Lecture 1: Introduction Here you will find a short introduction to the course. We outline the objectives, structure, and practical outcomes. This sets the stage for a hands-on experience in machine learning with EEG signals.Lecture 2: Connect to Google Colab This chapter provides a step-by-step guide on how to connect to and work in Google Colab. You’ll learn how to set up your environment, install required libraries, and ensure you are ready to run the code examples provided throughout the course.Lecture 3: Hardware for Brain-Computer Interface This chapter covers the essential hardware used in EEG-based brain-computer interfaces. Lecture 4: Data Evaluation We dive into evaluating the quality of your EEG data. This chapter explores techniques to inspect, clean, and annotate EEG recordings, ensuring that your data is reliable before moving forward with analysis or machine learning tasks.Lecture 5: Prepare the Dataset Learn how to transform raw EEG signals into structured datasets suitable for machine learning. This chapter includes labeling, segmenting, and feature extraction techniques—critical steps for successful model training and testing.Lecture 6: Introduction to DL In this chapter, we introduce the fundamentals of deep learning and explain why Keras is a suitable library for working with EEG data. You’ll gain a basic understanding of deep learning concepts, how they apply to EEG signal processing, and where to find more information about Keras and its capabilities. This sets the foundation for implementing neural networks in upcoming lectures.Lecture 7. Convolutional Neural Networks (CNNs) for EEG This chapter introduces convolutional neural networks (CNNs) and their application to EEG signal processing. You’ll learn the theory behind CNNs, how they are used for automatic feature extraction, and how to i
Log in to write a review
Loading reviews...
Explore more courses and learning paths related to Deep Learning (Python) for Neuroscience EEG Practical course.
Browse more courses from Udemy
See the side-by-side breakdown and our pick by scenario
See the side-by-side breakdown and our pick by scenario
More beginner-level AI and ML courses
Follow the full Advanced Robotics learning path
Browse 350+ structured AI learning paths from beginner to advanced