SlideShare une entreprise Scribd logo
1  sur  13
Social Event Detection (SED):
Challenges, Dataset and Evaluation
 Raphaël Troncy <raphael.troncy@eurecom.fr>
 Vasileios Mezaris <bmezaris@iti.gr>
 Symeon Papadopoulos <papadop@iti.gr>
 Emmanouil Schinas <manosetro@iti.gr>
 Ioannis Kompatsiaris <ikom@iti.gr>
What are Events?

 Events are observable occurrences grouping




                      People                       Places Time

                 Experiences documented by Media




  04/10/2012 -        Social Event Detection (SED) Task - MediaEval 2012, Pisa, Italy   -2
SED: bigger, longer, harder

 In 2011                                                   In 2012
   2 challenges                                                      3 challenges
   73k photos (2,43 Gb)                                                       1 from SED 2011
   No training dataset                                               167k photos (5,5 Gb)
                                                                               cc licence check
   18 teams interested
   7 teams submitted runs                                            Training dataset =
                                                                       SED 2011
 Considered easy                                                     21 teams interested
   F-measure = 85%                                                            … from 15 countries
    (challenge 1)                                                     5 teams submitted runs
   F-measure = 69%
    (challenge 2)
                                                            Much harder !

   04/10/2012 -   Social Event Detection (SED) Task - MediaEval 2012, Pisa, Italy      -3
Three challenges (type and venue)
1. Find all technical events that took place in Germany in
   the test collection.
2. Find all soccer events taking place in Hamburg
   (Germany) and Madrid (Spain) in the collection.
3. Find all demonstration and protest events of the
   Indignados movement occurring in public places in
   Madrid in the collection

    For each event, we provided relevant and non relevant
     example photos
 Task = detect events and provide all illustrating photos


    04/10/2012 -   Social Event Detection (SED) Task - MediaEval 2012, Pisa, Italy   -4
Dataset Construction

 Collect 167332 Flickr Photos (Jan 2009-Dec 2011)
   4,422 unique Flickr users, all in CC licence
   All geo-tagged in 5 cities: Barcelona (72255), Cologne
    (15850), Hannover (2823), Hamburg (16958), Madrid
    (59043) + 0,22 % (403) from EventMedia

 Altered metadata:
   geo-tags removed for 80% of the photos (random)
   33466 photos still geo-tagged

 Provide only metadata … but real media were
  available to participants if they asked (5,5 Gb)

    04/10/2012 -   Social Event Detection (SED) Task - MediaEval 2012, Pisa, Italy   -5
Ground Truth and Evaluation Measures

 CrEve annotation tool: http://www.clusttour.gr/creve/
    For each of the 6 collections, review all photos and
     associate them to events (that have to be created)
    Search by text, geo-coordinates, date and user
    Review annotations made by others
    Use EventMedia and machine tags (upcoming:event=xxx)

 Evaluation Measures:
    Harmonic mean (F-score of Precision and Recall)
    Normalized Mutual Information (NMI): jointly consider the
     goodness of the photos retrieved and their correct
     assignment to different events

    04/10/2012 -   Social Event Detection (SED) Task - MediaEval 2012, Pisa, Italy   -6
What ideally should be found

 Challenge 1:
   19 events, 2234 photos (avg = 117)
   Baseline precision (random): 0,01%

 Challenge 2:
   79 events, 1684 photos (avg = 21)
   Baseline precision (random): 0,01%

 Challenge 3:
   52 events, 3992 Photos (avg = 77)
   Baseline precision (random): 0,02%



   04/10/2012 -   Social Event Detection (SED) Task - MediaEval 2012, Pisa, Italy   -7
Who Has Participated ?

