5.1-5.2 卷积神经网络——卷积和池化

卷积神经网络——卷积和池化

Convolution Layer

  • 可以保全输入的空间结构
  • 卷积神经网络越深所学习到的特征越高阶
  • 卷积层输出大小公式:
    s i z e = ( N + 2 P − F ) / s t r i d e + 1 size = (N + 2P - F) / stride + 1 size=(N+2PF)/stride+1
  • 1 × 1 1 \times 1 1×1 convolution layers make perfect sense

视觉之外的卷积神经网络

  • 5 × 5 5 \times 5 5×5 filters -> 5 × 5 5 \times 5 5×5 receptive field for each neuron

Pooling layer

  • make the representations smaller and more manageable
  • operates over each activation map independently
  • Note that it is not common to use zero-padding for Pooling layers
posted @ 2020-08-14 16:03  JHadoop  阅读(53)  评论(0编辑  收藏  举报