    
    
    if __name__ == "__main__":
    
        # 获取验证码文件当中的图片
        image_batch = get_captcha_image()
    
        # 获取验证码文件当中的标签数据
        label = get_captcha_label()
    
        print(image_batch, label)
    
        with tf.Session() as sess:
    
            coord = tf.train.Coordinator()
    
            threads = tf.train.start_queue_runners(sess=sess, coord=coord)
    
            # [b'NZPP' b'WKHK' b'WPSJ' ..., b'FVQJ' b'BQYA' b'BCHR']
            label_str = sess.run(label)
    
            print(label_str)
    
            # 处理字符串标签到数字张量
            label_batch = dealwithlabel(label_str)
    
            print(label_batch)
    
            # 将图片数据和内容写入到tfrecords文件当中
            write_to_tfrecords(image_batch, label_batch)
    
            coord.request_stop()
    
            coord.join(threads)
    View Code

    3、数据存在百度云(小白号)

    4、标准代码

    import tensorflow as tf
    
    FLAGS = tf.app.flags.FLAGS
    
    tf.app.flags.DEFINE_string("captcha_dir", "./tfrecords/captcha.tfrecords", "验证码数据的路径")
    tf.app.flags.DEFINE_integer("batch_size", 100, "每批次训练的样本数")
    tf.app.flags.DEFINE_integer("label_num", 4, "每个样本的目标值数量")
    tf.app.flags.DEFINE_integer("letter_num", 26, "每个目标值取的字母的可能心个数")
    
    
    # 定义一个初始化权重的函数
    def weight_variables(shape):
        w = tf.Variable(tf.random_normal(shape=shape, mean=0.0, stddev=1.0))
        return w
    
    
    # 定义一个初始化偏置的函数
    def bias_variables(shape):
        b = tf.Variable(tf.constant(0.0, shape=shape))
        return b
    
    
    def read_and_decode():
        """
        读取验证码数据API
        :return: image_batch, label_batch
        """
        # 1、构建文件队列
        file_queue = tf.train.string_input_producer([FLAGS.captcha_dir])
    
        # 2、构建阅读器,读取文件内容,默认一个样本
        reader = tf.TFRecordReader()
    
        # 读取内容
        key, value = reader.read(file_queue)
    
        # tfrecords格式example,需要解析
        features = tf.parse_single_example(value, features={
            "image": tf.FixedLenFeature([], tf.string),
            "label": tf.FixedLenFeature([], tf.string),
        })
    
        # 解码内容,字符串内容
        # 1、先解析图片的特征值
        image = tf.decode_raw(features["image"], tf.uint8)
        # 1、先解析图片的目标值
        label = tf.decode_raw(features["label"], tf.uint8)
    
        # print(image, label)
    
        # 改变形状
        image_reshape = tf.reshape(image, [20, 80, 3])
    
        label_reshape = tf.reshape(label, [4])
    
        print(image_reshape, label_reshape)
    
        # 进行批处理,每批次读取的样本数 100, 也就是每次训练时候的样本
        image_batch, label_btach = tf.train.batch([image_reshape, label_reshape], batch_size=FLAGS.batch_size, num_threads=1, capacity=FLAGS.batch_size)
    
        print(image_batch, label_btach)
        return image_batch, label_btach
    
    
    def fc_model(image):
        """
        进行预测结果
        :param image: 100图片特征值[100, 20, 80, 3]
        :return: y_predict预测值[100, 4 * 26]
        """
        with tf.variable_scope("model"):
            # 将图片数据形状转换成二维的形状
            image_reshape = tf.reshape(image, [-1, 20 * 80 * 3])
    
            # 1、随机初始化权重偏置
            # matrix[100, 20 * 80 * 3] * [20 * 80 * 3, 4 * 26] + [104] = [100, 4 * 26]
            weights = weight_variables([20 * 80 * 3, 4 * 26])
            bias = bias_variables([4 * 26])
    
