课程四(Convolutional Neural Networks),第二 周(Deep convolutional models: case studies) —— 0.Learning Goals

Learning Goals

  • Understand multiple foundational papers of convolutional neural networks
  • Analyze the dimensionality reduction of a volume in a very deep network
  • Understand and Implement a Residual network
  • Build a deep neural network using Keras
  • Implement a skip-connection in your network
  • Clone a repository from github and use transfer learning

学习目标

  卷积神经网络多基础论文的理解

  在非常深的网络中分析体积的降维

  了解并实施剩余网络

  利用 Keras 构建深神经网络

  在网络中实现skip-connection

  从 github 克隆一个仓库并使用转移学习

 

原文地址:https://www.cnblogs.com/hezhiyao/p/8228113.html

时间: 2024-08-28 09:18:52

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