 21 Teams registered (18 in 2011)
 5 Teams cross the lines (7 in 2011, 2 overlaps)




 One participant missing at the workshop!
    04/10/2012 -   Social Event Detection (SED) Task - MediaEval 2012, Pisa, Italy   -8
Quick Summary of Approaches
 2011: all but 1 participants use background knowledge
    Last.fm (all), Fbleague (EURECOM), PlayerHistory (QMUL)
    DBpedia, Freebase, Geonames, WordNet

 2012: all but 2 participants use a generic approach
    IR approach: query matching clusters (metadata, temporal, spatial):
     MISIMIS
    Classification approach:
          Topic detection with LDA, city classification with TF-IDF, event detection using
           peaks in timeline using the query topics: AUTH-ISSEL
          Learning model using the training data and SVM: CERTH-ITI
    Background knowledge: QMUL, DISI

 2012: all approaches are NOT fully automatic
    Manual selection of some parameters (e.g. topics)


    04/10/2012 -          Social Event Detection (SED) Task - MediaEval 2012, Pisa, Italy   -9
Results – Challenge 1 (Technical Events)

                    Precision                             Recall                               F-score                       NMI
AUTHISSEL_4             76,29                                94,9                                84,58                       0,7238
CERTH_1                 43,11                               11,91                                18,66                       0,1877
DISI_1                  86,23                               59,13                                70,15                       0,6011
MISIMS_2                    2,52                             1,88                                 2,15                       0,0236
QMUL_4                      3,86                            12,85                                 5,93                       0,0475
         90         84.58
         80
                                                                    70.15
         70
         60
         50
         40
         30
                                           18.66
         20
         10                                                                                                           5.93
                                                                                               2.15
          0
                                                                     Runs

                               AUTHISSEL_4          CERTHITI_1        DISI_1      MISIMS_2            QMUL_4

     04/10/2012 -            Social Event Detection (SED) Task - MediaEval 2012, Pisa, Italy                   - 10
Results – Challenge 2 (Soccer Events)

                    Precision                            Recall                               F-score            NMI
AUTHISSEL_4            88,18                               93,49                                90,76            0,8499
CERTH_1                85,57                               66,19                                74,64            0,6745
DISI_1
MISIMS_2               34,49                               17,25                                22,99            0,1993
QMUL_4                 79,04                               67,12                                72,59            0,6493
           100
                    90.76
            90
            80                           74.64                                                           72.59
            70
            60
            50
            40
            30                                                                          22.99
            20
            10
             0
                                                                 Runs

                            AUTHISSEL_4         CERTHITI_3        DISI_1      MISIMS_2          QMUL_1


     04/10/2012 -           Social Event Detection (SED) Task - MediaEval 2012, Pisa, Italy              - 11
Results – Challenge 3 (Indignados Events)

                    Precision                             Recall                               F-score            NMI
AUTHISSEL_4            88,91                                90,78                                89,83            0,738
CERTH_1                86,24                                54,61                                66,87            0,4654
DISI_1                 86,15                                47,17                                60,96            0,4465
MISIMS_2                48,3                                46,87                                47,58            0,3088
QMUL_4                 22,88                                33,48                                27,19            0,1988
            100
                     89.83
             90
             80
             70                            66.87
                                                                  60.96
             60
                                                                                         47.58
             50
             40
                                                                                                          27.19
             30
             20
             10
               0
                                                                  Runs

                             AUTHISSEL_4         CERTHITI_3        DISI_1      MISIMS_2          QMUL_4

     04/10/2012 -            Social Event Detection (SED) Task - MediaEval 2012, Pisa, Italy              - 12
Conclusion

 Lessons learned
   Clear winner for all tasks: generic approach but manual
    selection of the topics
   Use of background knowledge still useful if well-used

 Looking at next year SED
   Shlomo Geva (Queensland University of Technology) +
    Philipp Cimiano (University of Bielefeld)
   Dataset: bigger, more diverse
   Media: photos and videos ? (at least 10% videos?)
   Metadata: include some social network relationships,
    participation at events
   Evaluation measures: event granularity? Time/CPU?
   04/10/2012 -   Social Event Detection (SED) Task - MediaEval 2012, Pisa, Italy   - 13

Contenu connexe

En vedette

Como hacer una pagina web en wix sharon
Como hacer una pagina web en wix sharonComo hacer una pagina web en wix sharon
Como hacer una pagina web en wix sharon
Sharon Jimenez
 
