SlideShare a Scribd company logo
FAIRview:
Responsible Video
Summarization
/ Lora Aroyo
/ Tagasauris Inc
/ http://lora-aroyo.org
/ @laroyo
Agenda for today
3:00 - 3:20: Introduction of Video Summarization Context
3:20 - 3:50: Work in groups to answer the following questions
(discussion document: http://bit.ly/fairview_discussion)
Q1: How to increase the user awareness (e.g. through explanations, visualizations,
interaction, etc) on the following two points:
○ the video summary “representativeness” compared to the original video
○ the (possible) video summary “misinformation potential” compared to the original video
Q2: What are adequate success metrics for video summaries?
○ How to measure the ‘representativeness’?
○ How to measure ‘misinformation potential’?
○ How to evaluate both points?
Answer these questions in the following interaction scenarios:
● while watching the video summary
● when browsing video search results
● when comparing two or more video summaries
● when creating the video summary
● other interaction scenarios
3:50 - 4:00: Summary and conclusions
http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
video is 64% of Internet traffic
http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
more Americans prefer to watch their news (46%)
than to read it (35%) or listen to it (17%)
http://www.journalism.org/2016/07/07/pathways-to-news/
http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
300h of video uploaded each min on YouTube alone
http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
in 2020 it would take a person more than 5 million
years to watch the videos uploaded in a month
http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
at some point it all looks the same
http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
… tons of videos but difficult to choose what to watch
http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
how to make videos consumable
in the age of information overload & declining attention span?
Slide credit: @jess3 @slideshare
http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
… video snacks = the new attention economy?
http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
… opportunities of snackable content
http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
… e.g. personalized thumbnails & previews
http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
… e.g. 4-thumbnail summary in video search results
http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
…e.g. bumper ads & previews in video search results
… e.g. micro-moments in video
for on-demand discovery search
http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
… e.g. contextualized hyperlinks in video
for direct engagement
http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
… creating bite size info nuggets (video snacks)
that can quickly be consumed, understood & shared
http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
Let’s look at an example
http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
Scenes from HBO Series: Big Little Lies
http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
Scenes from 1 Episode
http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
Selected: 1 Scene
Selected: 1 Scene
http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
Frames for the selected sceneSelected: 1 Scene
http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
All Concepts describing the FrameSelected: 1 Frame
http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
all this results in a lot of
video, image and label data
… that could be organized in lots of different storylines
i.e. video snacks
http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
cars
kids
nature
guns hugs
TOPICS
The (infinite) stories
you can tell with data ...
http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
cars
kids
nature
guns hugs
FORMATS
4-Frames Preview
6-Sec Trailer
Adaptive
Starting Frames
Skimming
Static
Dynamic
The (infinite) stories
you can tell with data ...
http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
cars
kids
nature
guns hugs
INTERACTIONS
Hyperlinks
E-commerce links
Looping
Autoplay
Recommendation
Canvas
locate
buy
learnname
The (infinite) stories
you can tell with data ...
http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
… but how are these video stories created?
who selects what to include / exclude?
who chooses the summarization approaches?
what is the impact of different approaches?
http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
… all these choices can amplify / diminish
a specific aspect or perspective in the original video,
and in this way introduce a bias
that can potentially lead to misinformation
http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
FAIRView
● how to bring more awareness of all the perspectives,
topics and elements present in the original video
● what are indicators & evaluation criteria on how
these are represented in a video summary
● how to adapt existing summarization algorithms to
produce representative & explainable video
summaries
http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
FAIRView
● study this problem in the context of news videos
● empower users with tools to evaluate
representativeness of videos
● gain a granular understanding of video content in
terms of perspectives, opinions, stories, etc.
http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
Work in Groups
3:20 - 3:50: Work in groups to answer the following questions
(discussion document: http://bit.ly/fairview_discussion)
Q1: How to increase the user awareness (e.g. through explanations, visualizations,
interaction, etc) on the following two points:
○ the video summary “representativeness” compared to the original video
○ the (possible) video summary “misinformation potential” compared to the original video
Q2: What are adequate success metrics for video summaries?
○ How to measure the ‘representativeness’?
○ How to measure ‘misinformation potential’?
○ How to evaluate both points?
