tensorflow中padding的两种类型对比

本文详细解释了在卷积神经网络中SAME与VALID两种填充方式的区别。SAME填充确保输出特征图与输入特征图尺寸相同,通过在输入周围添加零填充实现;而VALID则不使用填充。文章还提供了具体示例来帮助理解这两种填充方式。
部署运行你感兴趣的模型镜像
SAME means that the output feature map has the same spatial dimensions as the input feature map. Zero padding is introduced to make the shapes match as needed, equally on every side of the input map.
VALIDmeans no padding.

Padding could be used in convolution and pooling operations.
Here, take pooling for example:


If you like ascii art:

  • "VALID" = without padding:

       inputs:         1  2  3  4  5  6  7  8  9  10 11 (12 13)
                      |________________|                dropped
                                     |_________________|
  • "SAME" = with zero padding:

                   pad|                                      |pad
       inputs:      0 |1  2  3  4  5  6  7  8  9  10 11 12 13|0  0
                   |________________|
                                  |_________________|
                                                 |________________|

In this example:

  • Input width = 13
  • Filter width = 6
  • Stride = 5

Notes:

  • "VALID" only ever drops the right-most columns (or bottom-most rows).
  • "SAME" tries to pad evenly left and right, but if the amount of columns to be added is odd, it will add the extra column to the right, as is the case in this example (the same logic applies vertically: there may be an extra row of zeros at the bottom).

The TensorFlow Convolution example gives an overview about the difference between SAME and VALID :

  • For the SAME padding, the output height and width are computed as:

    out_height = ceil(float(in_height) / float(strides[1]))

    out_width = ceil(float(in_width) / float(strides[2]))

And

  • For the VALID padding, the output height and width are computed as:

    out_height = ceil(float(in_height - filter_height + 1) / float(strides1))

    out_width = ceil(float(in_width - filter_width + 1) / float(strides[2]))


您可能感兴趣的与本文相关的镜像

GPT-SoVITS

GPT-SoVITS

AI应用

GPT-SoVITS 是一个开源的文本到语音(TTS)和语音转换模型,它结合了 GPT 的生成能力和 SoVITS 的语音转换技术。该项目以其强大的声音克隆能力而闻名,仅需少量语音样本(如5秒)即可实现高质量的即时语音合成,也可通过更长的音频(如1分钟)进行微调以获得更逼真的效果

评论
添加红包

请填写红包祝福语或标题

红包个数最小为10个

红包金额最低5元

当前余额3.43前往充值 >
需支付:10.00
成就一亿技术人!
领取后你会自动成为博主和红包主的粉丝 规则
hope_wisdom
发出的红包
实付
使用余额支付
点击重新获取
扫码支付
钱包余额 0

抵扣说明:

1.余额是钱包充值的虚拟货币,按照1:1的比例进行支付金额的抵扣。
2.余额无法直接购买下载,可以购买VIP、付费专栏及课程。

余额充值