            # 进行全连接层计算[100, 4 * 26]
            y_predict = tf.matmul(tf.cast(image_reshape, tf.float32), weights) + bias
    
        return y_predict
    
    
    def predict_to_onehot(label):
        """
        将读取文件当中的目标值转换成one-hot编码
        :param label: [100, 4]      [[13, 25, 15, 15], [19, 23, 20, 16]......]
        :return: one-hot
        """
        # 进行one_hot编码转换,提供给交叉熵损失计算,准确率计算[100, 4, 26]
        label_onehot = tf.one_hot(label, depth=FLAGS.letter_num, on_value=1.0, axis=2)
    
        print(label_onehot)
    
        return label_onehot
    
    
    def captcharec():
        """
        验证码识别程序
        :return:
        """
        # 1、读取验证码的数据文件 label_btch [100 ,4]
        image_batch, label_batch = read_and_decode()
    
        # 2、通过输入图片特征数据,建立模型,得出预测结果
        # 一层,全连接神经网络进行预测
        # matrix [100, 20 * 80 * 3] * [20 * 80 * 3, 4 * 26] + [104] = [100, 4 * 26]
        y_predict = fc_model(image_batch)
    
        #  [100, 4 * 26]
        print(y_predict)
    
        # 3、先把目标值转换成one-hot编码 [100, 4, 26]
        y_true = predict_to_onehot(label_batch)
    
        # 4、softmax计算, 交叉熵损失计算
        with tf.variable_scope("soft_cross"):
            # 求平均交叉熵损失 ,y_true [100, 4, 26]--->[100, 4*26]
            loss = tf.reduce_mean(tf.nn.softmax_cross_entropy_with_logits(
                labels=tf.reshape(y_true, [FLAGS.batch_size, FLAGS.label_num * FLAGS.letter_num]),
                logits=y_predict))
        # 5、梯度下降优化损失
        with tf.variable_scope("optimizer"):
    
            train_op = tf.train.GradientDescentOptimizer(0.01).minimize(loss)
    
        # 6、求出样本的每批次预测的准确率是多少 三维比较
        with tf.variable_scope("acc"):
    
            # 比较每个预测值和目标值是否位置(4)一样    y_predict [100, 4 * 26]---->[100, 4, 26]
            equal_list = tf.equal(tf.argmax(y_true, 2), tf.argmax(tf.reshape(y_predict, [FLAGS.batch_size, FLAGS.label_num, FLAGS.letter_num]), 2))
    
            # equal_list  100个样本   [1, 0, 1, 0, 1, 1,..........]
            accuracy = tf.reduce_mean(tf.cast(equal_list, tf.float32))
    
        # 定义一个初始化变量的op
        init_op = tf.global_variables_initializer()
    
        # 开启会话训练
        with tf.Session() as sess:
            sess.run(init_op)
    
            # 定义线程协调器和开启线程(有数据在文件当中读取提供给模型)
            coord = tf.train.Coordinator()
    
            # 开启线程去运行读取文件操作
            threads = tf.train.start_queue_runners(sess, coord=coord)
    
            # 训练识别程序
            for i in range(5000):
    
                sess.run(train_op)
    
                print("第%d批次的准确率为:%f" % (i, accuracy.eval()))
    
            # 回收线程
            coord.request_stop()
    
            coord.join(threads)
    
        return None
    
    
    if __name__ == "__main__":
        captcharec()
    View Code

    5、自写代码

    # coding = utf-8
    
    import tensorflow as tf
    from tensorflow.contrib.slim.python.slim.nets.inception_v3 import inception_v3_base
    import  os
    """
    验证码分析:
        对图片进行分析:
                    1、分割识别
                    2、整体识别
    输出:[3,5,7]  -->softmax转为概率[0.04,0.16,0.8] ---> 交叉熵计算损失值 (目标值和预测值的对数) 
    tf.argmax(预测值,2)
    """
    FLAGS = tf.app.flags.FLAGS
    tf.app.flags.DEFINE_string("captcha_dir","./tfrecords/captcha.tfrecords","验证码数据路径")
    tf.app.flags.DEFINE_integer("batch_size",100,"读取批次")
    tf.app.flags.DEFINE_integer("label_num", 4, "每个样本的目标值数量")
    tf.app.flags.DEFINE_integer("letter_num", 26, "每个目标值取的字母的可能心个数")
    
    
    def weight_variable(shape):
        w = tf.Variable(tf.random_normal(shape=shape,mean=0.0,stddev=1.0,))
        return w
    def bias_variable(shape):
        b = tf.Variable(tf.random_normal(shape=shape,mean=0.0,stddev=1.0))
        return b
    
    def captcharec():
        """
        验证码识别
        :return:
        """
        #1、读取验证码的数据文件
        file_queue = tf.train.string_input_producer([FLAGS.captcha_dir])
    
