Udemy

Complete Computer Vision Bootcamp With PyTorch & Tensorflow

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  • 7,015 Students
  • Updated 10/2025
4.6
(838 Ratings)
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Course Information

Registration period
Year-round Recruitment
Course Level
Study Mode
Language
English
Taught by
Krish Naik, Sourangshu Pal, Monal kumar, KRISHAI Technologies Private Limited
Rating
4.6
(838 Ratings)
8 views

Course Overview

Complete Computer Vision Bootcamp With PyTorch & Tensorflow

Learn Computer Vision with CNN, TensorFlow, and PyTorch — Master Object Detection from Basics to Advanced

In this comprehensive course, you will master the fundamentals and advanced concepts of computer vision, focusing on Convolutional Neural Networks (CNN) and object detection models using TensorFlow and PyTorch. This course is designed to equip you with the skills required to build robust computer vision applications from scratch.

What You Will Learn

Throughout this course, you will gain expertise in:

  1. Introduction to Computer Vision

    • Understanding image data and its structure.

    • Exploring pixel values, channels, and color spaces.

    • Learning about OpenCV for image manipulation and preprocessing.

  2. Deep Learning Fundamentals for Computer Vision

    • Introduction to Neural Networks and Deep Learning concepts.

    • Understanding backpropagation and gradient descent.

    • Key concepts like activation functions, loss functions, and optimization techniques.

  3. Convolutional Neural Networks (CNN)

    • Introduction to CNN architecture and its components.

    • Understanding convolution layers, pooling layers, and fully connected layers.

    • Implementing CNN models using TensorFlow and PyTorch.

  4. Data Augmentation and Preprocessing

    • Techniques for improving model performance through data augmentation.

    • Using libraries like imgaug, Albumentations, and TensorFlow Data Pipeline.

  5. Transfer Learning for Computer Vision

    • Utilizing pre-trained models such as ResNet, VGG, and EfficientNet.

    • Fine-tuning and optimizing transfer learning models.

  6. Object Detection Models

    • Exploring object detection algorithms like:

      • YOLO (You Only Look Once)

      • Faster R-CNN

    • Implementing these models with TensorFlow and PyTorch.

  7. Image Segmentation Techniques

    • Understanding semantic and instance segmentation.

    • Implementing U-Net and Mask R-CNN models.

  8. Real-World Projects and Applications

    • Building practical computer vision projects such as:

      • Face detection and recognition system.

      • Real-time object detection with webcam integration.

      • Image classification pipelines with deployment.


Who Should Enroll?

This course is ideal for:

  • Beginners looking to start their computer vision journey.

  • Data scientists and ML engineers wanting to expand their skill set.

  • AI practitioners aiming to master object detection models.

  • Researchers exploring computer vision techniques for academic projects.

  • Professionals seeking practical experience in deploying CV models.

Prerequisites

Before enrolling, ensure you have:

  • Basic knowledge of Python programming.

  • Familiarity with fundamental machine learning concepts.

  • Basic understanding of linear algebra and calculus.

Hands-on Learning with Real Projects

This course emphasizes practical learning through hands-on projects. Each module includes coding exercises, project implementations, and real-world examples to ensure you gain valuable skills.

By the end of this course, you will confidently build, train, and deploy computer vision models using TensorFlow and PyTorch. Whether you are a beginner or an experienced practitioner, this course will empower you with the expertise needed to excel in the field of computer vision.

Enroll now and take your computer vision skills to the next level!

Course Content

  • 10 section(s)
  • 189 lecture(s)
  • Section 1 Introduction
  • Section 2 Python Prerequisites
  • Section 3 Introduction To Deep Learning
  • Section 4 Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory
  • Section 5 computer vision (Open CV With Python)
  • Section 6 PyTorch
  • Section 7 Deep Dive Visualizing CNNs
  • Section 8 Image Classification
  • Section 9 Data Augmentation
  • Section 10 Basics of Object Detection

What You’ll Learn

  • Master CNN concepts from basics to advanced with TensorFlow & PyTorch.
  • Learn object detection models like YOLO and Faster R-CNN.
  • Implement real-world computer vision projects step-by-step.
  • Gain hands-on experience with data preprocessing and augmentation.
  • Build custom CNN models for various computer vision tasks.
  • Master transfer learning with pre-trained models like ResNet and VGG
  • Gain practical skills with TensorFlow and PyTorch libraries


Reviews

  • S
    Srinjoyee Dey
    5.0

    quality is good but the text in video that is the codes are too small to view in mobile

  • S
    S Gowrishankar
    4.5

    Good contents and insight teaching from basic to deep

  • L
    Liana Estoque
    3.5

    It is great overall but the switch on lectures starting on the models make it less fun and just the same like other lectures out there. It's a bit boring on the later part of the course unlike on the first half where it's interactive and story telling is on point.

  • S
    Shivam Patil
    5.0

    Every module is Excellent, but hand-on project is not there even though many mini projects are present ! Please upload it, will help a lot.

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