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cralison
V2EX  ›  TensorFlow

学习笔记 TF020:序列标注、手写小写字母 OCR 数据集、双向 RNN

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  •   cralison · 2017-06-05 01:04:02 +08:00 · 2813 次点击
    这是一个创建于 2763 天前的主题,其中的信息可能已经有所发展或是发生改变。

    序列标注(sequence labelling),输入序列每一帧预测一个类别。OCR(Optical Character Recognition 光学字符识别)。

    MIT 口语系统研究组 Rob Kassel 收集,斯坦福大学人工智能实验室 Ben Taskar 预处理 OCR 数据集( http://ai.stanford.edu/~btaskar/ocr/ ),包含大量单独手写小写字母,每个样本对应 16X8 像素二值图像。字线组合序列,序列对应单词。6800 个,长度不超过 14 字母的单词。gzip 压缩,内容用 Tab 分隔文本文件。Python csv 模块直接读取。文件每行一个归一化字母属性,ID 号、标签、像素值、下一字母 ID 号等。

    下一字母 ID 值排序,按照正确顺序读取每个单词字母。收集字母,直到下一个 ID 对应字段未被设置为止。读取新序列。读取完目标字母及数据像素,用零图像填充序列对象,能纳入两个较大目标字母所有像素数据 NumPy 数组。

    时间步之间共享 softmax 层。数据和目标数组包含序列,每个目标字母对应一个图像帧。RNN 扩展,每个字母输出添加 softmax 分类器。分类器对每帧数据而非整个序列评估预测结果。计算序列长度。一个 softmax 层添加到所有帧:或者为所有帧添加几个不同分类器,或者令所有帧共享同一个分类器。共享分类器,权值在训练中被调整次数更多,训练单词每个字母。一个全连接层权值矩阵维数 batch_sizein_sizeout_size。现需要在两个输入维度 batch_size、sequence_steps 更新权值矩阵。令输入(RNN 输出活性值)扁平为形状 batch_sizesequence_stepsin_size。权值矩阵变成较大的批数据。结果反扁平化(unflatten)。

    代价函数,序列每一帧有预测目标对,在相应维度平均。依据张量长度(序列最大长度)归一化的 tf.reduce_mean 无法使用。需要按照实际序列长度归一化,手工调用 tf.reduce_sum 和除法运算均值。

    损失函数,tf.argmax 针对轴 2 非轴 1,各帧填充,依据序列实际长度计算均值。tf.reduce_mean 对批数据所有单词取均值。

    TensorFlow 自动导数计算,可使用序列分类相同优化运算,只需要代入新代价函数。对所有 RNN 梯度裁剪,防止训练发散,避免负面影响。

    训练模型,get_sataset 下载手写体图像,预处理,小写字母独热编码向量。随机打乱数据顺序,分偏划分训练集、测试集。

    单词相邻字母存在依赖关系(或互信息),RNN 保存同一单词全部输入信息到隐含活性值。前几个字母分类,网络无大量输入推断额外信息,双向 RNN(bidirectional RNN)克服缺陷。 两个 RNN 观测输入序列,一个按照通常顺序从左端读取单词,另一个按照相反顺序从右端读取单词。每个时间步得到两个输出活性值。送入共享 softmax 层前,拼接。分类器从每个字母获取完整单词信息。tf.modle.rnn.bidirectional_rnn 已实现。

    实现双向 RNN。划分预测属性到两个函数,只关注较少内容。_shared_softmax 函数,传入函数张量 data 推断输入尺寸。复用其他架构函数,相同扁平化技巧在所有时间步共享同一个 softmax 层。rnn.dynamic_rnn 创建两个 RNN。 序列反转,比实现新反向传递 RNN 运算容易。tf.reverse_sequence 函数反转帧数据中 sequence_lengths 帧。数据流图节点有名称。scope 参数是 rnn_dynamic_cell 变量 scope 名称,默认值 RNN。两个参数不同 RNN,需要不同域。 反转序列送入后向 RNN,网络输出反转,和前向输出对齐。沿 RNN 神经元输出维度拼接两个张量,返回。双向 RNN 模型性能更优。

    import gzip
    import csv
    import numpy as np
    
    from helpers import download
    
    class OcrDataset:
    
        URL = 'http://ai.stanford.edu/~btaskar/ocr/letter.data.gz'
    
        def __init__(self, cache_dir):
            path = download(type(self).URL, cache_dir)
            lines = self._read(path)
            data, target = self._parse(lines)
            self.data, self.target = self._pad(data, target)
    
        @staticmethod
        def _read(filepath):
            with gzip.open(filepath, 'rt') as file_:
                reader = csv.reader(file_, delimiter='\t')
                lines = list(reader)
                return lines
    