NII, Japan at MediaEval 2012 Violent Scenes Detection Affect Task
NII, Japan at MediaEval 2012 Violent Scenes Detection Affect TaskNII, Japan at MediaEval 2012 Violent Scenes Detection Affect Task
NII, Japan at MediaEval 2012 Violent Scenes Detection Affect Task
MediaEval2012
 
Intro totransportphenomenanew
Intro totransportphenomenanewIntro totransportphenomenanew
Intro totransportphenomenanew
ilovepurin
 
Activities for journalistic skills
Activities for journalistic skillsActivities for journalistic skills
Activities for journalistic skills
JNavarro0321
 
TUKE MediaEval 2012: Spoken Web Search using DTW and Unsupervised SVM
TUKE MediaEval 2012: Spoken Web Search using DTW and Unsupervised SVMTUKE MediaEval 2012: Spoken Web Search using DTW and Unsupervised SVM
TUKE MediaEval 2012: Spoken Web Search using DTW and Unsupervised SVM
MediaEval2012
 
The TUM Cumulative DTW Approach for the Mediaeval 2012 Spoken Web Search Task
The TUM Cumulative DTW Approach for the Mediaeval 2012 Spoken Web Search TaskThe TUM Cumulative DTW Approach for the Mediaeval 2012 Spoken Web Search Task
The TUM Cumulative DTW Approach for the Mediaeval 2012 Spoken Web Search Task
MediaEval2012
 
Ghent and Cardiff University at the 2012 Placing Task
Ghent and Cardiff University at the 2012 Placing TaskGhent and Cardiff University at the 2012 Placing Task
Ghent and Cardiff University at the 2012 Placing Task
MediaEval2012
 
MediaEval 2012 Visual Privacy Task: Applying Transform-domain Scrambling to A...
MediaEval 2012 Visual Privacy Task: Applying Transform-domain Scrambling to A...MediaEval 2012 Visual Privacy Task: Applying Transform-domain Scrambling to A...
MediaEval 2012 Visual Privacy Task: Applying Transform-domain Scrambling to A...
MediaEval2012
 
Brave New Task: User Account Matching
Brave New Task: User Account MatchingBrave New Task: User Account Matching
Brave New Task: User Account Matching
MediaEval2012
 
The Shanghai-Hongkong Team at MediaEval2012: Violent Scene Detection Using Tr...
The Shanghai-Hongkong Team at MediaEval2012: Violent Scene Detection Using Tr...The Shanghai-Hongkong Team at MediaEval2012: Violent Scene Detection Using Tr...
The Shanghai-Hongkong Team at MediaEval2012: Violent Scene Detection Using Tr...
MediaEval2012
 
How Spatial Segmentation improves the Multimodal Geo-Tagging
How Spatial Segmentation improves the Multimodal Geo-TaggingHow Spatial Segmentation improves the Multimodal Geo-Tagging
How Spatial Segmentation improves the Multimodal Geo-Tagging
MediaEval2012
 
TUD at MediaEval 2012 genre tagging task: Multi-modality video categorization...
TUD at MediaEval 2012 genre tagging task: Multi-modality video categorization...TUD at MediaEval 2012 genre tagging task: Multi-modality video categorization...
TUD at MediaEval 2012 genre tagging task: Multi-modality video categorization...
MediaEval2012
 
The L2F Spoken Web Search system for Mediaeval 2012
The L2F Spoken Web Search system for Mediaeval 2012The L2F Spoken Web Search system for Mediaeval 2012
The L2F Spoken Web Search system for Mediaeval 2012
MediaEval2012
 
14 10 21_презентация сту
14 10 21_презентация сту14 10 21_презентация сту
14 10 21_презентация сту
Stanislav Litvinenko
 
ARF @ MediaEval 2012: An Uninformed Approach to Violence Detection in Hollywo...
ARF @ MediaEval 2012: An Uninformed Approach to Violence Detection in Hollywo...ARF @ MediaEval 2012: An Uninformed Approach to Violence Detection in Hollywo...
ARF @ MediaEval 2012: An Uninformed Approach to Violence Detection in Hollywo...
MediaEval2012
 