        #2、创建阅读器,解析example
        reader = tf.TFRecordReader()
        key ,value = reader.read(file_queue)
        features = tf.parse_single_example(value,features={
            "image":tf.FixedLenFeature([],tf.string),
            "label": tf.FixedLenFeature([], tf.string)
        })
        #解码操作
        image = tf.decode_raw(features["image"],tf.uint8)
        label = tf.decode_raw(features["label"],tf.uint8)
        print(image,label)
    
        #修改形状
        image_reshape = tf.reshape(image,[20,80,3])
        label_reshape = tf.reshape(label, [4])
    
        #进行批处理,每次读取100个样本
        image_batch,label_batch = tf.train.batch([image_reshape,label_reshape],batch_size=100,num_threads=1,capacity=20)
        print(image_batch, label_batch)
        return image_batch,label_batch
    
    def fc_model(image_batch):
        #1、初始化权重和偏置
        w = weight_variable([20*80*3,4*26])
        b = bias_variable([4*26])
    
    
        #模型 x [100,20*80*3]  w [20*80*3,4]          y_true [100,4]
        #对输入进行矩阵转换
        image = tf.reshape(image_batch,[-1,20*80*3])
        y_predict = tf.matmul(tf.cast(image,tf.float32),w) + b
    
        ############收集变量########
        tf.summary.histogram("w",w)
        tf.summary.histogram("b",b)
        merged = tf.summary.merge_all()
        return y_predict,merged
    
    #[100,4]
    def predict_to_onehot(label_batch):
        y_true = tf.one_hot(label_batch,on_value=1.0,depth=26,axis=2)
        return y_true
    
    
    if __name__ == '__main__':
        image_batch, label_batch = captcharec()
        y_predict,merged_his =fc_model(image_batch)
        y_true = predict_to_onehot(label_batch)
    
        #计算交叉熵
        loss = tf.reduce_mean(tf.nn.softmax_cross_entropy_with_logits(labels=tf.reshape(y_true,[100,4*26]),logits=y_predict))
    
        #梯度下降优化
        train_op = tf.train.GradientDescentOptimizer(0.001).minimize(loss)
    
        #准确率
        equal_list = tf.equal(tf.argmax(y_true,2),tf.argmax(tf.reshape(y_predict,[100,4,26]),2))
        accuracy = tf.reduce_mean(tf.cast(equal_list,tf.float32))
    
        #####收集变量###############
        tf.summary.scalar("losses",loss)
        tf.summary.scalar("accuracy",accuracy)
        merged_scalar = tf.summary.merge_all()
    
        ############保存模型####
        saver = tf.train.Saver()
    
        init_op = tf.global_variables_initializer()
        with tf.Session() as sess:
            sess.run(init_op)
    
            fileWriter = tf.summary.FileWriter("./vc",graph=sess.graph)
            #创建线程协调器
            coord = tf.train.Coordinator()
    
            #开启线程
            threads = tf.train.start_queue_runners(sess,coord=coord)
            IS_TRAIN =1
    
            # if os.path.exists("./vertifycode/checkpoint"):
            #     IS_TRAIN = 0
    
            if IS_TRAIN==1:
                #######训练模型###############
                # if os.path.exists("./vertifycode/checkpoint"):
                #     saver.restore(sess, "./vertifycode/vertifycode_model")
    
                for i in range(2000):
                    sess.run(train_op)
                    summary_his = sess.run(merged_his)
                    summary_scalar = sess.run(merged_scalar)
                    fileWriter.add_summary(summary_scalar,i)
                    fileWriter.add_summary(summary_his,i)
                    print("训练第%d次的准确率为:%f" %(i,accuracy.eval()))
    
                #######保存模型#############
                saver.save(sess,"./vertifycode/vertifycode_model")
            else:
                ##########测试模型##################
                for i in range(10):
                    saver.restore(sess, "./vertifycode/vertifycode_model")
                    # print("第%d张图片的准确率为:%f" % (
                    #     i,
                    #     tf.argmax(y_test, 2).eval(),
                    #     tf.argmax(y_predict,2).eval()
                    #                           ))
    
            #停止线程
            coord.request_stop()
            coord.join(threads)
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  • 原文地址:https://www.cnblogs.com/ywjfx/p/10940665.html
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