Answer these questions in the following interaction scenarios:
● while watching the video summary
● when browsing video search results
● when comparing two or more video summaries
● when creating the video summary
● other interaction scenarios
3:50 - 4:00: Summary and conclusions
http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
FAIRview:
Responsible Video
Summarization
/ Lora Aroyo
/ Tagasauris Inc
/ http://lora-aroyo.org
/ @laroyo

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FAIRview: Responsible Video Summarization @NYCML'18

  • 1. FAIRview: Responsible Video Summarization / Lora Aroyo / Tagasauris Inc / http://lora-aroyo.org / @laroyo
  • 2. Agenda for today 3:00 - 3:20: Introduction of Video Summarization Context 3:20 - 3:50: Work in groups to answer the following questions (discussion document: http://bit.ly/fairview_discussion) Q1: How to increase the user awareness (e.g. through explanations, visualizations, interaction, etc) on the following two points: ○ the video summary “representativeness” compared to the original video ○ the (possible) video summary “misinformation potential” compared to the original video Q2: What are adequate success metrics for video summaries? ○ How to measure the ‘representativeness’? ○ How to measure ‘misinformation potential’? ○ How to evaluate both points? Answer these questions in the following interaction scenarios: ● while watching the video summary ● when browsing video search results ● when comparing two or more video summaries ● when creating the video summary ● other interaction scenarios 3:50 - 4:00: Summary and conclusions http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
  • 3. video is 64% of Internet traffic http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
  • 4. more Americans prefer to watch their news (46%) than to read it (35%) or listen to it (17%) http://www.journalism.org/2016/07/07/pathways-to-news/ http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
  • 5. 300h of video uploaded each min on YouTube alone http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
  • 6. in 2020 it would take a person more than 5 million years to watch the videos uploaded in a month http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
  • 7. at some point it all looks the same http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
  • 8. … tons of videos but difficult to choose what to watch http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
  • 9. how to make videos consumable in the age of information overload & declining attention span?
  • 10. Slide credit: @jess3 @slideshare http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
  • 11. … video snacks = the new attention economy? http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
  • 12. … opportunities of snackable content http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
  • 13. … e.g. personalized thumbnails & previews http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
  • 14. … e.g. 4-thumbnail summary in video search results http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
  • 15. http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo …e.g. bumper ads & previews in video search results
  • 16. … e.g. micro-moments in video for on-demand discovery search http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
  • 17. … e.g. contextualized hyperlinks in video for direct engagement http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
  • 18. … creating bite size info nuggets (video snacks) that can quickly be consumed, understood & shared http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
  • 19. Let’s look at an example http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
  • 20. Scenes from HBO Series: Big Little Lies http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
  • 21. Scenes from 1 Episode http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
  • 22. Selected: 1 Scene Selected: 1 Scene http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
  • 23. Frames for the selected sceneSelected: 1 Scene http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
  • 24. All Concepts describing the FrameSelected: 1 Frame http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
  • 25. all this results in a lot of video, image and label data … that could be organized in lots of different storylines i.e. video snacks http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
  • 26. cars kids nature guns hugs TOPICS The (infinite) stories you can tell with data ... http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
  • 27. cars kids nature guns hugs FORMATS 4-Frames Preview 6-Sec Trailer Adaptive Starting Frames Skimming Static Dynamic The (infinite) stories you can tell with data ... http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
  • 28. cars kids nature guns hugs INTERACTIONS Hyperlinks E-commerce links Looping Autoplay Recommendation Canvas locate buy learnname The (infinite) stories you can tell with data ... http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
  • 30. … but how are these video stories created? who selects what to include / exclude? who chooses the summarization approaches? what is the impact of different approaches? http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
  • 31. … all these choices can amplify / diminish a specific aspect or perspective in the original video, and in this way introduce a bias that can potentially lead to misinformation http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
  • 32. FAIRView ● how to bring more awareness of all the perspectives, topics and elements present in the original video ● what are indicators & evaluation criteria on how these are represented in a video summary ● how to adapt existing summarization algorithms to produce representative & explainable video summaries http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
  • 33. FAIRView ● study this problem in the context of news videos ● empower users with tools to evaluate representativeness of videos ● gain a granular understanding of video content in terms of perspectives, opinions, stories, etc. http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
  • 34. Work in Groups 3:20 - 3:50: Work in groups to answer the following questions (discussion document: http://bit.ly/fairview_discussion) Q1: How to increase the user awareness (e.g. through explanations, visualizations, interaction, etc) on the following two points: ○ the video summary “representativeness” compared to the original video ○ the (possible) video summary “misinformation potential” compared to the original video Q2: What are adequate success metrics for video summaries? ○ How to measure the ‘representativeness’? ○ How to measure ‘misinformation potential’? ○ How to evaluate both points? Answer these questions in the following interaction scenarios: ● while watching the video summary ● when browsing video search results ● when comparing two or more video summaries ● when creating the video summary ● other interaction scenarios 3:50 - 4:00: Summary and conclusions http://lora-aroyo.org https://www.slideshare.net/laroyo @laroyo
  • 35. FAIRview: Responsible Video Summarization / Lora Aroyo / Tagasauris Inc / http://lora-aroyo.org / @laroyo