En vedette (19)

14 10 21_презентация сту
14 10 21_презентация сту14 10 21_презентация сту
14 10 21_презентация сту
 
Como hacer una pagina web en wix sharon
Como hacer una pagina web en wix sharonComo hacer una pagina web en wix sharon
Como hacer una pagina web en wix sharon
 
2010 Marketing Plan
2010 Marketing Plan2010 Marketing Plan
2010 Marketing Plan
 
NII, Japan at MediaEval 2012 Violent Scenes Detection Affect Task
NII, Japan at MediaEval 2012 Violent Scenes Detection Affect TaskNII, Japan at MediaEval 2012 Violent Scenes Detection Affect Task
NII, Japan at MediaEval 2012 Violent Scenes Detection Affect Task
 
Intro totransportphenomenanew
Intro totransportphenomenanewIntro totransportphenomenanew
Intro totransportphenomenanew
 
Activities for journalistic skills
Activities for journalistic skillsActivities for journalistic skills
Activities for journalistic skills
 
Papiloma humano
Papiloma humanoPapiloma humano
Papiloma humano
 
TUKE MediaEval 2012: Spoken Web Search using DTW and Unsupervised SVM
TUKE MediaEval 2012: Spoken Web Search using DTW and Unsupervised SVMTUKE MediaEval 2012: Spoken Web Search using DTW and Unsupervised SVM
TUKE MediaEval 2012: Spoken Web Search using DTW and Unsupervised SVM
 
The TUM Cumulative DTW Approach for the Mediaeval 2012 Spoken Web Search Task
The TUM Cumulative DTW Approach for the Mediaeval 2012 Spoken Web Search TaskThe TUM Cumulative DTW Approach for the Mediaeval 2012 Spoken Web Search Task
The TUM Cumulative DTW Approach for the Mediaeval 2012 Spoken Web Search Task
 
κειμενο
κειμενοκειμενο
κειμενο
 
Ghent and Cardiff University at the 2012 Placing Task
Ghent and Cardiff University at the 2012 Placing TaskGhent and Cardiff University at the 2012 Placing Task
Ghent and Cardiff University at the 2012 Placing Task
 
MediaEval 2012 Visual Privacy Task: Applying Transform-domain Scrambling to A...
MediaEval 2012 Visual Privacy Task: Applying Transform-domain Scrambling to A...MediaEval 2012 Visual Privacy Task: Applying Transform-domain Scrambling to A...
MediaEval 2012 Visual Privacy Task: Applying Transform-domain Scrambling to A...
 
Brave New Task: User Account Matching
Brave New Task: User Account MatchingBrave New Task: User Account Matching
Brave New Task: User Account Matching
 
The Shanghai-Hongkong Team at MediaEval2012: Violent Scene Detection Using Tr...
The Shanghai-Hongkong Team at MediaEval2012: Violent Scene Detection Using Tr...The Shanghai-Hongkong Team at MediaEval2012: Violent Scene Detection Using Tr...
The Shanghai-Hongkong Team at MediaEval2012: Violent Scene Detection Using Tr...
 
How Spatial Segmentation improves the Multimodal Geo-Tagging
How Spatial Segmentation improves the Multimodal Geo-TaggingHow Spatial Segmentation improves the Multimodal Geo-Tagging
How Spatial Segmentation improves the Multimodal Geo-Tagging
 
TUD at MediaEval 2012 genre tagging task: Multi-modality video categorization...
TUD at MediaEval 2012 genre tagging task: Multi-modality video categorization...TUD at MediaEval 2012 genre tagging task: Multi-modality video categorization...
TUD at MediaEval 2012 genre tagging task: Multi-modality video categorization...
 
