求助 Python 大神关于 tensorflow 预测手写数字 - V2EX
V2EX = way to explore
V2EX 是一个关于分享和探索的地方
现在注册
已注册用户请  登录
lvming6816077
V2EX    机器学习

求助 Python 大神关于 tensorflow 预测手写数字

  •  
  •   lvming6816077 2019-04-18 17:42:29 +08:00 2231 次点击
    这是一个创建于 2404 天前的主题,其中的信息可能已经有所发展或是发生变。

    本人属于新手入门,憋了几天尝试写了一个 demo,模型是可以训练出来,但是不知道如何将自己写的数字进行预测,代码在这里,总是报错。。 https://github.com/lvming6816077/pythontensorflow/blob/master/tensor9.py

    4 条回复    2019-04-21 16:02:01 +08:00
    wuyifar
        1
    wuyifar  
       2019-04-18 18:16:40 +08:00
    把报错的内容贴出来吧
    lvming6816077
        2
    lvming6816077  
    OP
       2019-04-19 08:47:33 +08:00
    You must feed a value for placeholder tensor 'y' with dtype int64
    lvming6816077
        3
    lvming6816077  
    OP
       2019-04-19 08:48:51 +08:00
    关键代码
    y = tf.placeholder(tf.int64, shape=(None), name = 'y')
    prediction = tf.argmax(y, 1)
    predint = prediction.eval(feed_dict={X: result}, session=sess)
    print(result)
    lvming6816077
        4
    lvming6816077  
    OP
       2019-04-21 16:02:01 +08:00
    # import tensorflow as tf
    # dnn 神经网络
    import os
    os.environ['TF_CPP_MIN_LOG_LEVEL'] = '2'

    # x = tf.Variable(3, name="x")
    # y = tf.Variable(4, name="y")
    # f = x*x*y + y + 2

    # # way1
    # sess = tf.Session()
    # sess.run(x.initializer)
    # sess.run(y.initializer)
    # result = sess.run(f)

    # print(result)
    # sess.close()

    from tensorflow.examples.tutorials.mnist import input_data
    import tensorflow as tf
    from sklearn.metrics import accuracy_score
    import numpy as np

    if __name__ == '__main__':
    n_inputs = 28 * 28
    n_hidden1 = 300
    n_hidden2 = 100
    n_outputs = 10

    mnist = input_data.read_data_sets("tmp/data/")

    X_train = mnist.train.images
    X_test = mnist.test.images
    y_train = mnist.train.labels.astype("int")
    y_test = mnist.test.labels.astype("int")

    X = tf.placeholder(tf.float32, shape= (None, n_inputs), name='X')
    y = tf.placeholder(tf.int64, shape=(None), name = 'y')

    with tf.name_scope('dnn'):
    hidden1 = tf.layers.dense(X, n_hidden1, activation=tf.nn.relu
    ,name= 'hidden1')

    hidden2 = tf.layers.dense(hidden1, n_hidden2, name='hidden2',
    activation= tf.nn.relu)

    logits = tf.layers.dense(hidden2, n_outputs, name='outputs')

    with tf.name_scope('loss'):
    xentropy = tf.nn.sparse_softmax_cross_entropy_with_logits(labels = y,
    logits = logits)
    loss = tf.reduce_mean(xentropy, name='loss')#所有值求平均

    learning_rate = 0.01

    with tf.name_scope('train'):
    optimizer = tf.train.GradientDescentOptimizer(learning_rate)
    training_op = optimizer.minimize(loss)

    with tf.name_scope('eval'):
    correct = tf.nn.in_top_k(logits ,y ,1)#是否与真值一致 返回布尔值
    accuracy = tf.reduce_mean(tf.cast(correct, tf.float32)) #tf.cast 将数据转化为 0,1 序列

    init = tf.global_variables_initializer()

    n_epochs = 20
    batch_size = 50

    # with tf.Session() as sess:
    # saver = tf.train.Saver()
    # init.run()
    # for epoch in range(n_epochs):
    # for iteration in range(mnist.train.num_examples // batch_size):
    # X_batch, y_batch = mnist.tain.next_batch(batch_size)
    # sess.run(training_op,feed_dict={X:X_batch,
    # y: y_batch})
    # acc_train = accuracy.eval(feed_dict={X:X_batch,
    # y: y_batch})
    # acc_test = accuracy.eval(feed_dict={X: mnist.test.images,
    # y: mnist.test.labels})
    # print(X_batch.shape)
    # print(epoch, "Train accuracy:", acc_train, "Test accuracy:", acc_test)

