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* Experimental approach
* Experimental approach
* Black Box and how to approach this complexity  
* Black Box and how to approach this complexity  


===Conclusion===
===Conclusion===
How understanding and approaches like reverse engineering help influencing complex systems.
How understanding and approaches like reverse engineering help influencing complex systems.

Revision as of 22:53, 7 November 2018

Thesis Outline

Thesis Statement

Topic

Influence of machine learning on visual culture

Focus

in times of machine learning

Argument

How understanding machine learning leads to

Revise

Machine Learning is intervening in our visual world and therefore shaping how we perceive. Algorithms analyse images, process data and even generate new images, while these algorithms are black boxes.

Scope

»Intelligent« algorithms are everywhere and they challenge the way we see. They generate new kinds of images that raise a new meaning and understanding of the world. How can we understand these algorithms in order to understand their influence on our visual perception.

Outline

Introduction

Background

  • I'm specifically interested in algorithms and their influence on visual culture
  • Machine learning algorithms are everywhere and increasingly intervene in our world and how we perceive it

Body

Machine Learning Interventions in visual culture

  • Examination of current applications of machine learning algorithms
    • Influence on visual culture
    • short history of algorithmic image production / analysis
  • Problematic of machine learning algorithms and models

Examining Machine Learning

  • What machine learning is, where it is and what it does

Computer Vision

  • Algorithms that see and interpret our world
  • How algorithms intervene in our world
  • Visibility for Computers and Humans:
    • How we help computers to help them see
    • Therefore: how computers help us see
    • Computer challenge what and how we see
    • Machines see things that remain invisible for humans
    • Relation to the invisibility of models in machine learning algorithms ->

Computer Visual Generation

  • Algorithms that generate visual material -> images

Image Language (A bag of features)

  • Images as analytical tools
  • Features of images
  • How we talk about images in relation to how they are generated

Understanding Machine Learning

Reverse Engineering

  • Experimental approach
  • Black Box and how to approach this complexity



Conclusion

How understanding and approaches like reverse engineering help influencing complex systems.