The L2F Spoken Web Search system for Mediaeval 2012
The L2F Spoken Web Search system for Mediaeval 2012The L2F Spoken Web Search system for Mediaeval 2012
The L2F Spoken Web Search system for Mediaeval 2012
 
14 10 21_презентация сту
14 10 21_презентация сту14 10 21_презентация сту
14 10 21_презентация сту
 
ARF @ MediaEval 2012: An Uninformed Approach to Violence Detection in Hollywo...
ARF @ MediaEval 2012: An Uninformed Approach to Violence Detection in Hollywo...ARF @ MediaEval 2012: An Uninformed Approach to Violence Detection in Hollywo...
ARF @ MediaEval 2012: An Uninformed Approach to Violence Detection in Hollywo...
 

Plus de MediaEval2012

MediaEval 2012 Opening
MediaEval 2012 OpeningMediaEval 2012 Opening
MediaEval 2012 Opening
MediaEval2012
 
A Multimodal Approach for Video Geocoding
A Multimodal Approach for   Video Geocoding A Multimodal Approach for   Video Geocoding
A Multimodal Approach for Video Geocoding
MediaEval2012
 
Brave New Task: Musiclef Multimodal Music Tagging
Brave New Task: Musiclef Multimodal Music TaggingBrave New Task: Musiclef Multimodal Music Tagging
Brave New Task: Musiclef Multimodal Music Tagging
MediaEval2012
 
Search and Hyperlinking Task at MediaEval 2012
Search and Hyperlinking Task at MediaEval 2012Search and Hyperlinking Task at MediaEval 2012
Search and Hyperlinking Task at MediaEval 2012
MediaEval2012
 
CUNI at MediaEval 2012: Search and Hyperlinking Task
CUNI at MediaEval 2012: Search and Hyperlinking TaskCUNI at MediaEval 2012: Search and Hyperlinking Task
CUNI at MediaEval 2012: Search and Hyperlinking Task
MediaEval2012
 
DCU Search Runs at MediaEval 2012: Search and Hyperlinking Task
DCU Search Runs at MediaEval 2012: Search and Hyperlinking TaskDCU Search Runs at MediaEval 2012: Search and Hyperlinking Task
DCU Search Runs at MediaEval 2012: Search and Hyperlinking Task
MediaEval2012
 
Ghent University-IBBT at MediaEval 2012 Search and Hyperlinking: Semantic Sim...
Ghent University-IBBT at MediaEval 2012 Search and Hyperlinking: Semantic Sim...Ghent University-IBBT at MediaEval 2012 Search and Hyperlinking: Semantic Sim...
Ghent University-IBBT at MediaEval 2012 Search and Hyperlinking: Semantic Sim...
MediaEval2012
 
The CLEF Initiative From 2010 to 2012 and Onwards
The CLEF Initiative From 2010 to 2012 and OnwardsThe CLEF Initiative From 2010 to 2012 and Onwards
The CLEF Initiative From 2010 to 2012 and Onwards
MediaEval2012
 
Overview of MediaEval 2012 Visual Privacy Task
Overview of MediaEval 2012 Visual Privacy TaskOverview of MediaEval 2012 Visual Privacy Task
Overview of MediaEval 2012 Visual Privacy Task
MediaEval2012
 
MediaEval 2012 Visual Privacy Task: Privacy and Intelligibility through Pixel...
MediaEval 2012 Visual Privacy Task: Privacy and Intelligibility through Pixel...MediaEval 2012 Visual Privacy Task: Privacy and Intelligibility through Pixel...
MediaEval 2012 Visual Privacy Task: Privacy and Intelligibility through Pixel...
MediaEval2012
 
Violent Scenes Detection with Large, Brute-forced Acoustic and Visual Feature...
Violent Scenes Detection with Large, Brute-forced Acoustic and Visual Feature...Violent Scenes Detection with Large, Brute-forced Acoustic and Visual Feature...
Violent Scenes Detection with Large, Brute-forced Acoustic and Visual Feature...
MediaEval2012
 
Technicolor/INRIA/Imperial College London at the MediaEval 2012 Violent Scene...
Technicolor/INRIA/Imperial College London at the MediaEval 2012 Violent Scene...Technicolor/INRIA/Imperial College London at the MediaEval 2012 Violent Scene...
Technicolor/INRIA/Imperial College London at the MediaEval 2012 Violent Scene...
MediaEval2012
 
