• 手写神经网络Python深度学习


    import numpy
    import scipy.special
    import matplotlib.pyplot as plt
    import scipy.misc
    import glob
    import imageio
    import scipy.ndimage
    
    class neuralNetWork:
      def __init__(self,inputnodes,hiddennodes,outputnodes,learningrate):
        self.inodes = inputnodes
        self.hnodes = hiddennodes
        self.onodes = outputnodes
    
        self.wih = numpy.random.normal(0.0,pow(self.inodes, -0.5),(self.hnodes,self.inodes))
        self.who = numpy.random.normal(0.0,pow(self.hnodes, -0.5),(self.onodes,self.hnodes))
        
        self.lr = learningrate
    
        self.activation_function = lambda x: scipy.special.expit(x) # 激活函数
        self.inverse_activation_function = lambda x: scipy.special.logit(x) # 反向查询log激活函数
    
      def train(self,inputs_list,targets_list):
        inputs = numpy.array(inputs_list,ndmin=2).T
        targets = numpy.array(targets_list,ndmin=2).T
    
        hidden_inputs = numpy.dot(self.wih,inputs)
        hidden_outputs = self.activation_function(hidden_inputs)
    
        final_inputs = numpy.dot(self.who,hidden_outputs)
        final_outputs = self.activation_function(final_inputs)
    
        output_errors = targets - final_outputs
        hidden_errors = numpy.dot(self.who.T,output_errors)
    
        self.who += self.lr * numpy.dot((output_errors * final_outputs * (1.0 - final_outputs)),numpy.transpose(hidden_outputs))
        self.wih += self.lr * numpy.dot((hidden_errors * hidden_outputs * (1.0 - hidden_outputs)),numpy.transpose(inputs))
    
      def query(self,inputs_list):
        inputs = numpy.array(inputs_list,ndmin=2).T
    
        hidden_inputs = numpy.dot(self.wih,inputs)
        hidden_outputs = self.activation_function(hidden_inputs)
        final_inputs = numpy.dot(self.who,hidden_outputs)
        final_outputs = self.activation_function(final_inputs)
    
        return final_outputs
      def backquery(self, targets_list):
        final_outputs = numpy.array(targets_list, ndmin=2).T
      
        final_inputs = self.inverse_activation_function(final_outputs)
        hidden_outputs = numpy.dot(self.who.T, final_inputs)
        
        hidden_outputs -= numpy.min(hidden_outputs)
        hidden_outputs /= numpy.max(hidden_outputs)
        hidden_outputs *= 0.98
        hidden_outputs += 0.01
    
        hidden_inputs = self.inverse_activation_function(hidden_outputs)
        inputs = numpy.dot(self.wih.T, hidden_inputs)
        inputs -= numpy.min(inputs)
        inputs /= numpy.max(inputs)
        inputs *= 0.98
        inputs += 0.01
        
        return inputs
      
    
    input_nodes = 784
    hidden_nodes = 200
    output_nodes = 10
    learing_rate = 0.1
    n = neuralNetWork(input_nodes,hidden_nodes,output_nodes,learing_rate)
    
    train_data_file = open('mnist_train.csv', 'r')
    train_data_list = train_data_file.readlines()
    train_data_file.close()
    
    epochs = 5
    for e in range(epochs):
      for record in train_data_list:
        all_values = record.split(',')
        #image_array = numpy.asfarray(all_values[1:]).reshape((28,28))
        #plt.imshow(image_array,cmap='Greys',interpolation='None')
        #plt.show()
        inputs = (numpy.asfarray(all_values[1:])/255.0 *0.99)+0.01
        targets = numpy.zeros(output_nodes) + 0.01
        targets[int(all_values[0])] = 0.99
        n.train(inputs,targets)
    
        #手写字体倾斜10度作为测试数据
        inputs_plusx_img = scipy.ndimage.interpolation.rotate(inputs.reshape(28,28), 10, cval=0.01, order=1, reshape=False)
        n.train(inputs_plusx_img.reshape(784), targets)
        inputs_minusx_img = scipy.ndimage.interpolation.rotate(inputs.reshape(28,28), -10, cval=0.01, order=1, reshape=False)
        n.train(inputs_minusx_img.reshape(784), targets)
    
    
    test_data_file = open('mnist_test.csv', 'r')
    test_data_list = test_data_file.readlines()
    test_data_file.close()
    # all_values = test_data_list[0].split(',')
    
    # # image_array = numpy.asfarray(all_values[1:]).reshape((28,28))
    # # plt.imshow(image_array,cmap='Greys',interpolation='None')
    # # plt.show()
    
    # output = n.query((numpy.asfarray(all_values[1:])/ 255.0 * 0.99)+0.01)
    
    
    scorecard = []
    for record in test_data_list:
      all_values = record.split(',')
      correct_label = int(all_values[0])
      #print(correct_label,'correct_label')
      inputs = (numpy.asfarray(all_values[1:])/255.0 *0.99)+0.01
      outputs = n.query(inputs)
      label = numpy.argmax(outputs)
      #print(label,'network answer')
      if (label == correct_label):
        scorecard.append(1)
      else:
        scorecard.append(0)
    scorecard_array = numpy.asarray(scorecard)
    print("performance = ",scorecard_array.sum() / scorecard_array.size)
    
    # 识别自己手写字
    our_own_dataset = []
    
    for image_file_name in glob.glob('2828_my_own_?.png'):
      label = int(image_file_name[-5:-4])
      
      print ("loading ... ", image_file_name)
      img_array = imageio.imread(image_file_name, as_gray=True)
      img_data  = 255.0 - img_array.reshape(784)
      
      img_data = (img_data / 255.0 * 0.99) + 0.01
      print(numpy.min(img_data))
      print(numpy.max(img_data))
      
      record = numpy.append(label,img_data)
      our_own_dataset.append(record)
    
    item = 2
    plt.imshow(our_own_dataset[item][1:].reshape(28,28), cmap='Greys', interpolation='None')
    correct_label = our_own_dataset[item][0]
    inputs = our_own_dataset[item][1:]
    
    outputs = n.query(inputs)
    print (outputs)
    
    label = numpy.argmax(outputs)
    print("network says ", label)
    if (label == correct_label):
        print ("match!")
    else:
        print ("no match!")
    
    # 反向生成图像
    label = 0
    targets = numpy.zeros(output_nodes) + 0.01
    targets[label] = 0.99
    print(targets)
    
    image_data = n.backquery(targets)
    
    plt.imshow(image_data.reshape(28,28), cmap='Greys', interpolation='None')
  • 相关阅读:
    物理CPU,物理核,逻辑CPU,虚拟CPU(vCPU)区别 (转)
    JVM学习一:常用JVM配置参数
    docker架构
    Linux查看服务器配置
    redis清缓存
    httpclient源码分析之 PoolingHttpClientConnectionManager 获取连接 (转)
    CentOs7.6配置邮件服务并发送邮件
    linux之dmesg命令
    docker部署springboot项目
    如何查看文件是dos格式还是unix格式的?
  • 原文地址:https://www.cnblogs.com/Erick-L/p/11785905.html
Copyright © 2020-2023  润新知