重庆分公司,新征程启航

为企业提供网站建设、域名注册、服务器等服务

CNN-cr-10-优化

import numpy as np

创新互联专业提供成都主机托管四川主机托管成都服务器托管四川服务器托管,支持按月付款!我们的承诺:贵族品质、平民价格,机房位于中国电信/网通/移动机房,德阳服务器托管服务有保障!

 

# 序列化和反序列化

import pickle

 

from sklearn.preprocessing import OneHotEncoder

 

import warnings

warnings.filterwarnings('ignore')

 

import tensorflow as tf

数据加载(使用pickle)

def unpickle(file):

    import pickle

    with open(file, 'rb') as fo:

        dict = pickle.load(fo, encoding='ISO-8859-1')

    return dict

labels = []

X_train = []

for i in range(1,6):

    data = unpickle('./cifar-10-batches-py/data_batch_%d'%(i))

    labels.append(data['labels'])

    X_train.append(data['data'])

# 将list类型转换为ndarray

X_train = np.array(X_train)

 

y_train = np.array(labels).reshape(-1)

 

# reshape

X_train = X_train.reshape(-1,3072)

 

# 目标值概率

one_hot = OneHotEncoder()

y_train =one_hot.fit_transform(y_train.reshape(-1,1)).toarray()

 

# 测试数据加载

test = unpickle('./cifar-10-batches-py/test_batch')

X_test = test['data']

y_test = one_hot.transform(np.array(test['labels']).reshape(-1,1)).toarray()

# 从总数据中获取一批数据

index = 0

def next_batch(X,y):

    global index

    batch_X = X[index*128:(index+1)*128]

    batch_y = y[index*128:(index+1)*128]

    index+=1

    if index == 390:

        index = 0

    return batch_X,batch_y

构建神经网络

1.生成对应卷积核

2.tf.nn.conv2d进行卷积运算

3.归一化操作tf.layers.batch_normalization

4.激活函数(relu)

5.池化操作

X = tf.placeholder(dtype=tf.float32,shape = [None,3072])

y = tf.placeholder(dtype=tf.float32,shape = [None,10])

kp = tf.placeholder(dtype=tf.float32)

 

def gen_v(shape,std = 5e-2):

    return tf.Variable(tf.truncated_normal(shape = shape,stddev=std))

 

def conv(input_,filter_,b):

    conv = tf.nn.conv2d(input_,filter_,strides=[1,1,1,1],padding='SAME') + b

    conv = tf.layers.batch_normalization(conv,training=True)

    conv = tf.nn.relu(conv)

    return tf.nn.max_pool(conv,[1,3,3,1],[1,2,2,1],'SAME')

 

def net_work(X,kp):

#     形状改变,4维

    input_ = tf.reshape(X,shape = [-1,32,32,3])

#     第一层

    filter1 = gen_v(shape = [3,3,3,64])

    b1 = gen_v(shape = [64])

    pool1 = conv(input_,filter1,b1)

    

#     第二层

    filter2 = gen_v([3,3,64,128])

    b2 = gen_v(shape = [128])

    pool2 = conv(pool1,filter2,b2)

    

#     第三层

    filter3 = gen_v([3,3,128,256])

    b3 = gen_v([256])

    pool3 = conv(pool2,filter3,b3)

    

#     第一层全连接层

    dense = tf.reshape(pool3,shape = [-1,4*4*256])

    fc1_w = gen_v(shape = [4*4*256,1024])

    fc1_b = gen_v([1024])

    bn_fc_1 = tf.layers.batch_normalization(tf.matmul(dense,fc1_w) + fc1_b,training=True)

    function(){ //智汇返佣 http://www.kaifx.cn/broker/thinkmarkets.html

    relu_fc_1 = tf.nn.relu(bn_fc_1)

#     fc1.shape = [-1,1024]

    

    

#     dropout

    dp = tf.nn.dropout(relu_fc_1,keep_prob=kp)

    

#     fc2 输出层

    out_w = gen_v(shape = [1024,10])

    out_b = gen_v(shape = [10])

    out = tf.matmul(dp,out_w) + out_b

    return out

损失函数准确率&最优化

out = net_work(X,kp)

loss = tf.reduce_mean(tf.nn.softmax_cross_entropy_with_logits_v2(labels=y,logits=out))

# 准确率

y_ = tf.nn.softmax(out)

# equal 相当于==

equal = tf.equal(tf.argmax(y,axis = -1),tf.argmax(y_,axis = 1))

accuracy = tf.reduce_mean(tf.cast(equal,tf.float32))

