深度学习-mnist手写体识别

 

 

mnist手写体识别

Mnist数据集可以从官网下载,网址: http://yann.lecun.com/exdb/mnist/ 下载下来的数据集被分成两部分:55000行的训练数据集(mnist.train)和10000行的测试数据集(mnist.test)。每一个MNIST数据单元有两部分组成:一张包含手写数字的图片和一个对应的标签。我们把这些图片设为“xs”,把这些标签设为“ys”。训练数据集和测试数据集都包含xs和ys,比如训练数据集的图片是 mnist.train.images ,训练数据集的标签是 mnist.train.labels。

我们可以知道图片是黑白图片,每一张图片包含28像素X28像素。我们把这个数组展开成一个向量,长度是 28x28 = 784。因此,在MNIST训练数据集中,mnist.train.images 是一个形状为 [60000, 784] 的张量。

 

MNIST中的每个图像都具有相应的标签,0到9之间的数字表示图像中绘制的数字。用的是one-hot编码

单层(全连接层)实现手写数字识别

1,定义数据占位符 特征值[None,784] 目标值[None,10]

with tf.variable_scope("data"):
    x = tf.placeholder(tf.float32,[None,784])
    y_true = tf.placeholder(tf.float32,[None,10])

2,建立模型 随机初始化权重和偏置,w[784,10],b= [10] y_predict = tf.matmul(x,w)+b

with tf.variable_scope("model"):
    w = tf.Variable(tf.random_normal([784,10],mean=0.0,stddev=1.0))
    b = tf.Variable(tf.constant(0.0,shape=[10]))
    y_predict = tf.matmul(x,w)+b

3,计算损失 loss 平均样本损失

with tf.variable_scope("compute_loss"):
    loss = tf.reduce_mean(tf.nn.softmax_cross_entropy_with_logits(labels=y_true,logits=y_predict))

4,梯度下降优化 0.1 步数 2000 从而得出准确率

with tf.variable_scope("optimizer"):
    train_op = tf.train.GradientDescentOptimizer(0.1).minimize(loss)

5,模型评估 argmax() reduce_mean

with tf.variable_scope("acc"):
    eq = tf.equal(tf.argmax(y_true, 1), tf.argmax(y_predict, 1))
    accuracy = tf.reduce_mean(tf.cast(eq,tf.float32))

加载mnist数据集

import tensorflow as tf
# 这里我们利用tensorflow给好的读取数据的方法
from tensorflow.examples.tutorials.mnist import input_data
def full_connected():
    # 加载mnist数据集
    mnist = input_data.read_data_sets("data/mnist/input_data",one_hot=True)

 

运行结果

accuracy: 0.08
accuracy: 0.08
accuracy: 0.1
accuracy: 0.1
accuracy: 0.1
accuracy: 0.1
accuracy: 0.1
accuracy: 0.1
accuracy: 0.14
accuracy: 0.14
accuracy: 0.16
accuracy: 0.16
accuracy: 0.18
accuracy: 0.2
accuracy: 0.2
accuracy: 0.2
accuracy: 0.24
accuracy: 0.24
accuracy: 0.24
accuracy: 0.26
accuracy: 0.26
accuracy: 0.26
accuracy: 0.28
accuracy: 0.28
accuracy: 0.3
accuracy: 0.3
accuracy: 0.32
accuracy: 0.32
accuracy: 0.32
accuracy: 0.36
accuracy: 0.4
accuracy: 0.4
accuracy: 0.4
accuracy: 0.42
accuracy: 0.44
accuracy: 0.44
accuracy: 0.44
accuracy: 0.44
accuracy: 0.44
accuracy: 0.46
accuracy: 0.46
accuracy: 0.46
accuracy: 0.46
accuracy: 0.46
accuracy: 0.48
accuracy: 0.48
accuracy: 0.48
accuracy: 0.48
accuracy: 0.48
accuracy: 0.48
accuracy: 0.52
accuracy: 0.52
accuracy: 0.54
accuracy: 0.54
accuracy: 0.54
accuracy: 0.54
accuracy: 0.56
accuracy: 0.56
accuracy: 0.56
accuracy: 0.58
accuracy: 0.6
accuracy: 0.6
accuracy: 0.62
accuracy: 0.62
accuracy: 0.62
accuracy: 0.62
accuracy: 0.62
accuracy: 0.62
accuracy: 0.62
accuracy: 0.62
accuracy: 0.62
accuracy: 0.62
accuracy: 0.62
accuracy: 0.62
accuracy: 0.64
accuracy: 0.66
accuracy: 0.66
accuracy: 0.66
accuracy: 0.66
accuracy: 0.66
accuracy: 0.66
accuracy: 0.68
accuracy: 0.7
accuracy: 0.7
accuracy: 0.7
accuracy: 0.7
accuracy: 0.72
accuracy: 0.74
accuracy: 0.76
accuracy: 0.78
accuracy: 0.78
accuracy: 0.8
accuracy: 0.8
accuracy: 0.82
accuracy: 0.82
accuracy: 0.82
accuracy: 0.84
accuracy: 0.84
accuracy: 0.84
accuracy: 0.84
Process finished with exit code 0

 对于使用下面的式子当作损失函数不太理解的:

tf.nn.softmax_cross_entropy_with_logits

请看这篇随笔:https://www.cnblogs.com/TimVerion/p/11237087.html

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转载自www.cnblogs.com/TimVerion/p/11237063.html