Course Information
Course Overview
Object Detection, Object Tracking, WebApps using Flask, Object Detection on Custom Dataset, YOLO-World Object Detection
Welcome to the YOLOv9, YOLOv10 & YOLO11 Course, a 3-in-1 course. YOLO11, YOLOv10 & YOLOv9 represent the latest advancements in computer vision object detection models. This course begins by covering the fundamentals of computer vision, including Non-Maximum Suppression and Mean Average Precision. Moving forward, we delve deeply into YOLOv9, exploring its architecture and highlighting how it surpasses other object detection models. In Section 04, we demonstrate object detection on images and videos using YOLOv9, evaluating its performance across various parameters.
Subsequently, in Section 05, we train the YOLOv9 model on a custom dataset for Personal Protective Equipment (PPE) detection. Additionally, Section 06 focuses on object tracking, where we integrate YOLOv9 with the DeepSORT & SORT algorithms. Here, we also develop an application for person/vehicle counting (entry and exit) using YOLOv9 and the DeepSORT algorithm.
Section 07 provides a review of YOLO-World and a step by step guide to perform object detection using YOLO-World. Finally, in Section 08, we will create web applications by integrating YOLOv9 with Flask.
Section 09, provides an introduction to YOLOv10, which includes what is YOLOv10, how YOLOv10 works, what architecture enhancements are made in YOLOv10, furthermore a performance comparison of YOLOv10 with other YOLO models is also presented in this section.
In Section 10, we demonstrate object detection in images and videos using YOLOv10. Subsequently, in Section 11, we train the YOLOv10 model on a custom dataset for Personal Protective Equipment (PPE) detection. In Section 12, we perform License Plate Detection and Recognition using YOLOv10 and PaddleOCR. Similarly, in Section 13, we showcase Real-Time Object Tracking using YOLOv10 and the DeepSORT algorithm.
Section 14 introduces YOLO11. In Section 15, we demonstrate object detection in images and videos using YOLO11. In Section 16, we perform object detection, instance segmentation, pose estimation, and image classification using YOLO11 on both Windows and Linux. Subsequently, in Section 17, we delve into testing and analyzing the performance of the YOLO11 model.
In Section 18, we explore training the YOLO11 object detection model on a custom dataset for PPE detection. In Section 19, we focus on training or fine-tuning the YOLO11 instance segmentation model on a custom dataset for pothole detection. In Section 20, we train or fine-tune the YOLO11 classification model on a custom dataset for plant classification. Finally, in Section 21, we fine-tune the YOLO11 pose estimation model for human activity recognition.
This comprehensive course covers a range of topics, including:
Mean Average Precision (mAP).
Non Maximum Suppression (NMS).
What is YOLOv9 | Architecture of YOLOv9.
Object Detection using YOLOv9.
Testing YOLOv9 Model Performance on Images, Videos and on the Live Webcam Feed.
Training YOLOv9 on a Custom Dataset.
Personal Protective Equipment (PPE) Detection using YOLOv9.
Object Tracking using YOLOv9 and DeepSORT.
Object Tracking using YOLOv9 and SORT.
Person/ Vehicles Counting (Entering and Leaving) using YOLOv9 and DeepSORT algorithm.
Introduction to YOLO-World.
Object Detection on Images and Videos using YOLO-World.
Integrating YOLOv9 with Flask and Creating Web Apps.
Object Detection in the Browser using YOLOv9 and Flask
What is YOLOv10? An architecture deep dive
Object Detection in Images and Videos using YOLOv10
Training/ fine-tuning the YOLOv10 model on custom dataset for Personal Protective Equipment (PPE) Detection
License Plate Detection & Recognition with YOLOv10 and PaddleOCR
Real-Time Object Tracking using YOLOv10 and DeepSORT Algorithm
Introduction to YOLO11
Object Detection, Instance Segmentation, Pose Estimation & Image Classification using YOLO11
Evaluating YOLO11 Model Performance: Testing and Analysis
Fine-Tune YOLO11 Object Detection Model on Custom Dataset for PPE Detection
Instance Segmentation using YOLO11 on a Custom Dataset for Potholes Detection
Fine-Tune YOLO11 Image Classification Model for Plants Classification
Human Activity Recognition with YOLO11: Fine-Tune YOLO11 Pose Estimation Model
Course Content
- 10 section(s)
- 30 lecture(s)
- Section 1 Introduction to the Course
- Section 2 Non Maximum Suppression & Mean Average Precision
- Section 3 YOLOv9: Learning What You Want to Learn Using Programmable Gradient Information
- Section 4 Object Detection on Images, Videos & Live Webcam Feed using YOLOv9
- Section 5 Training/ fine-tuning the YOLOv9 model on a custom dataset
- Section 6 Object Tracking using YOLOv9 and DeepSORT/ SORT Algorithm
- Section 7 YOLO-World: Real-Time, Zero-Shot Object Detection
- Section 8 YOLOv9 WebApps: Integrate YOLOv9 with Flask
- Section 9 YOLOv10: Real-Time End-to-End Object Detection
- Section 10 Object Detection in Images and Videos using YOLOv10
What You’ll Learn
- Basics of Computer Vision
- Objects Detection using YOLOv9
- Training/ fine-tuning YOLOv9 on a Custom Dataset
- Object Tracking using YOLOv9 and DeepSORT Algorithm
- Object Tracking using YOLOv9 and SORT Algorithm
- Objects Detection using YOLO-World
- Integrating YOLOv9 with Flask and Creating Web Apps
- Personal Protective Equipment (PPE) detection using YOLOv9
- Person/Vehicles counting (entry and exit) using YOLOv9 and the DeepSORT algorithm.
- Object Detection in the Browser using YOLOv9 and Flask
- YOLOv10: Real-Time End-to-End Object Detection
- What is YOLOv10? An Architecture Deep Dive
- Object Detection in Images and Videos using YOLOv10
- Training/ fine-tuning the YOLOv10 model on a custom dataset
Reviews
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DDewald Nel
The presenter repeats things over and over making the videos unnecessarily long and makes it difficult to keep my concentration.
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NNick Jones
A useful and information-packed course recommended for intermediates and above. The course requires technical knowledge. I would have rated the course higher but I did not receive any support for the question I asked.
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LLuiz Rosa
Muito Bom!!!
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MMuhammad Rehman
great content, really powerful for budding data scientist! some bits skimmed over that may be useful like how to show outputs in the notebook.