【问题标题】:create a dataset that has the same format as the cifar-10 data set创建与 cifar-10 数据集格式相同的数据集
【发布时间】:2017-05-15 16:51:27
【问题描述】:

我想创建一个与 cifar-10 数据集格式相同的数据集,以用于 Tensorflow。它应该有图像和标签。基本上,我希望能够采用 cifar-10 代码但不同的图像和标签,并运行该代码。我还没有找到任何关于如何在线执行此操作的信息,并且对机器学习完全陌生。

【问题讨论】:

  • 您基本上已经描述了您需要什么:您需要找到一组带有标签的新图像。您可以 a) 查找现有的一组图像和标签,或者 b) 下载您自己的图像并自己标记它们。现有的 60,000 张图像(50,000 次训练/10,000 次测试)不适合您的用例?这是开始执行计算机视觉的一个非常棒的数据集。
  • 向我们提供有关 cifar-10 数据集的更多信息,以便我们能够帮助您创建相同的结构。不知道 cifar-10 数据集是如何构建的人没有时间研究它来帮助你。

标签: python machine-learning tensorflow deep-learning supervised-learning


【解决方案1】:

CIFAR-10 是更大的dataset 的子集。您需要的图像是具有三个颜色通道的高度和宽度为 32 像素的缩放彩色图像。实现目标的一种方法是从 CIFAR-100 数据集中选择 10 个不同的标签开始,保存并运行现有代码。例如,您可能想要选择车辆 1 和车辆 2 超类。这将为您提供 6000 个标记图像,涵盖:自行车、公共汽车、摩托车、皮卡车、火车、割草机、火箭、有轨电车、坦克和拖拉机类。然后,您可以构建车辆类型的预测器——这是一种更熟悉机器学习的非常酷的方法。 :-)

在 cifar10.py 文件中,您可以看到用于从“http://www.cs.toronto.edu/~kriz/cifar-10-binary.tar.gz”下载的训练文件的目录。无需更改任何代码,您只需使用您的数据更新这些膨胀的训练文件。查看 /tmp/cifar10_data/cifar-10-batches-bin 目录。例如。 batches.meta.txt 文件包含此处“二进制版本”部分所述的标签:https://www.cs.toronto.edu/~kriz/cifar.html

【讨论】:

    【解决方案2】:

    我也必须这样做,并制作了一堆函数来将图像和文本文件格式化为 tensorflow 的可读格式。这是我在一个名为 images 的文件夹中使用一组图像(我使用 glob 遍历它们)和一个包含编码图像信息的文本文件所做的修改(我为每个图像设置了一系列数字,其中数字描述了用户在拍摄每张图像时引导机器人的位置)。我做了一个函数来生成小批量,并创建一个训练和测试数据集。我还将与每个图像关联的数字转换为单热向量以适应(如果需要,可以使用它,但可能没有用)。

    #!/usr/bin/python
    import cv2
    import numpy as np
    import tensorflow as tf
    import glob
    import re
    import random
    
    
    # Parameters
    learning_rate = 0.001
    training_iters = 20000
    batch_size = 120
    display_step = 10
    
    # Network Parameters
    n_input = 784 # MNIST data input (img shape: 28*28)
    n_classes = 1 # MNIST total classes (0-9 digits)
    dropout = 0.75 # Dropout, probability to keep units
    
    image = np.reshape(np.asarray(mnist.train.images[0]), (28,28))
    
    #Process Images
    
    cv_img = []
    for img in glob.glob("./images/*.jpeg"):
        n  = cv2.cvtColor(cv2.resize(cv2.imread(img), (28,28)), cv2.COLOR_BGR2GRAY)
        n = np.asarray(n)
        n = np.reshape(n, n_input)
        cv_img.append(n)
    
    #Process File for angle, here we read the text line by line and make a list
    with open("./images/allinfo.txt") as f:
        content = f.readlines()
    
    #Initialize arrays to unpack data file
    angle = []
    image_number = []
    
    
    #Iterate through the text list and split each one by the comma separating the values. 
    #Turn the text into floats for use in the network
    for i in range(len(content)):
        content[i] = content[i][:-1].split(',')
        image_number.append(float(content[i][1]))
        angle.append(float(content[i][7]))
    
    #Divide both angle and image number into test and train data sets
    angle = np.atleast_2d(angle).T
    
    
    ##Encode angle into 10 classes (it ranges -1 to 1)
    for i in range(len(angle)):
        angle[i] = random.uniform(-1,1)
        angle[i] = int((angle[i]+1.0)*n_classes/2.)
    
    
    #Create a one-hot version of angle
    angle_one_hot = np.zeros((len(angle),n_classes))
    
    for c in range(len(angle)):
        one_hot = np.zeros(n_classes)
        one_hot[int(angle[c])] = 1
        angle_one_hot[c] = one_hot
    
    
    image_number = np.atleast_2d(image_number).T
    test_data =  np.hstack((image_number, angle))
    #print test_data
    train_percent = .8
    train_number = int(len(test_data)*train_percent)
    train_data = np.zeros((train_number, 2))
    for i in range(train_number):
        rand = random.randrange(0,len(test_data))
        train_data[i] = test_data[rand]
        test_data = np.delete(test_data, rand, 0)
    test_data_images = test_data[:,0]
    test_data_angles = test_data[:,1]
    train_data_images, train_data_angles = train_data[:,0], train_data[:,1]
    