        @staticmethod
        def _parse(lines):
            lines = sorted(lines, key=lambda x: int(x[0]))
            data, target = [], []
            next_ = None
            for line in lines:
                if not next_:
                    data.append([])
                    target.append([])
                else:
                    assert next_ == int(line[0])
                next_ = int(line[2]) if int(line[2]) > -1 else None
                pixels = np.array([int(x) for x in line[6:134]])
                pixels = pixels.reshape((16, 8))
                data[-1].append(pixels)
                target[-1].append(line[1])
            return data, target
    
        @staticmethod
        def _pad(data, target):
            max_length = max(len(x) for x in target)
            padding = np.zeros((16, 8))
            data = [x + ([padding] * (max_length - len(x))) for x in data]
            target = [x + ([''] * (max_length - len(x))) for x in target]
            return np.array(data), np.array(target)
    
    import tensorflow as tf
    
    from helpers import lazy_property
    
    class SequenceLabellingModel:
    
        def __init__(self, data, target, params):
            self.data = data
            self.target = target
            self.params = params
            self.prediction
            self.cost
            self.error
            self.optimize
    
        @lazy_property
        def length(self):
            used = tf.sign(tf.reduce_max(tf.abs(self.data), reduction_indices=2))
            length = tf.reduce_sum(used, reduction_indices=1)
            length = tf.cast(length, tf.int32)
            return length
    
        @lazy_property
        def prediction(self):
            output, _ = tf.nn.dynamic_rnn(
                tf.nn.rnn_cell.GRUCell(self.params.rnn_hidden),
                self.data,
                dtype=tf.float32,
                sequence_length=self.length,
            )
            # Softmax layer.
            max_length = int(self.target.get_shape()[1])
            num_classes = int(self.target.get_shape()[2])
            weight = tf.Variable(tf.truncated_normal(
                [self.params.rnn_hidden, num_classes], stddev=0.01))
            bias = tf.Variable(tf.constant(0.1, shape=[num_classes]))
            # Flatten to apply same weights to all time steps.
            output = tf.reshape(output, [-1, self.params.rnn_hidden])
            prediction = tf.nn.softmax(tf.matmul(output, weight) + bias)
            prediction = tf.reshape(prediction, [-1, max_length, num_classes])
            return prediction
    
        @lazy_property
        def cost(self):
            # Compute cross entropy for each frame.
            cross_entropy = self.target * tf.log(self.prediction)
            cross_entropy = -tf.reduce_sum(cross_entropy, reduction_indices=2)
            mask = tf.sign(tf.reduce_max(tf.abs(self.target), reduction_indices=2))
            cross_entropy *= mask
            # Average over actual sequence lengths.
            cross_entropy = tf.reduce_sum(cross_entropy, reduction_indices=1)
            cross_entropy /= tf.cast(self.length, tf.float32)
            return tf.reduce_mean(cross_entropy)
    
        @lazy_property
        def error(self):
            mistakes = tf.not_equal(
                tf.argmax(self.target, 2), tf.argmax(self.prediction, 2))
            mistakes = tf.cast(mistakes, tf.float32)
            mask = tf.sign(tf.reduce_max(tf.abs(self.target), reduction_indices=2))
            mistakes *= mask
            # Average over actual sequence lengths.
            mistakes = tf.reduce_sum(mistakes, reduction_indices=1)
            mistakes /= tf.cast(self.length, tf.float32)
            return tf.reduce_mean(mistakes)
    
        @lazy_property
        def optimize(self):
            gradient = self.params.optimizer.compute_gradients(self.cost)
            try:
                limit = self.params.gradient_clipping
                gradient = [
                    (tf.clip_by_value(g, -limit, limit), v)
                    if g is not None else (None, v)
                    for g, v in gradient]
            except AttributeError:
                print('No gradient clipping parameter specified.')
            optimize = self.params.optimizer.apply_gradients(gradient)
            return optimize
    
    import random
    
    import tensorflow as tf
    import numpy as np
    
    from helpers import AttrDict
    
    from OcrDataset import OcrDataset
    from SequenceLabellingModel import SequenceLabellingModel
    from batched import batched
    
    params = AttrDict(
        rnn_cell=tf.nn.rnn_cell.GRUCell,
        rnn_hidden=300,
        optimizer=tf.train.RMSPropOptimizer(0.002),
        gradient_clipping=5,
        batch_size=10,
        epochs=5,
        epoch_size=50
    )
    
    def get_dataset():
        dataset = OcrDataset('./ocr')
        # Flatten images into vectors.
        dataset.data = dataset.data.reshape(dataset.data.shape[:2] + (-1,))
        # One-hot encode targets.
        target = np.zeros(dataset.target.shape + (26,))
        for index, letter in np.ndenumerate(dataset.target):
            if letter:
                target[index][ord(letter) - ord('a')] = 1
        dataset.target = target
        # Shuffle order of examples.
        order = np.random.permutation(len(dataset.data))
        dataset.data = dataset.data[order]
        dataset.target = dataset.target[order]
        return dataset
    