    # # # saver.restore(sess, "./my_model_final_mnist.ckpt") # or better, use save_path
    # save_path = saver.save(sess, "./tensor9/my_model_final.ckpt")


    from PIL import Image, ImageFilter
    # import tensorflow as tf

    def imageprepare():
    file_name = './5.png' # 图片路径
    myimage = Image.open(file_name).convert('L') # 转换成灰度图
    tv = list(myimage.getdata()) # 获取像素值
    # 转换像素范围到[0 1], 0 是纯白 1 是纯黑
    tva = [(255-x)*1.0/255.0 for x in tv]
    # print(tva)
    tva = np.array(tva)
    # print(tva)
    return tva

    result = imageprepare().reshape(1,784)
    print(mnist.test.images.shape)
    print(result.reshape(1,784).shape)
    # init = tf.global_variables_initializer()
    # saver = tf.train.Saver

    with tf.Session() as sess:
    sess.run(init)
    saver = tf.train.import_meta_graph('./tensor9/my_model_final.ckpt.meta') # 载入模型结构
    saver.restore(sess, './tensor9/my_model_final.ckpt') # 载入模型参数

    y = tf.nn.softmax(y) # 为了打印出预测值,我们这里增加一步通过 softmax 函数处理后来输出一个向量
    # y = tf.cast(y, tf.int64)
    # result = sess.run(y, feed_dict={X: result})

    # graph = tf.get_default_graph() # 计算图
    # # x = graph.get_tensor_by_name("x:0") # 从模型中获取张量 x
    # y = graph.get_tensor_by_name("y:0") # 从模型中获取张量 y
    # y = tf.placeholder(tf.int64, shape=(None), name = 'y')
    X = tf.placeholder(tf.float32, shape= (None, n_inputs), name='X')
    # y =
    prediction = tf.argmax(y, 1)
    predint = prediction.eval(feed_dict={X: result}, session=sess)
    print(result)
    关于     帮助文档     自助推广系统     博客     API     FAQ     Solana     2501 人在线   最高记录 6679       Select Language
    创意工作者们的社区
    World is powered by solitude
    VERSION: 3.9.8.5 23ms UTC 15:06 PVG 23:06 LAX 07:06 JFK 10:06
    Do have faith in what you're doing.
    ubao msn snddm index pchome yahoo rakuten mypaper meadowduck bidyahoo youbao zxmzxm asda bnvcg cvbfg dfscv mmhjk xxddc yybgb zznbn ccubao uaitu acv GXCV ET GDG YH FG BCVB FJFH CBRE CBC GDG ET54 WRWR RWER WREW WRWER RWER SDG EW SF DSFSF fbbs ubao fhd dfg ewr dg df ewwr ewwr et ruyut utut dfg fgd gdfgt etg dfgt dfgd ert4 gd fgg wr 235 wer3 we vsdf sdf gdf ert xcv sdf rwer hfd dfg cvb rwf afb dfh jgh bmn lgh rty gfds cxv xcv xcs vdas fdf fgd cv sdf tert sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf sdf shasha9178 shasha9178 shasha9178 shasha9178 shasha9178 liflif2 liflif2 liflif2 liflif2 liflif2 liblib3 liblib3 liblib3 liblib3 liblib3 zhazha444 zhazha444 zhazha444 zhazha444 zhazha444 dende5 dende denden denden2 denden21 fenfen9 fenf619 fen619 fenfe9 fe619 sdf sdf sdf sdf sdf zhazh90 zhazh0 zhaa50 zha90 zh590 zho zhoz zhozh zhozho zhozho2 lislis lls95 lili95 lils5 liss9 sdf0ty987 sdft876 sdft9876 sdf09876 sd0t9876 sdf0ty98 sdf0976 sdf0ty986 sdf0ty96 sdf0t76 sdf0876 df0ty98 sf0t876 sd0ty76 sdy76 sdf76 sdf0t76 sdf0ty9 sdf0ty98 sdf0ty987 sdf0ty98 sdf6676 sdf876 sd876 sd876 sdf6 sdf6 sdf9876 sdf0t sdf06 sdf0ty9776 sdf0ty9776 sdf0ty76 sdf8876 sdf0t sd6 sdf06 s688876 sd688 sdf86