Learn Real World 5+ Deep Learning Projects Complete Course Using Roboflow and Google Colab
Course Title: Real World 5+ Deep Learning Projects Complete Course Using Roboflow and Google Colab
What you’ll learn
- Understand how to integrate Roboflow into the project workflow, leveraging its features for efficient dataset management, augmentation, and optimization for bot.
- Explore the process of collecting and preprocessing datasets for both facial recognition and emotion detection, ensuring the data is optimized for training a YO.
- Dive into the annotation process, marking facial features on images for recognition and labeling emotions for detection. Train YOLOv7 models for accurate and ro.
- Explore the end-to-end training workflow of YOLOv7 using the annotated and preprocessed datasets, adjusting parameters, and monitoring model performance for bot.
Course Content
- Introduction To Real World 5+ Deep Learning Projects Complete Course –> 7 lectures • 33min.
- INTRODUCTION TO EMOTION DETECTION USING YOLOv7 PROJECT –> 7 lectures • 26min.
- INTRODUCTION TO FACE RECOGNITION USING YOLOv7 PROJECT –> 7 lectures • 29min.
- INTRODUCTION TO HELMET DETECTION USING YOLOv7 PROJECT –> 7 lectures • 31min.
- INTRODUCTION TO GOOGLE COLAB –> 5 lectures • 16min.
Requirements
Course Title: Real World 5+ Deep Learning Projects Complete Course Using Roboflow and Google Colab
Course Description:
Welcome to the immersive “Learn Facial Recognition And Emotion Detection Using YOLOv7: Course Using Roboflow and Google Colab.” In this comprehensive course, you will embark on a journey to master two cutting-edge applications of computer vision: facial recognition and emotion detection. Utilizing the powerful YOLOv7 algorithm and leveraging the capabilities of Roboflow for efficient dataset management, along with Google Colab for cloud-based model training, you will gain hands-on experience in implementing these technologies in real-world scenarios.
What You Will Learn:
- Introduction to Facial Recognition and Emotion Detection:
- Understand the significance of facial recognition and emotion detection in computer vision applications and their real-world use cases.
- Setting Up the Project Environment:
- Learn how to set up the project environment, including the installation of necessary tools and libraries for implementing YOLOv7 for facial recognition and emotion detection.
- Data Collection and Preprocessing:
- Explore the process of collecting and preprocessing datasets for both facial recognition and emotion detection, ensuring the data is optimized for training a YOLOv7 model.
- Annotation of Facial Images and Emotion Labels:
- Dive into the annotation process, marking facial features on images for recognition and labeling emotions for detection. Train YOLOv7 models for accurate and robust performance.
- Integration with Roboflow:
- Understand how to integrate Roboflow into the project workflow, leveraging its features for efficient dataset management, augmentation, and optimization for both facial recognition and emotion detection.
- Training YOLOv7 Models:
- Explore the end-to-end training workflow of YOLOv7 using the annotated and preprocessed datasets, adjusting parameters, and monitoring model performance for both applications.
- Model Evaluation and Fine-Tuning:
- Learn techniques for evaluating the trained models, fine-tuning parameters for optimal performance, and ensuring robust facial recognition and emotion detection.
- Deployment of the Models:
- Understand how to deploy the trained YOLOv7 models for real-world applications, making them ready for integration into diverse scenarios such as security systems or human-computer interaction.
- Ethical Considerations in Computer Vision:
- Engage in discussions about ethical considerations in computer vision, focusing on privacy, consent, and responsible use of biometric data in facial recognition and emotion detection.