    # Split into training and test data.
    dataset = get_dataset()
    split = int(0.66 * len(dataset.data))
    train_data, test_data = dataset.data[:split], dataset.data[split:]
    train_target, test_target = dataset.target[:split], dataset.target[split:]
    
    # Compute graph.
    _, length, image_size = train_data.shape
    num_classes = train_target.shape[2]
    data = tf.placeholder(tf.float32, [None, length, image_size])
    target = tf.placeholder(tf.float32, [None, length, num_classes])
    model = SequenceLabellingModel(data, target, params)
    batches = batched(train_data, train_target, params.batch_size)
    
    sess = tf.Session()
    sess.run(tf.initialize_all_variables())
    for index, batch in enumerate(batches):
        batch_data = batch[0]
        batch_target = batch[1]
        epoch = batch[2]
        if epoch >= params.epochs:
            break
        feed = {data: batch_data, target: batch_target}
        error, _ = sess.run([model.error, model.optimize], feed)
        print('{}: {:3.6f}%'.format(index + 1, 100 * error))
    
    test_feed = {data: test_data, target: test_target}
    test_error, _ = sess.run([model.error, model.optimize], test_feed)
    print('Test error: {:3.6f}%'.format(100 * error))
    
    import tensorflow as tf
    
    from helpers import lazy_property
    
    class BidirectionalSequenceLabellingModel:
    
        def __init__(self, data, target, params):
            self.data = data
            self.target = target
            self.params = params
            self.prediction
            self.cost
            self.error
            self.optimize
    
        @lazy_property
        def length(self):
            used = tf.sign(tf.reduce_max(tf.abs(self.data), reduction_indices=2))
            length = tf.reduce_sum(used, reduction_indices=1)
            length = tf.cast(length, tf.int32)
            return length
    
        @lazy_property
        def prediction(self):
            output = self._bidirectional_rnn(self.data, self.length)
            num_classes = int(self.target.get_shape()[2])
            prediction = self._shared_softmax(output, num_classes)
            return prediction
    
        def _bidirectional_rnn(self, data, length):
            length_64 = tf.cast(length, tf.int64)
            forward, _ = tf.nn.dynamic_rnn(
                cell=self.params.rnn_cell(self.params.rnn_hidden),
                inputs=data,
                dtype=tf.float32,
                sequence_length=length,
                scope='rnn-forward')
            backward, _ = tf.nn.dynamic_rnn(
            cell=self.params.rnn_cell(self.params.rnn_hidden),
            inputs=tf.reverse_sequence(data, length_64, seq_dim=1),
            dtype=tf.float32,
            sequence_length=self.length,
            scope='rnn-backward')
            backward = tf.reverse_sequence(backward, length_64, seq_dim=1)
            output = tf.concat(2, [forward, backward])
            return output
    
        def _shared_softmax(self, data, out_size):
            max_length = int(data.get_shape()[1])
            in_size = int(data.get_shape()[2])
            weight = tf.Variable(tf.truncated_normal(
                [in_size, out_size], stddev=0.01))
            bias = tf.Variable(tf.constant(0.1, shape=[out_size]))
            # Flatten to apply same weights to all time steps.
            flat = tf.reshape(data, [-1, in_size])
            output = tf.nn.softmax(tf.matmul(flat, weight) + bias)
            output = tf.reshape(output, [-1, max_length, out_size])
            return output
    
        @lazy_property
        def cost(self):
            # Compute cross entropy for each frame.
            cross_entropy = self.target * tf.log(self.prediction)
            cross_entropy = -tf.reduce_sum(cross_entropy, reduction_indices=2)
            mask = tf.sign(tf.reduce_max(tf.abs(self.target), reduction_indices=2))
            cross_entropy *= mask
            # Average over actual sequence lengths.
            cross_entropy = tf.reduce_sum(cross_entropy, reduction_indices=1)
            cross_entropy /= tf.cast(self.length, tf.float32)
            return tf.reduce_mean(cross_entropy)
    
        @lazy_property
        def error(self):
            mistakes = tf.not_equal(
                tf.argmax(self.target, 2), tf.argmax(self.prediction, 2))
            mistakes = tf.cast(mistakes, tf.float32)
            mask = tf.sign(tf.reduce_max(tf.abs(self.target), reduction_indices=2))
            mistakes *= mask
            # Average over actual sequence lengths.
            mistakes = tf.reduce_sum(mistakes, reduction_indices=1)
            mistakes /= tf.cast(self.length, tf.float32)
            return tf.reduce_mean(mistakes)
    
        @lazy_property
        def optimize(self):
            gradient = self.params.optimizer.compute_gradients(self.cost)
            try:
                limit = self.params.gradient_clipping
                gradient = [
                    (tf.clip_by_value(g, -limit, limit), v)
                    if g is not None else (None, v)
                    for g, v in gradient]
            except AttributeError:
                print('No gradient clipping parameter specified.')
            optimize = self.params.optimizer.apply_gradients(gradient)
            return optimize
    

    参考资料: 《面向机器智能的 TensorFlow 实践》

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