    
    
    def gen_batch(angles, images, batch_size, image_array=cv_img):
        indices = random.sample(xrange(0,len(images)), batch_size)
        batch_images = []
        batch_angles = []
     #   print angles
        for i in range(batch_size):
            batch_images.append(image_array[int(images[indices[i]])][:])
            batch_angles.append(angles[indices[i]])
        batch_images = np.asarray(batch_images)
        batch_angles = np.asarray(batch_angles)
    
        return batch_images, batch_angles
    
    
    # tf Graph input
    x = tf.placeholder(tf.float32, [None, n_input])
    y = tf.placeholder(tf.float32)
    keep_prob = tf.placeholder(tf.float32) #dropout (keep probability)
    
    # Create some wrappers for simplicity
    def conv2d(x, W, b, strides=1):
        # Conv2D wrapper, with bias and relu activation
        x = tf.nn.conv2d(x, W, strides=[1, strides, strides, 1], padding='SAME')
        x = tf.nn.bias_add(x, b)
        return tf.nn.relu(x)
    
    
    def maxpool2d(x, k=2):
        # MaxPool2D wrapper
        return tf.nn.max_pool(x, ksize=[1, k, k, 1], strides=[1, k, k, 1],
                              padding='SAME')
    
    
    # Create model
    def conv_net(x, weights, biases, dropout):
        # Reshape input picture
        x = tf.reshape(x, shape=[-1, 28, 28, 1])
    
        # Convolution Layer
        conv1 = conv2d(x, weights['wc1'], biases['bc1'])
        # Max Pooling (down-sampling)
        conv1 = maxpool2d(conv1, k=2)
    
        # Convolution Layer
        conv2 = conv2d(conv1, weights['wc2'], biases['bc2'])
        # Max Pooling (down-sampling)
        conv2 = maxpool2d(conv2, k=2)
    
        # Fully connected layer
        # Reshape conv2 output to fit fully connected layer input
        fc1 = tf.reshape(conv2, [-1, weights['wd1'].get_shape().as_list()[0]])
        fc1 = tf.add(tf.matmul(fc1, weights['wd1']), biases['bd1'])
        fc1 = tf.nn.relu(fc1)
        # Apply Dropout
        fc1 = tf.nn.dropout(fc1, dropout)
    
        # Output, class prediction
        out = tf.add(tf.matmul(fc1, weights['out']), biases['out'])
        return out
    
    # Store layers weight & bias
    weights = {
        # 5x5 conv, 1 input, 32 outputs
        'wc1': tf.Variable(tf.random_normal([5, 5, 1, 32])),
        # 5x5 conv, 32 inputs, 64 outputs
        'wc2': tf.Variable(tf.random_normal([5, 5, 32, 64])),
        # fully connected, 7*7*64 inputs, 1024 outputs
        'wd1': tf.Variable(tf.random_normal([7*7*64, 1024])),
        # 1024 inputs, 10 outputs (class prediction)
        'out': tf.Variable(tf.random_normal([1024, n_classes]))
    }
    
    biases = {
        'bc1': tf.Variable(tf.random_normal([32])),
        'bc2': tf.Variable(tf.random_normal([64])),
        'bd1': tf.Variable(tf.random_normal([1024])),
        'out': tf.Variable(tf.random_normal([n_classes]))
    }
    
    # Construct model
    pred = conv_net(x, weights, biases, keep_prob)
    
    # Define loss and optimizer
    #cost = tf.reduce_mean(tf.nn.softmax_cross_entropy_with_logits(pred, y))
    cost = tf.reduce_mean(pred)
    optimizer = tf.train.AdamOptimizer(learning_rate=learning_rate).minimize((pred-y)**2)
    
    # Evaluate model
    correct_pred = y
    accuracy = tf.reduce_mean(tf.cast(correct_pred, tf.float32))
    
    # Initializing the variables
    init = tf.initialize_all_variables()
    
    # Launch the graph
    with tf.Session() as sess:
        sess.run(init)
        step = 1
        print(y)
        # Keep training until reach max iterations
        while step * batch_size < training_iters:
            batch_x, batch_y = gen_batch(train_data_angles, train_data_images, batch_size)
            #cv2.imshow('trash', batch_x[0,:].reshape((28,28)))
            #cv2.waitKey(0)
            #print(batch_y)
            # Run optimization op (backprop)
            sess.run(optimizer, feed_dict={x: batch_x, y: batch_y,
                                           keep_prob: dropout})
            if step % display_step == 0:
                # Calculate batch loss and accuracy
                loss, acc = sess.run([cost, accuracy], feed_dict={x: batch_x,
                                                                  y: batch_y,
                                                                  keep_prob: 1.})
                print "Iter " + str(step*batch_size) + ", Minibatch Loss= " + \
                      "{:.6f}".format(loss) + ", Training Accuracy= " + \
                      "{:.5f}".format(acc)
            step += 1
        print "Optimization Finished!"
    
        # Calculate accuracy for all test images
        img, lbls = gen_batch(test_data_angles, test_data_images, len(test_data_angles))
        print "Testing Accuracy:", \
            sess.run(accuracy, feed_dict={x: img,
                                          y: lbls,
                                          keep_prob: 1.})
    

    这不是一个好的nn(数据没有归一化,学习率是2,训练精度还没有编程)但是图像处理代码可以工作。

    希望这会有所帮助!

    【讨论】:

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