Complete neural signal processing and analysis: Zero to hero
Learn signal processing and statistics using brain electrical data with expert instruction and code challenges in MATLAB
Product Brand: Udemy
4.7
Udemy Coupon Code for Complete neural signal processing and analysis: Zero to hero Course. Learn signal processing and statistics using brain electrical data with expert instruction and code challenges in MATLAB
Created by Mike X Cohen | 47 hours on-demand video course
Signal Processing Course Overview
Complete neural signal processing and analysis: Zero to hero
Use your brain to learn signal processing, data analysis, and statistics… by learning about brains!
If you are reading this, I guess you have a brain. Your brain generates electrical signals that can be measured using electrodes, which are like small antennas. These electrical signals are rreeeeeaaallly complicated, because the brain is really complicated!
But learning how to analyze brain electrical signals is an amazing and fascinating way to learn about signal processing, data visualization, spectral analysis, synchronization (connectivity) analyses, and statistics (in particular, permutation-based statistics).
What you’ll learn
- Signal processing
- Time series data analysis
- Statistics (non-parametric)
- Neuroscience (brain science)
- Spectral analysis application
- Applied math
Top Signal Processing Courses Online for 2024
Signal processing problems, solved in MATLAB and Python
Signal processing problems, solved in MATLAB and in Python Best seller
The Signal processing problems, solved in MATLAB and Python course comes with over 10,000 lines of MATLAB and Python code, plus sample data sets, which you can use to learn from and to adapt to your own coursework or applications. In this course, you will also learn how to simulate signals in order to test and learn more about your signal processing and analysis methods.
Master the Fourier transform and its applications
Master the Fourier transform and its applications Best seller
This Master the Fourier transform and its applications course is focused on implementations of the Fourier transform on computers, and applications in digital signal processing (1D) and image processing (2D). I don’t go into detail about setting up and solving integration problems to obtain analytical solutions. Thus, this course is more on the computer science/data science/engineering side of things, rather than on the pure mathematics/differential equations/infinite series side.
Who this course is for:
- Anyone interested in applied signal processing
- Interested in non-parametric statistics
- Existing or aspiring neuroscience students
- Anyone who wants to know what brain electrical signals look like
Taught by Mike X Cohen