• Keras 实例 MNIST


    原文链接:http://www.one2know.cn/keras_mnist/

    import numpy
    from keras.datasets import mnist
    from keras.models import Sequential
    from keras.layers import Dense # 稠密层
    from keras.layers import Dropout # Dropout将在训练过程中每次更新参数时按一定概率(rate)随机断开输入神经元,Dropout层用于防止过拟合。
    from keras.layers import Flatten # Flatten层用来将输入“压平”,即把多维的输入一维化,常用在从卷积层到全连接层的过渡。Flatten不影响batch的大小。
    from keras.layers.convolutional import Conv2D # 二维卷积层,即对图像的空域卷积。
    from keras.layers.convolutional import MaxPooling2D # 空间池化(也叫亚采样或下采样)降低了每个特征映射的维度,但是保留了最重要的信息
    from keras.utils import np_utils
    from keras import backend as K
    K.set_image_dim_ordering('th') # 设置图像的维度顺序(‘tf’或‘th’)
    # 当前的维度顺序如果为'th',则输入图片数据时的顺序为:channels,rows,cols,否则:rows,cols,channels
    
    seed = 7
    numpy.random.seed(seed)
    #将数据reshape,CNN的输入是4维的张量(可看做多维的向量),第一维是样本规模,第二维是像素通道,第三维和第四维是长度和宽度。并将数值归一化和类别标签向量化。
    
    # load data
    (X_train, y_train), (X_test, y_test) = mnist.load_data()
    # reshape to be [samples][pixels][width][height]
    X_train = X_train.reshape(X_train.shape[0], 1, 28, 28).astype('float32')
    X_test = X_test.reshape(X_test.shape[0], 1, 28, 28).astype('float32')
    
    X_train = X_train / 255
    X_test = X_test / 255
    # 将标签转化成one-hot编码
    y_train = np_utils.to_categorical(y_train)
    y_test = np_utils.to_categorical(y_test)
    num_classes = y_test.shape[1]
    
    ## 接下来构造CNN
    # 第一层是卷积层。该层有32个feature map,或者叫滤波器,作为模型的输入层,接受[pixels][width][height]大小的输入数据。feature_map的大小是5*5,其输出接一个‘relu’激活函数。
    # 下一层是pooling层,使用了MaxPooling,大小为2*2。
    # 下一层是Dropout层,该层的作用相当于对参数进行正则化来防止模型过拟合。
    # Flatten层用来将输入“压平”,即把多维的输入一维化,常用在从卷积层到全连接层的过渡。Flatten不影响batch的大小。
    # 接下来是全连接层,有128个神经元,激活函数采用‘relu’。
    # 最后一层是输出层,有10个神经元,每个神经元对应一个类别,输出值表示样本属于该类别的概率大小。
    def baseline_model():
        # create model
        model = Sequential()
        model.add(Conv2D(32, (5, 5), input_shape=(1, 28, 28), activation='relu'))
        model.add(MaxPooling2D(pool_size=(2, 2)))
        model.add(Dropout(0.2))
        model.add(Flatten())
        model.add(Dense(128, activation='relu'))
        model.add(Dense(num_classes, activation='softmax'))
        # Compile model
        model.compile(loss='categorical_crossentropy', optimizer='adam', metrics=['accuracy'])
        return model
    
    # 建立模型
    model = baseline_model()
    
    # 训练模型
    model.fit(X_train, y_train, validation_data=(X_test, y_test), epochs=10, batch_size=200, verbose=2)
    
    # 模型概要打印
    model.summary()
    
    # 模型评估
    scores = model.evaluate(X_test, y_test, verbose=0)
    print("Baseline Error: %.2f%%" % (100-scores[1]*100))
    

    输出:

    Train on 60000 samples, validate on 10000 samples
    Epoch 1/10
     - 68s - loss: 0.2247 - acc: 0.9358 - val_loss: 0.0776 - val_acc: 0.9754
    Epoch 2/10
     - 66s - loss: 0.0709 - acc: 0.9787 - val_loss: 0.0444 - val_acc: 0.9853
    Epoch 3/10
     - 67s - loss: 0.0511 - acc: 0.9843 - val_loss: 0.0435 - val_acc: 0.9855
    Epoch 4/10
     - 66s - loss: 0.0392 - acc: 0.9880 - val_loss: 0.0391 - val_acc: 0.9873
    Epoch 5/10
     - 66s - loss: 0.0325 - acc: 0.9898 - val_loss: 0.0341 - val_acc: 0.9893
    Epoch 6/10
     - 65s - loss: 0.0266 - acc: 0.9918 - val_loss: 0.0318 - val_acc: 0.9890
    Epoch 7/10
     - 65s - loss: 0.0221 - acc: 0.9929 - val_loss: 0.0348 - val_acc: 0.9886
    Epoch 8/10
     - 65s - loss: 0.0191 - acc: 0.9941 - val_loss: 0.0308 - val_acc: 0.9890
    Epoch 9/10
     - 66s - loss: 0.0153 - acc: 0.9951 - val_loss: 0.0325 - val_acc: 0.9897
    Epoch 10/10
     - 65s - loss: 0.0143 - acc: 0.9957 - val_loss: 0.0301 - val_acc: 0.9903
    _________________________________________________________________
    Layer (type)                 Output Shape              Param #   
    =================================================================
    conv2d_1 (Conv2D)            (None, 32, 24, 24)        832       
    _________________________________________________________________
    max_pooling2d_1 (MaxPooling2 (None, 32, 12, 12)        0         
    _________________________________________________________________
    dropout_1 (Dropout)          (None, 32, 12, 12)        0         
    _________________________________________________________________
    flatten_1 (Flatten)          (None, 4608)              0         
    _________________________________________________________________
    dense_1 (Dense)              (None, 128)               589952    
    _________________________________________________________________
    dense_2 (Dense)              (None, 10)                1290      
    =================================================================
    Total params: 592,074
    Trainable params: 592,074
    Non-trainable params: 0
    _________________________________________________________________
    Baseline Error: 0.97%
    
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  • 原文地址:https://www.cnblogs.com/peng8098/p/11158315.html
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