ResNet50的tensorflow实现

最近在看残差网络的论文,然后看了很多网上实现的代码,我发现很多人写代码是没有逻辑的,其实那个代码写得压根就不对,只是可能恰巧结果对,然后我不明白明明池化很简单的道理,非要说成什么降采样,给我整的看论文看得我一脸蒙逼,现在的模型适合大多数数据集的几乎不存在,我参考论文网上的帖子,实现了resnet50,但是我没训练,因为没有好的224*224的数据集,硬盘太小,大的程序也跑不起来,今天把代码贴出来,然后如果需要的话拿去参考。还有就是复原模型最重要的就是搞清楚网络的结构,最好是看着结构图来做模型,这样你就会很清楚每一层的tensor是如何进行变化的,然后就不会那么蒙圈了,在网上找了个不错的网络结构图,分享给大家 https://blog.csdn.net/haoji007/article/details/90259359

然后下面就是代码了,我相信只要你仔细看过残差网络的论文,你都会理解的,然后我打算今晚再做一个18层的残差网络用来训练cifar10,看一下训练的效果,下面是代码

import tensorflow as tf
import tensorflow.contrib.slim as slim

WEIGHT_DECAY = 0.01

# 这段是我之前看别人的帖子上做的,但是后来我做的过程中我发现其实并没有什么用,
# 改变featuremap的大小用卷积也完全可以实现,所以我把它注释掉,发现也是正常的
# 但是由于tensorflow老大哥最近又开始迭代更新了,所以可能会有warning,但是
# 没什么大影响

# def sampling(input_tensor,
#              ksize=1,
#              stride=2):
#     data = input_tensor
#     if stride > 1:
#         data = slim.max_pool2d(data, ksize, stride=stride)
#         print('sampling', 2)
#     return data


def conv2d_same(input_tensor,
                num_outputs,
                kernel_size,
                stride,
                is_train=True,
                activation_fn=tf.nn.relu,
                normalizer_fc=True
                ):
    data = input_tensor
    if stride is 1:
        data = slim.conv2d(inputs=data,
                           num_outputs=num_outputs,
                           kernel_size=kernel_size,
                           stride=stride,
                           weights_regularizer=slim.l2_regularizer(WEIGHT_DECAY),
                           activation_fn=None,
                           padding='SAME',
                           )
    else:
        pad_total = kernel_size - 1
        pad_begin = pad_total // 2
        pad_end = pad_total - pad_begin
        data = tf.pad(data, [[0, 0], [pad_begin, pad_end], [pad_begin, pad_end], [0, 0]])
        data = slim.conv2d(data,
                           num_outputs=num_outputs,
                           kernel_size=kernel_size,
                           stride=stride,
                           weights_regularizer=slim.l2_regularizer(WEIGHT_DECAY),
                           activation_fn=None,
                           padding='VALID',
                           )
    if normalizer_fc:
        data = tf.layers.batch_normalization(data, training=is_train)
    if activation_fn is not None:
        data = activation_fn(data)
    return data


def bottle_net(input_tensor, output_depth, is_train, stride=1):
    data = input_tensor
    depth = input_tensor.get_shape().as_list()[-1]
    if depth == output_depth:
        shortcut_tensor = input_tensor
    else:
        shortcut_tensor = conv2d_same(input_tensor, output_depth, 1, stride, is_train=is_train, activation_fn=None,
                                      normalizer_fc=True)
    data = conv2d_same(data, output_depth // 4, 1, 1, is_train=is_train)
    data = conv2d_same(data, output_depth // 4, 3, stride, is_train=is_train)
    data = conv2d_same(data, output_depth, 1, 1, is_train=is_train, activation_fn=None, normalizer_fc=False)

    # 生成残差
    data = data + shortcut_tensor
    data = tf.nn.relu(data)
    return data


def create_block(input_tensor, output_depth, block_nums, init_stride=1, is_train=True, scope='block'):
    with tf.variable_scope(scope):
        data = bottle_net(input_tensor, output_depth, is_train=is_train, stride=init_stride)
        for i in range(1, block_nums):
            data = bottle_net(data, output_depth, is_train=is_train)
        return data


def ResNet(input_tensor, num_output, is_train, scope='resnet50'):
    data = input_tensor
    with tf.variable_scope(scope):
        data = conv2d_same(data, 64, 7, 2, is_train=is_train, normalizer_fc=True)
        data = slim.max_pool2d(data, 3, 2, padding='SAME', scope='pool_1')
        # 第一个残差块组
        data = create_block(data, 256, 3, init_stride=1, is_train=is_train, scope='block1')

        # 第二个残差块组
        data = create_block(data, 512, 4, init_stride=2, is_train=is_train, scope='block2')

        # 第三个残差块组
        data = create_block(data, 1024, 6, init_stride=2, is_train=is_train, scope='block3')

        # 第四个残差块组
        data = create_block(data, 2048, 3, init_stride=2, is_train=is_train, scope='block4')

        # 接下来就是池化层和全连接层
        data = slim.avg_pool2d(data, 7)
        data = slim.conv2d(data, num_output, 1, activation_fn=None, scope='final_conv')

        data_shape = data.get_shape().as_list()
        nodes = data_shape[1] * data_shape[2] * data_shape[3]
        data = tf.reshape(data, [-1, nodes])

        return data


if __name__ == '__main__':
    x = tf.random_normal([32, 224, 224, 3])
    data = ResNet(x, 1000, True)
    print(data)

能力极其有限,有错误的地方希望各位同学指正

posted @ 2019-10-11 17:02  daremosiranaihana  阅读(5687)  评论(1编辑  收藏  举报