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Visual Privacy Task 
Overview 
Atta Badii, Touradj Ebrahimi, Christian Fedorczak, Pavel Korshunov, 
Tomas Piatrik, Volker Eiselein, Ahmed Al-Obaidi
Task Description 
• To explore the possibilities to optimise the 
process of privacy filtering so as to: 
1. obscure personal visual information effectively 
whilst, 
2. keeping as much as possible of the ‘useful’ 
information that would enable a human viewer 
to interpret the obscured video frame. 
Slide 2
Participants 
VVPPTT 22001144:: 1111 rreeggiissttrraattiioonnss,, 88 ppaarrttiicciippaannttss ,,
PEViD Dataset 
21 annotated videos 
• ~20s 
• 25fps 
• 1920x1080 
• Indoor/Outdoor 
• Daytime/Evening 
• Featured actions include: Bag dropping, Pickpocketing, 
Fighting, or simply Walking 
• Ground truth consists of: annotated People, Faces, 
Accessories, Hair regions, Skin regions 
Privacy sensitive 
region 
Development Set = 9 videos 
Evaluation Set = 12 videos 
Sensitivity 
level 
Skin Medium (M) 
Face High (H) 
Hair Low (L) 
Accessories Medium (M) 
Person Low (L)
Subjective Evaluation Streams 
The privacy protected video clips were evaluated by each of 
three distinct communities of human evaluators: 
i) Naive viewers (engaged via a crowdsourcing platform) 
• 290 workers responded, 230 were found to have provided reliable 
responses 
ii) Video-analytics technology and privacy protection solutions 
developers 
• focus group consisted of (65) participants, (15) of them were 
females 
iii) Surveillance monitoring staff and law enforcement staff 
• focus group comprised of (59) participants including (22) females 
Slide 5
Evaluation Setup 
• Six (6) video clips were pre-selected from each submission 
and evaluated using the three (3) evaluation streams. 
• A Questionnaire consisting of 12 questions had been carefully 
designed to examine aspects related to privacy, intelligibility, 
and pleasantness; this was used in stream 2 and 3. 
• The First (5) questions were aimed at eliciting the opinions of 
the evaluators re the Contents of the viewed videos. The 
responses to these questions were considered with respect to 
the ground truth. 
• The rest of the questions were aimed at eliciting the Subjective 
Opinions of the evaluators re the viewed videos. 
• Stream 1 used a shortened version of the questionnaire with 
(7) questions in total due to crowdsourcing constraints. 
Slide 6
UI-REF based criteria 
• Privacy Protection Level – How adequate was 
the level of privacy protection achieved by the 
filter across all testing video clips? 
• Level of Intelligibility – How much ‘useful’ 
information that was retained in the video 
frames after privacy filtering had been applied? 
• Pleasantness of the resulting privacy filtered 
video frames in terms of their ‘aesthetic’ 
perceptual appeal to human viewers. How 
acceptable were any adverse aesthetic effects? 
Perceived Effects, Side Effects, Cross-Effects, Affects 
Slide 7
Stream 1 results 
Slide 8
Stream 2 results 
Slide 9
Stream 3 results 
Slide 10
Median of the 3 streams 
Slide 11
Thank You

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Overview of the MediaEval 2014 Visual Privacy Task

  • 1. Visual Privacy Task Overview Atta Badii, Touradj Ebrahimi, Christian Fedorczak, Pavel Korshunov, Tomas Piatrik, Volker Eiselein, Ahmed Al-Obaidi
  • 2. Task Description • To explore the possibilities to optimise the process of privacy filtering so as to: 1. obscure personal visual information effectively whilst, 2. keeping as much as possible of the ‘useful’ information that would enable a human viewer to interpret the obscured video frame. Slide 2
  • 3. Participants VVPPTT 22001144:: 1111 rreeggiissttrraattiioonnss,, 88 ppaarrttiicciippaannttss ,,
  • 4. PEViD Dataset 21 annotated videos • ~20s • 25fps • 1920x1080 • Indoor/Outdoor • Daytime/Evening • Featured actions include: Bag dropping, Pickpocketing, Fighting, or simply Walking • Ground truth consists of: annotated People, Faces, Accessories, Hair regions, Skin regions Privacy sensitive region Development Set = 9 videos Evaluation Set = 12 videos Sensitivity level Skin Medium (M) Face High (H) Hair Low (L) Accessories Medium (M) Person Low (L)
  • 5. Subjective Evaluation Streams The privacy protected video clips were evaluated by each of three distinct communities of human evaluators: i) Naive viewers (engaged via a crowdsourcing platform) • 290 workers responded, 230 were found to have provided reliable responses ii) Video-analytics technology and privacy protection solutions developers • focus group consisted of (65) participants, (15) of them were females iii) Surveillance monitoring staff and law enforcement staff • focus group comprised of (59) participants including (22) females Slide 5
  • 6. Evaluation Setup • Six (6) video clips were pre-selected from each submission and evaluated using the three (3) evaluation streams. • A Questionnaire consisting of 12 questions had been carefully designed to examine aspects related to privacy, intelligibility, and pleasantness; this was used in stream 2 and 3. • The First (5) questions were aimed at eliciting the opinions of the evaluators re the Contents of the viewed videos. The responses to these questions were considered with respect to the ground truth. • The rest of the questions were aimed at eliciting the Subjective Opinions of the evaluators re the viewed videos. • Stream 1 used a shortened version of the questionnaire with (7) questions in total due to crowdsourcing constraints. Slide 6
  • 7. UI-REF based criteria • Privacy Protection Level – How adequate was the level of privacy protection achieved by the filter across all testing video clips? • Level of Intelligibility – How much ‘useful’ information that was retained in the video frames after privacy filtering had been applied? • Pleasantness of the resulting privacy filtered video frames in terms of their ‘aesthetic’ perceptual appeal to human viewers. How acceptable were any adverse aesthetic effects? Perceived Effects, Side Effects, Cross-Effects, Affects Slide 7
  • 10. Stream 3 results Slide 10
  • 11. Median of the 3 streams Slide 11