Udemy

Deep Learning for Object Detection with Python and PyTorch

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  • 675 Students
  • Updated 8/2025
4.2
(157 Ratings)
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Course Information

Registration period
Year-round Recruitment
Course Level
Study Mode
Duration
3 Hour(s) 39 Minute(s)
Language
English
Taught by
Dr. Mazhar Hussain, AI & Computer Science School
Rating
4.2
(157 Ratings)
1 views

Course Overview

Deep Learning for Object Detection with Python and PyTorch

Object Detection for Computer Vision using Deep Learning with Python. Train and Deploy (Detectron2, Faster RCNN, YOLO11)

Are you ready to dive into the fascinating world of object detection using deep learning? In our comprehensive course "Deep Learning for Object Detection with Python and PyTorch", we will guide you through the essential concepts and techniques required to detect, classify, and locate objects in images. Object Detection has wide range of potential real life application in many fields. Object detection is used for autonomous vehicles to perceive and understand their surroundings. It helps in detecting and tracking pedestrians, vehicles, traffic signs, traffic lights, and other objects on the road. Object Detection is used for surveillance and security using drones to identify and track suspicious activities, intruders, and objects of interest. Object Detection is used for traffic monitoring, helmet and license plate detection, player tracking, defect detection, industrial usage and much more.

With the powerful combination of Python programming and the PyTorch deep learning framework, you'll explore state-of-the-art algorithms and architectures like R-CNN, Fast RCNN and Faster R-CNN. Throughout the course, you'll gain a solid understanding of Convolutional Neural Networks (CNNs) and their role in Object Detection. You'll learn how to leverage pre-trained models, fine-tune them for Object Detection using Detectron2 Library developed by by Facebook AI Research (FAIR).

The course covers the complete pipeline with hands-on experience of Object Detection using Deep Learning with Python and PyTorch as follows:

Course BreakDown:

  • Learn Object Detection with Python and Pytorch Coding

  • Learn Object Detection using Deep Learning Models

  • Introduction to Convolutional Neural Networks (CNN)

  • Learn RCNN, Fast RCNN, Faster RCNN, Mask RCNN and YOLO8, YOLO11 Architectures

  • Perform Object Detection with Fast RCNN and Faster RCNN

  • Perform Real-time Video Object Detection with YOLOv8 and YOLO11

  • Train, Test and Deploy YOLOv8 for Video Object Detection

  • Introduction to Detectron2 by Facebook AI Research (FAIR)

  • Preform Object Detection with Detectron2 Models

  • Explore Custom Object Detection Dataset with Annotations

  • Perform Object Detection on Custom Dataset using Deep Learning

  • Train, Test, Evaluate Your Own Object Detection Models and Visualize Results

  • Perform Object Instance Segmentation at Pixel Level using Mask RCNN

  • Perform Object Instance Segmentation on Custom Dataset with Pytorch and Python

By the end of this course, you'll have the knowledge and skills you need to start applying Deep Learning to Object Detection problems in your own work or research. Whether you're a Computer Vision Engineer, Data Scientist, or Developer, this course is the perfect way to take your understanding of Deep Learning to the next level. Let's get started on this exciting journey of Deep Learning for Object Detection with Python and PyTorch.

See you inside the class!

Course Content

  • 10 section(s)
  • 38 lecture(s)
  • Section 1 Introduction to Course
  • Section 2 Object Detection and How it Works
  • Section 3 Single-shot vs Two-shot Object Detection
  • Section 4 Deep Learning Architectures for Object Detection (R-CNN Family)
  • Section 5 Google Colab for Writing Python Code
  • Section 6 Detectron2 for Ojbect Detection
  • Section 7 Annotation tools to Label Your Own Dataset for Object Detection
  • Section 8 Custom Dataset for Object Detection
  • Section 9 Training, Evaluating and Visualizing Object Detection on Custom Dataset
  • Section 10 Complete Code and Custom Dataset for Object Detection

What You’ll Learn

  • Learn Object Detection with Python and Pytorch Coding
  • Learn Object Detection using Deep Learning Models
  • Single-Stage Object Detection vs Two-Stage Objection Detection with Python
  • Learn RCNN, Fast RCNN, Faster RCNN, Mask RCNN and YOLO8, YOLO11 Architectures
  • Perform Object Detection with Fast RCNN and Faster RCNN
  • Perform Real-time Video Object Detection with YOLOv8 and YOLO11
  • Train, Test and Deploy YOLOv8 for Video Object Detection
  • Introduction to Detectron2 by Facebook AI Research (FAIR)
  • Preform Object Detection with Detectron2 Models
  • Explore Custom Object Detection Datasets with Annotations
  • Perform Object Detection on Custom Datasets using Deep Learning
  • Train, Test, Evaluate Your Own Object Detection Models and Visualize Results
  • Perform Object Instance Segmentation at Pixel Level using Mask RCNN
  • Perform Object Instance Segmentation on Custom Dataset with Pytorch and Python

Reviews

  • T
    Taj Muhammad
    5.0

    Object detection models are training and tested on custom datasets. Overall good course from practical point of view.

  • M
    Mukul Kumar Singh Chauhan
    1.0

    Awful. The explanation is not proper. Knowing something does not imply that the person can be a good teacher/instructor.

  • R
    Reuven Heiblum
    3.5

    The course is good in that it gives you some knowledge regarding how to use some widely known deep learning object detection models. You also get to practice working using Google Colab which is nice. However, the course only gives you a very basic, high level understanding of the material. Without prior knowledge you'll probably get lost.

  • H
    Hemant Kumar
    3.5

    very informative and helpful course

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