Implementing VGGNet with PyTorch: A Practical Guide

Implementing VGGNet with PyTorch: A Practical Guide

Hello everyone, I am Redstone! In the previous article: Implementing VGGNet (Theoretical Part) We detailed the network structure of VGGNet. Today, we will use PyTorch to reproduce the VGGNet network and apply the VGGNet model to solve a classic Kaggle image recognition competition problem. Let’s get started! 1. Dataset Preparation In the paper, the authors … Read more

Evolution of CNN Architecture: From AlexNet to ResNet

Evolution of CNN Architecture: From AlexNet to ResNet

Evolution of CNN Architecture: From AlexNet to ResNet Hello everyone, I am Sister Liu. Today we will delve into the evolution of Convolutional Neural Networks (CNN), which is one of the most important technological developments in the field of computer vision. Background Knowledge Before the rise of deep learning, traditional image recognition methods relied on … Read more

The Best Performing CNN Architecture – DenseNet

The Best Performing CNN Architecture - DenseNet

Densely Connected Convolutional Networks Comparison with ResNet Implementation code in various languages: Architecture diagram: If the image below is unclear, you can visit this link for the first Keras implementation mentioned above. Paper: This article is recommended by zdx3578. Let’s learn and discuss together: QQ group number 325921031; WeChat group, please leave a message in … Read more

R-CNN Series of Object Detection Networks

R-CNN Series of Object Detection Networks

R-CNN series object detection networks are the first series of networks in the field of object detection using deep learning, serving as a typical Two-Stage object detection network. This series includes R-CNN, Fast R-CNN, and Faster R-CNN, and as their names suggest, each generation is faster than the previous one, primarily because the characteristic of … Read more

Implementing CNN From Scratch: Understanding the Mathematical Essence

Implementing CNN From Scratch: Understanding the Mathematical Essence

Selected from arXiv Translated by Machine Heart Contributors: Huang Xiaotian, Lu Xue, Jiang Siyuan Recently, researchers from Nanyang Technological University published a paper describing the mathematical principles of convolutional networks. This paper explains the entire operation and propagation process of convolutional networks from a mathematical perspective. It is very helpful for understanding the mathematical essence … Read more

Understanding the Mathematical Principles Behind RNNs

Understanding the Mathematical Principles Behind RNNs

0Introduction Nowadays, discussions about machine learning, deep learning, and artificial neural networks are becoming more and more prevalent. However, programmers often just want to use these magical frameworks without wanting to know how they actually work behind the scenes. But if we could grasp these underlying principles, wouldn’t it be better for us to use … Read more

When RNN Meets Reinforcement Learning: Building General Models for Space

When RNN Meets Reinforcement Learning: Building General Models for Space

You may be familiar with reinforcement learning, and you may also know about RNNs. What sparks can these two relatively complex concepts in the world of machine learning create together? Let me share a few thoughts. Before discussing RNNs, let’s first talk about reinforcement learning. Reinforcement learning is gaining increasing attention; its importance can be … Read more

Master RNN and Attention Mechanism in Four Weeks

Master RNN and Attention Mechanism in Four Weeks

The hands-on deep learning live course has completed the first three parts! In the past 4 months, Dr. Mu Li, a senior chief scientist at Amazon has explained the basics of deep learning, convolutional neural networks, and computer vision. Since the course started, over 10,000 people have participated in the live learning, and the course … Read more

Summary of Classic Models for Speech Synthesis

Summary of Classic Models for Speech Synthesis

Machine Heart Column This column is produced by Machine Heart SOTA! Model Resource Station, updated every Sunday on the Machine Heart public account. This column will review common tasks in natural language processing, computer vision, and other fields, and detail the classic models that have achieved SOTA on these tasks. Visit SOTA! Model Resource Station … Read more