Complete 5+ Deep Learning Projects: AI & ML Hands-On Project
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
Requirements
- Access to a computer with internet connectivity.
- Basic understanding of machine learning and computer vision concepts.
Description
Hands-on Deep Learning Project Series | Build 5+ Real Deep Learning Projects from Scratch | Complete Deep Learning Project Course
Course Description:
Welcome to the Deep Learning Project course – your ultimate hands-on guide to mastering real-world AI and machine learning through 5+ complete Deep Learning Projects.
In this course, you will work on multiple Deep Learning Projects covering diverse applications such as image classification, object detection, face recognition, emotion detection, and more. Whether you're a beginner or an intermediate learner, this course is designed to help you practically understand how to implement each Deep Learning Project from scratch.
Every Deep Learning Project is built step-by-step using modern libraries like TensorFlow, Keras, and PyTorch. You will learn how to preprocess data, build neural networks, train models, evaluate results, and deploy each Deep Learning Project in a real-world context.
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.
By the end of this course, you’ll have a strong portfolio of Deep Learning Projects that showcase your AI and ML skills to employers or clients.
Enroll now & build real-world AI applications with Deep Learning!
Who this course is for:
- Students and professionals in computer vision, artificial intelligence, or human-computer interaction.
- Developers interested in mastering YOLOv7 for multiple computer vision applications.
Instructor
Hi, I'm Arunnachalam R S from India — a Computer Science graduate with a strong passion for Cybersecurity and emerging technologies. I’ve chosen cybersecurity as my professional domain and am deeply committed to staying ahead in this ever-evolving field.
As a tech educator, I enjoy sharing my knowledge about the latest technological advancements, security practices, and innovations in science and IT. My mission is to simplify complex concepts and help learners of all levels gain practical skills they can apply in real-world scenarios.
I’m excited to be part of the Udemy platform, where I can express my passion for technology, contribute to the global learning community, and empower others through quality education.