The MediaEval 2012 Affect Task: Violent Scenes Detectio
The MediaEval 2012 Affect Task: Violent Scenes DetectioThe MediaEval 2012 Affect Task: Violent Scenes Detectio
The MediaEval 2012 Affect Task: Violent Scenes Detectio
MediaEval2012
 
LIG at MediaEval 2012 affect task: use of a generic method
LIG at MediaEval 2012 affect task: use of a generic methodLIG at MediaEval 2012 affect task: use of a generic method
LIG at MediaEval 2012 affect task: use of a generic method
MediaEval2012
 
Violence Detection in Video by Large Scale Multi-Scale Local Binary Pattern D...
Violence Detection in Video by Large Scale Multi-Scale Local Binary Pattern D...Violence Detection in Video by Large Scale Multi-Scale Local Binary Pattern D...
Violence Detection in Video by Large Scale Multi-Scale Local Binary Pattern D...
MediaEval2012
 
UNICAMP-UFMG at MediaEval 2012: Genre Tagging Task
UNICAMP-UFMG at MediaEval 2012: Genre Tagging TaskUNICAMP-UFMG at MediaEval 2012: Genre Tagging Task
UNICAMP-UFMG at MediaEval 2012: Genre Tagging Task
MediaEval2012
 
ARF @ MediaEval 2012: Multimodal Video Classification
ARF @ MediaEval 2012: Multimodal Video ClassificationARF @ MediaEval 2012: Multimodal Video Classification
ARF @ MediaEval 2012: Multimodal Video Classification
MediaEval2012
 
TUB @ MediaEval 2012 Tagging Task: Feature Selection Methods for Bag-of-(visu...
TUB @ MediaEval 2012 Tagging Task: Feature Selection Methods for Bag-of-(visu...TUB @ MediaEval 2012 Tagging Task: Feature Selection Methods for Bag-of-(visu...
TUB @ MediaEval 2012 Tagging Task: Feature Selection Methods for Bag-of-(visu...
MediaEval2012
 

Plus de MediaEval2012 (20)

MediaEval 2012 Opening
MediaEval 2012 OpeningMediaEval 2012 Opening
MediaEval 2012 Opening
 
Closing
ClosingClosing
Closing
 
A Multimodal Approach for Video Geocoding
A Multimodal Approach for   Video Geocoding A Multimodal Approach for   Video Geocoding
A Multimodal Approach for Video Geocoding
 
Brave New Task: Musiclef Multimodal Music Tagging
Brave New Task: Musiclef Multimodal Music TaggingBrave New Task: Musiclef Multimodal Music Tagging
Brave New Task: Musiclef Multimodal Music Tagging
 
Search and Hyperlinking Task at MediaEval 2012
Search and Hyperlinking Task at MediaEval 2012Search and Hyperlinking Task at MediaEval 2012
Search and Hyperlinking Task at MediaEval 2012
 
CUNI at MediaEval 2012: Search and Hyperlinking Task
CUNI at MediaEval 2012: Search and Hyperlinking TaskCUNI at MediaEval 2012: Search and Hyperlinking Task
CUNI at MediaEval 2012: Search and Hyperlinking Task
 
DCU Search Runs at MediaEval 2012: Search and Hyperlinking Task
DCU Search Runs at MediaEval 2012: Search and Hyperlinking TaskDCU Search Runs at MediaEval 2012: Search and Hyperlinking Task
DCU Search Runs at MediaEval 2012: Search and Hyperlinking Task
 
Ghent University-IBBT at MediaEval 2012 Search and Hyperlinking: Semantic Sim...
Ghent University-IBBT at MediaEval 2012 Search and Hyperlinking: Semantic Sim...Ghent University-IBBT at MediaEval 2012 Search and Hyperlinking: Semantic Sim...
Ghent University-IBBT at MediaEval 2012 Search and Hyperlinking: Semantic Sim...
 
