Class Central is learner-supported. When you buy through links on our site, we may earn an affiliate commission.

Wolfram U

Wavelet Analysis Concepts: Wolfram U Class

via Wolfram U

Overview

Google, IBM & Meta Certificates – 40% Off
One plan covers every Professional Certificate on Coursera.
Unlock All Certificates
How to construct, compute, visualize and analyze wavelet transforms with the Wolfram Language. Video class also explains some of the theory behind continuous, discrete and stationary wavelet transforms.

Course Overview
Wavelets decompose a signal into approximations and details at different scales, making them useful for applications such as data compression, detecting features and removing noise from signals. This class explains some of the theory behind continuous, discrete and stationary wavelet transforms and demonstrates how Wolfram Language and its built-in functions can be used to construct, compute, visualize and analyze wavelet transforms and related functions. Familiarity with Fourier transforms and data smoothing methods is recommended for this class.Featured Products & Technologies: Wolfram Language (available in Mathematica and Wolfram|One)
You'll Learn To


Overcome limitations of traditional Fourier analysis by breaking down a signal into smaller components
Perform continuous wavelet transforms using Wolfram Language
Construct and plot discrete wavelet and scaling functions
Compute lowpass and highpass filter coefficients and frequency response functions


Use WaveletBestBasis with discrete wavelet packet transforms
Compare named automatic thresholding methods
Apply stationary wavelet transforms for image detection

Syllabus

  • Overcome limitations of traditional Fourier analysis by breaking down a signal into smaller components
  • Perform continuous wavelet transforms using Wolfram Language
  • Construct and plot discrete wavelet and scaling functions
  • Compute lowpass and highpass filter coefficients and frequency response functions
  • Use WaveletBestBasis with discrete wavelet packet transforms
  • Compare named automatic thresholding methods
  • Apply stationary wavelet transforms for image detection

Reviews

Start your review of Wavelet Analysis Concepts: Wolfram U Class

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.