Deep Fakes
Key Takeaways
The video discusses the concept of Deep Fakes, a technology that uses deep learning to digitally alter faces in videos, and explores the possibility of using machine learning to detect fake videos.
Original Description
Digital videos can be described as sequences of still images and associated audio. Audio is easy to fake. What about video?
A video can easily be broken down into a sequence of still images replayed rapidly in sequence. In this context, videos are simply very high dimensional sequences of observations, ripe for input into a machine learning algorithm.
The availability of commodity hardware, clever algorithms, and well-designed software to implement those algorithms at scale make it possible to do machine learning on video, but to what end? There are many answers, one interesting approach being the technology called "DeepFakes".
The Deep of Deepfakes refers to Deep Learning, and the fake refers to the function of the software - to take a real video of a human being and digitally alter their face to match someone else's face. Here are two examples:
Barack Obama via Jordan Peele
The versatility of Nick Cage
This software produces curiously convincing fake videos. Yet, there's something slightly off about them. Surely machine learning can be used to determine real from fake... right? Siwei Lyu and his collaborators certainly thought so and demonstrated this idea by identifying a novel, detectable feature which was commonly missing from videos produced by the Deep Fakes software.
In this episode, we discuss this use case for deep learning, detecting fake videos, and the threat of fake videos in the future.
Watch on YouTube ↗
(saves to browser)
Sign in to unlock AI tutor explanation · ⚡30
Playlist
Uploads from Data Skeptic · Data Skeptic · 0 of 60
← Previous
Next →
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
Data Skeptic book giveaway contest winner selection
Data Skeptic
OpenHouse - Front end and API overview
Data Skeptic
OpenHouse Crawling with AWS Lambda
Data Skeptic
[MINI] Logistic Regression on Audio Data
Data Skeptic
Data Provenance and Reproducibility with Pachyderm
Data Skeptic
[MINI] Primer on Deep Learning
Data Skeptic
Big Data Tools and Trends
Data Skeptic
[MINI] Automated Feature Engineering
Data Skeptic
The Data Refuge Project
Data Skeptic
[MINI] The Perceptron
Data Skeptic
[MINI] Feed Forward Neural Networks
Data Skeptic
Data Science at Patreon
Data Skeptic
[MINI] Backpropagation
Data Skeptic
[MINI] GPU CPU
Data Skeptic
OpenHouse
Data Skeptic
[MINI] Generative Adversarial Networks
Data Skeptic
[MINI] AdaBoost
Data Skeptic
[MINI] The Bootstrap
Data Skeptic
[MINI] Dropout
Data Skeptic
[MINI] Gini Coefficients
Data Skeptic
[MINI] Random Forest
Data Skeptic
[MINI] Heteroskedasticity
Data Skeptic
[MINI] ANOVA
Data Skeptic
Urban Congestion
Data Skeptic
[MINI] The CAP Theorem
Data Skeptic
Unstructured Data for Finance
Data Skeptic
Detecting Terrorists with Facial Recognition?
Data Skeptic
Predictive Models on Random Data
Data Skeptic
[MINI] Entropy
Data Skeptic
[MINI] F1 Score
Data Skeptic
Causal Impact
Data Skeptic
Machine Learning on Images with Noisy Human-centric Labels
Data Skeptic
The Library Problem
Data Skeptic
Stealing Models from the Cloud
Data Skeptic
Data Science at eHarmony
Data Skeptic
Multiple Comparisons and Conversion Optimization
Data Skeptic
Election Predictions
Data Skeptic
[MINI] Calculating Feature Importance
Data Skeptic
MS Connect Conference
Data Skeptic
Music21
Data Skeptic
The Police Data and the Data Driven Justice Initiatives
Data Skeptic
Studying Competition and Gender Through Chess
Data Skeptic
[MINI] Goodhart's Law
Data Skeptic
Trusting Machine Learning Models with LIME
Data Skeptic
[MINI] Leakage
Data Skeptic
Predictive Policing
Data Skeptic
Mutli-Agent Diverse Generative Adversarial Networks
Data Skeptic
[MINI] Convolutional Neural Networks
Data Skeptic
Unsupervised Depth Perception
Data Skeptic
[MINI] Max-pooling
Data Skeptic
MS Build 2017
Data Skeptic
Activation Functions
Data Skeptic
Doctor AI
Data Skeptic
[MINI] The Vanishing Gradient
Data Skeptic
CosmosDB
Data Skeptic
Estimating Sheep Pain with Facial Recognition
Data Skeptic
[MINI] Conditional Independence
Data Skeptic
MINI: Bayesian Belief Networks
Data Skeptic
Project Common Voice
Data Skeptic
[MINI] Recurrent Neural Networks
Data Skeptic
More on: CV Basics
View skill →Related AI Lessons
⚡
⚡
⚡
⚡
How to Learn a Hard Technical Skill Without Burning Out
Dev.to · Anas Kalthoum | FreeBrain
After interviewing over 100 ML Candidates. Last Week Someone Walked In and Made Me Take Notes.
Medium · Machine Learning
How AI Learns with Less Labeled Data
Medium · Machine Learning
Mastering TypeScript — Understanding the TypeScript Compiler (tsc) from Scratch — Lesson 2
Medium · JavaScript
🎓
Tutor Explanation
DeepCamp AI