Real-Time Object Detection with YOLO Training Course
YOLO (You Only Look Once) is an algorithm transformed into pre-trained models for object detection. Validated by the Darknet neural network framework, it is ideally suited for developing computer vision features based on the COCO (Common Objects in Context) dataset. The latest variants of the YOLO framework, YOLOv3–v4, enable programs to efficiently perform object localisation and classification tasks while operating in real-time.
This instructor-led, live training (available online or on-site) is designed for backend developers and data scientists who wish to integrate pre-trained YOLO models into their enterprise applications and implement cost-effective components for object detection.
By the end of this training, participants will be able to:
- Install and configure the essential tools and libraries required for object detection using YOLO.
- Customise Python command-line applications that operate based on YOLO pre-trained models.
- Implement the framework of pre-trained YOLO models for various computer vision projects.
- Convert existing object detection datasets into YOLO format.
- Understand the fundamental concepts of the YOLO algorithm in the context of computer vision and/or deep learning.
Course Format
- Interactive lectures and discussions.
- Extensive exercises and practical activities.
- Hands-on implementation in a live lab environment.
Course Customisation Options
- To request a customised training programme for this course, please contact us to arrange.
Course Outline
Introduction
Overview of Features and Architecture of YOLO Pre-trained Models
- The YOLO Algorithm
- Regression-based Algorithms for Object Detection
- How YOLO Differs from RCNN?
Selecting the Appropriate YOLO Variant
- Features and Architecture of YOLOv1–v2
- Features and Architecture of YOLOv3–v4
Installing and Configuring the IDE for YOLO Implementations
- The Darknet Implementation
- The PyTorch and Keras Implementations
- Executing OpenCV and NumPy
Overview of Object Detection Using YOLO Pre-trained Models
Building and Customising Python Command-Line Applications
- Labeling Images Using the YOLO Framework
- Image Classification Based on a Dataset
Detecting Objects in Images with YOLO Implementations
- How Do Bounding Boxes Work?
- How Accurate is YOLO for Instance Segmentation?
- Parsing Command-Line Arguments
Extracting YOLO Class Labels, Coordinates, and Dimensions
Displaying the Resulting Images
Detecting Objects in Video Streams with YOLO Implementations
- How Does It Differ from Basic Image Processing?
Training and Testing YOLO Implementations on a Framework
Troubleshooting and Debugging
Summary and Conclusion
Requirements
- Experience in Python 3.x programming
- Basic knowledge of any Python IDEs
- Experience with Python argparse and command-line arguments
- Understanding of computer vision and machine learning libraries
- A grasp of fundamental object detection algorithms
Audience
- Backend Developers
- Data Scientists
Need help picking the right course?
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Real-Time Object Detection with YOLO Training Course - Enquiry
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Testimonials (2)
Hands on and the practical
Keeren Bala Krishnan - PENGUIN SOLUTIONS (SMART MODULAR)
Course - Computer Vision with Python
I genuinely enjoyed the hands-on approach.
Kevin De Cuyper
Course - Computer Vision with OpenCV
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