• Skip to primary navigation
  • Skip to main content
  • Skip to footer

PyImageSearch

You can master Computer Vision, Deep Learning, and OpenCV - PyImageSearch

  • University Login
  • Get Started
  • Topics
    • Deep Learning
    • Dlib Library
    • Embedded/IoT and Computer Vision
    • Face Applications
    • Image Processing
    • Interviews
    • Keras and TensorFlow
    • Machine Learning and Computer Vision
    • Medical Computer Vision
    • Optical Character Recognition (OCR)
    • Object Detection
    • Object Tracking
    • OpenCV Tutorials
    • Raspberry Pi
  • Books and Courses
  • AI & Computer Vision Programming
  • Reviews
  • Blog
  • Consulting
  • About
  • FAQ
  • Contact
  • University Login
Deep Learning
OpenCV Tutorials
Tutorials

An Ethical Application of Computer Vision and Deep Learning — Identifying Child Soldiers Through Automatic Age and Military Fatigue Detection

May 11, 2020

In this tutorial, we will learn how to apply Computer Vision, Deep Learning, and OpenCV to identify potential child soldiers through automatic age detection and military fatigue recognition. Military service is something of personal importance to me, something I consider…

Read More of An Ethical Application of Computer Vision and Deep Learning — Identifying Child Soldiers Through Automatic Age and Military Fatigue Detection

Deep Learning
Keras and TensorFlow
Tutorials

Fine-tuning ResNet with Keras, TensorFlow, and Deep Learning

April 27, 2020

In this tutorial, you will learn how to fine-tune ResNet using Keras, TensorFlow, and Deep Learning. A couple of months ago, I posted on Twitter asking my followers for help creating a dataset of camouflage vs. noncamouflage clothes: This dataset…

Read More of Fine-tuning ResNet with Keras, TensorFlow, and Deep Learning

Deep Learning
Keras and TensorFlow
Tutorials

Using TensorFlow and GradientTape to train a Keras model

March 23, 2020

In this tutorial, you will learn how to use TensorFlow’s GradientTape function to create custom training loops to train Keras models. Today’s tutorial was inspired by a question I received by PyImageSearch reader Timothy: Hi Adrian, I just read your…

Read More of Using TensorFlow and GradientTape to train a Keras model

Deep Learning
Keras and TensorFlow
Tutorials

Grad-CAM: Visualize class activation maps with Keras, TensorFlow, and Deep Learning

March 9, 2020

In this tutorial, you will learn how to visualize class activation maps for debugging deep neural networks using an algorithm called Grad-CAM. We’ll then implement Grad-CAM using Keras and TensorFlow. While deep learning has facilitated unprecedented accuracy in image classification,…

Read More of Grad-CAM: Visualize class activation maps with Keras, TensorFlow, and Deep Learning

Deep Learning
Keras and TensorFlow
Tutorials

Label smoothing with Keras, TensorFlow, and Deep Learning

December 30, 2019

In this tutorial, you will learn two ways to implement label smoothing using Keras, TensorFlow, and Deep Learning. When training your own custom deep neural networks there are two critical questions that you should constantly be asking yourself: Am I…

Read More of Label smoothing with Keras, TensorFlow, and Deep Learning

Deep Learning
Keras and TensorFlow
Tutorials

How to install TensorFlow 2.0 on Ubuntu

December 9, 2019

In this tutorial, you will learn to install TensorFlow 2.0 on your Ubuntu system either with or without a GPU. There are a number of important updates in TensorFlow 2.0, including eager execution, automatic differentiation, and better multi-GPU/distributed training support,…

Read More of How to install TensorFlow 2.0 on Ubuntu

Deep Learning
Keras and TensorFlow
Tutorials

How to install TensorFlow 2.0 on macOS

December 9, 2019

In this tutorial, you will learn to install TensorFlow 2.0 on your macOS system running either Catalina or Mojave There are a number of important updates in TensorFlow 2.0, including eager execution, automatic differentiation, and better multi-GPU/distributed training support, but…

Read More of How to install TensorFlow 2.0 on macOS

Deep Learning
Keras and TensorFlow
Tutorials

3 ways to create a Keras model with TensorFlow 2.0 (Sequential, Functional, and Model Subclassing)

October 28, 2019

Keras and TensorFlow 2.0 provide you with three methods to implement your own neural network architectures: Sequential API Functional API Model subclassing Inside of this tutorial you’ll learn how to utilize each of these methods, including how to choose the…

Read More of 3 ways to create a Keras model with TensorFlow 2.0 (Sequential, Functional, and Model Subclassing)

Deep Learning
Keras and TensorFlow
Tutorials

Keras vs. tf.keras: What’s the difference in TensorFlow 2.0?

October 21, 2019

In this tutorial you’ll discover the difference between Keras and tf.keras , including what’s new in TensorFlow 2.0. Today’s tutorial is inspired from an email I received last Tuesday from PyImageSearch reader, Jeremiah. Jeremiah asks: Hi Adrian, I saw that…

Read More of Keras vs. tf.keras: What’s the difference in TensorFlow 2.0?

You can learn Computer Vision, Deep Learning, and OpenCV.

Get your FREE 17 page Computer Vision, OpenCV, and Deep Learning Resource Guide PDF. Inside you’ll find our hand-picked tutorials, books, courses, and libraries to help you master CV and DL.


Footer

Topics

  • Deep Learning
  • Dlib Library
  • Embedded/IoT and Computer Vision
  • Face Applications
  • Image Processing
  • Interviews
  • Keras & Tensorflow
  • OpenCV Install Guides
  • Machine Learning and Computer Vision
  • Medical Computer Vision
  • Optical Character Recognition (OCR)
  • Object Detection
  • Object Tracking
  • OpenCV Tutorials
  • Raspberry Pi

Books & Courses

  • PyImageSearch University
  • FREE CV, DL, and OpenCV Crash Course
  • Practical Python and OpenCV
  • Deep Learning for Computer Vision with Python
  • PyImageSearch Gurus Course
  • Raspberry Pi for Computer Vision

PyImageSearch

  • Affiliates
  • Get Started
  • About
  • Consulting
  • Coaching
  • FAQ
  • YouTube
  • Blog
  • Contact
  • Privacy Policy

© 2025 PyImageSearch. All Rights Reserved.