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Fr茅chet Inception Distance (FID)

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Skills You'll Learn

GANs Alternatives, Computer Programming, Probability & Statistics, Pros and Cons of GANs, Machine Learning, Bias in GANs, Artificial Neural Networks, Deep Learning, GAN Evaluation, StyleGANs, Computer Vision, Statistical Programming, Machine Learning Algorithms, Python Programming

Reviews

4.7 (678 ratings)

  • 5 stars
    77.72%
  • 4 stars
    14.45%
  • 3 stars
    5.01%
  • 2 stars
    1.62%
  • 1 star
    1.17%

GJ

Oct 1, 2020

Very good course! Helpful to understand evaluation metrics and details of Style GAN. It was also super cool to have the bias section that is not as well known as the others. Loved it!

AB

Mar 25, 2021

Great material...but the stylegan code implementation requires more video material. Instead adding one more week for ProGan part before stylegan would be helpful for the learners.

From the lesson

Week 1: Evaluation of GANs

Understand the challenges of evaluating GANs, learn about the advantages and disadvantages of different GAN performance measures, and implement the Fr茅chet Inception Distance (FID) method using embeddings to assess the accuracy of GANs!

Taught By

  • Sharon Zhou

    Sharon Zhou

    Instructor

  • Eda Zhou

    Eda Zhou

    Curriculum Developer

  • Eric Zelikman

    Eric Zelikman

    Curriculum Engineer

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