The CLEF Initiative From 2010 to 2012 and Onwards
The CLEF Initiative From 2010 to 2012 and OnwardsThe CLEF Initiative From 2010 to 2012 and Onwards
The CLEF Initiative From 2010 to 2012 and Onwards
 
Overview of MediaEval 2012 Visual Privacy Task
Overview of MediaEval 2012 Visual Privacy TaskOverview of MediaEval 2012 Visual Privacy Task
Overview of MediaEval 2012 Visual Privacy Task
 
MediaEval 2012 Visual Privacy Task: Privacy and Intelligibility through Pixel...
MediaEval 2012 Visual Privacy Task: Privacy and Intelligibility through Pixel...MediaEval 2012 Visual Privacy Task: Privacy and Intelligibility through Pixel...
MediaEval 2012 Visual Privacy Task: Privacy and Intelligibility through Pixel...
 
Violent Scenes Detection with Large, Brute-forced Acoustic and Visual Feature...
Violent Scenes Detection with Large, Brute-forced Acoustic and Visual Feature...Violent Scenes Detection with Large, Brute-forced Acoustic and Visual Feature...
Violent Scenes Detection with Large, Brute-forced Acoustic and Visual Feature...
 
mevd2012 esra_
 mevd2012 esra_ mevd2012 esra_
mevd2012 esra_
 
Technicolor/INRIA/Imperial College London at the MediaEval 2012 Violent Scene...
Technicolor/INRIA/Imperial College London at the MediaEval 2012 Violent Scene...Technicolor/INRIA/Imperial College London at the MediaEval 2012 Violent Scene...
Technicolor/INRIA/Imperial College London at the MediaEval 2012 Violent Scene...
 
The MediaEval 2012 Affect Task: Violent Scenes Detectio
The MediaEval 2012 Affect Task: Violent Scenes DetectioThe MediaEval 2012 Affect Task: Violent Scenes Detectio
The MediaEval 2012 Affect Task: Violent Scenes Detectio
 
LIG at MediaEval 2012 affect task: use of a generic method
LIG at MediaEval 2012 affect task: use of a generic methodLIG at MediaEval 2012 affect task: use of a generic method
LIG at MediaEval 2012 affect task: use of a generic method
 
Violence Detection in Video by Large Scale Multi-Scale Local Binary Pattern D...
Violence Detection in Video by Large Scale Multi-Scale Local Binary Pattern D...Violence Detection in Video by Large Scale Multi-Scale Local Binary Pattern D...
Violence Detection in Video by Large Scale Multi-Scale Local Binary Pattern D...
 
UNICAMP-UFMG at MediaEval 2012: Genre Tagging Task
UNICAMP-UFMG at MediaEval 2012: Genre Tagging TaskUNICAMP-UFMG at MediaEval 2012: Genre Tagging Task
UNICAMP-UFMG at MediaEval 2012: Genre Tagging Task
 
ARF @ MediaEval 2012: Multimodal Video Classification
ARF @ MediaEval 2012: Multimodal Video ClassificationARF @ MediaEval 2012: Multimodal Video Classification
ARF @ MediaEval 2012: Multimodal Video Classification
 
TUB @ MediaEval 2012 Tagging Task: Feature Selection Methods for Bag-of-(visu...
TUB @ MediaEval 2012 Tagging Task: Feature Selection Methods for Bag-of-(visu...TUB @ MediaEval 2012 Tagging Task: Feature Selection Methods for Bag-of-(visu...
TUB @ MediaEval 2012 Tagging Task: Feature Selection Methods for Bag-of-(visu...
 