 

opt = tf.train.AdamOptimizer(0.01).minimize(loss)

opt

开启训练

saver = tf.train.Saver()

epoches = 100

with tf.Session() as sess:

    sess.run(tf.global_variables_initializer())

    for i in range(epoches):

        batch_X,batch_y = next_batch(X_train,y_train)

        opt_,loss_ ,score_train= sess.run([opt,loss,accuracy],feed_dict = {X:batch_X,y:batch_y,kp:0.5})

        print('iter count:%d。mini_batch loss:%0.4f。训练数据上的准确率:%0.4f。测试数据上准确率:%0.4f'%

              (i+1,loss_,score_train,score_test))

        if score_train > 0.6:

            saver.save(sess,'./model/estimator',i+1)

    saver.save(sess,'./model/estimator',i+1)

    score_test = sess.run(accuracy,feed_dict = {X:X_test,y:y_test,kp:1.0})

    print('测试数据上的准确率:',score_test)

iter count:1。mini_batch loss:3.1455。训练数据上的准确率:0.0938。测试数据上准确率:0.2853

iter count:2。mini_batch loss:3.9139。训练数据上的准确率:0.2891。测试数据上准确率:0.2853

iter count:3。mini_batch loss:5.1961。训练数据上的准确率:0.1562。测试数据上准确率:0.2853

iter count:4。mini_batch loss:3.9102。训练数据上的准确率:0.2344。测试数据上准确率:0.2853

iter count:5。mini_batch loss:4.1278。训练数据上的准确率:0.1719。测试数据上准确率:0.2853

 

.....

iter count:97。mini_batch loss:1.5752。训练数据上的准确率:0.4844。测试数据上准确率:0.2853

iter count:98。mini_batch loss:1.8480。训练数据上的准确率:0.3906。测试数据上准确率:0.2853

iter count:99。mini_batch loss:1.5662。训练数据上的准确率:0.5391。测试数据上准确率:0.2853

iter count:100。mini_batch loss:1.7489。训练数据上的准确率:0.4141。测试数据上准确率:0.2853

测试数据上的准确率: 0.4711

epoches = 1100

with tf.Session() as sess:

    saver.restore(sess,'./model/estimator-100')

    for i in range(100,epoches):

        batch_X,batch_y = next_batch(X_train,y_train)

        opt_,loss_ ,score_train= sess.run([opt,loss,accuracy],feed_dict = {X:batch_X,y:batch_y,kp:0.5})

        print('iter count:%d。mini_batch loss:%0.4f。训练数据上的准确率:%0.4f。测试数据上准确率:%0.4f'%

              (i+1,loss_,score_train,score_test))

        if score_train > 0.6:

            saver.save(sess,'./model/estimator',i+1)

    saver.save(sess,'./model/estimator',i+1)

    if (i%100 == 0) and (i != 100):

        score_test = sess.run(accuracy,feed_dict = {X:X_test,y:y_test,kp:1.0})

        print('----------------测试数据上的准确率:---------------',score_test)

iter count:101。mini_batch loss:1.4157。训练数据上的准确率:0.5234。测试数据上准确率:0.4711

iter count:102。mini_batch loss:1.6045。训练数据上的准确率:0.4375。测试数据上准确率:0.4711

....

iter count:748。mini_batch loss:0.6842。训练数据上的准确率:0.7734。测试数据上准确率:0.4711

iter count:749。mini_batch loss:0.6560。训练数据上的准确率:0.8203。测试数据上准确率:0.4711

iter count:750。mini_batch loss:0.7151。训练数据上的准确率:0.7578。测试数据上准确率:0.4711

iter count:751。mini_batch loss:0.8092。训练数据上的准确率:0.7344。测试数据上准确率:0.4711

iter count:752。mini_batch loss:0.7394。训练数据上的准确率:0.7422。测试数据上准确率:0.4711

iter count:753。mini_batch loss:0.8732。训练数据上的准确率:0.7188。测试数据上准确率:0.4711

iter count:754。mini_batch loss:0.8762。训练数据上的准确率:0.6953。测试数据上准确率:0.4711

准确率高达80%,博主亲测,以上准确率数据部分展示,大家可以多训练几次。哈哈哈~~~


新闻名称:CNN-cr-10-优化
转载注明:http://cqcxhl.com/article/jpppig.html

其他资讯

在线咨询
服务热线
服务热线:028-86922220
TOP