Dernier

Why Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businessWhy Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire business
panagenda
 

Dernier (20)

Artificial Intelligence Chap.5 : Uncertainty
Artificial Intelligence Chap.5 : UncertaintyArtificial Intelligence Chap.5 : Uncertainty
Artificial Intelligence Chap.5 : Uncertainty
 
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
 
DBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor PresentationDBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor Presentation
 
Six Myths about Ontologies: The Basics of Formal Ontology
Six Myths about Ontologies: The Basics of Formal OntologySix Myths about Ontologies: The Basics of Formal Ontology
Six Myths about Ontologies: The Basics of Formal Ontology
 
MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024
 
EMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWER
EMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWEREMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWER
EMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWER
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
 
WSO2's API Vision: Unifying Control, Empowering Developers
WSO2's API Vision: Unifying Control, Empowering DevelopersWSO2's API Vision: Unifying Control, Empowering Developers
WSO2's API Vision: Unifying Control, Empowering Developers
 
AWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of TerraformAWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of Terraform
 
Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...
Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...
Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...
 
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data DiscoveryTrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
 
DEV meet-up UiPath Document Understanding May 7 2024 Amsterdam
DEV meet-up UiPath Document Understanding May 7 2024 AmsterdamDEV meet-up UiPath Document Understanding May 7 2024 Amsterdam
DEV meet-up UiPath Document Understanding May 7 2024 Amsterdam
 
ICT role in 21st century education and its challenges
ICT role in 21st century education and its challengesICT role in 21st century education and its challenges
ICT role in 21st century education and its challenges
 
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin WoodPolkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
 
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot TakeoffStrategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
 
Mcleodganj Call Girls 🥰 8617370543 Service Offer VIP Hot Model
Mcleodganj Call Girls 🥰 8617370543 Service Offer VIP Hot ModelMcleodganj Call Girls 🥰 8617370543 Service Offer VIP Hot Model
Mcleodganj Call Girls 🥰 8617370543 Service Offer VIP Hot Model
 
Strategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a FresherStrategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a Fresher
 
Platformless Horizons for Digital Adaptability
Platformless Horizons for Digital AdaptabilityPlatformless Horizons for Digital Adaptability
Platformless Horizons for Digital Adaptability
 
FWD Group - Insurer Innovation Award 2024
FWD Group - Insurer Innovation Award 2024FWD Group - Insurer Innovation Award 2024
FWD Group - Insurer Innovation Award 2024
 
Why Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businessWhy Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire business
 

Social Event Detection at MediaEval 2012: Challenges, Dataset and Evaluation

  • 1. Social Event Detection (SED): Challenges, Dataset and Evaluation Raphaël Troncy <raphael.troncy@eurecom.fr> Vasileios Mezaris <bmezaris@iti.gr> Symeon Papadopoulos <papadop@iti.gr> Emmanouil Schinas <manosetro@iti.gr> Ioannis Kompatsiaris <ikom@iti.gr>
  • 2. What are Events? Events are observable occurrences grouping People Places Time Experiences documented by Media 04/10/2012 - Social Event Detection (SED) Task - MediaEval 2012, Pisa, Italy -2
  • 3. SED: bigger, longer, harder  In 2011  In 2012  2 challenges  3 challenges  73k photos (2,43 Gb) 1 from SED 2011  No training dataset  167k photos (5,5 Gb) cc licence check  18 teams interested  7 teams submitted runs  Training dataset = SED 2011  Considered easy  21 teams interested  F-measure = 85% … from 15 countries (challenge 1)  5 teams submitted runs  F-measure = 69% (challenge 2)  Much harder ! 04/10/2012 - Social Event Detection (SED) Task - MediaEval 2012, Pisa, Italy -3
  • 4. Three challenges (type and venue) 1. Find all technical events that took place in Germany in the test collection. 2. Find all soccer events taking place in Hamburg (Germany) and Madrid (Spain) in the collection. 3. Find all demonstration and protest events of the Indignados movement occurring in public places in Madrid in the collection  For each event, we provided relevant and non relevant example photos  Task = detect events and provide all illustrating photos 04/10/2012 - Social Event Detection (SED) Task - MediaEval 2012, Pisa, Italy -4
  • 5. Dataset Construction  Collect 167332 Flickr Photos (Jan 2009-Dec 2011)  4,422 unique Flickr users, all in CC licence  All geo-tagged in 5 cities: Barcelona (72255), Cologne (15850), Hannover (2823), Hamburg (16958), Madrid (59043) + 0,22 % (403) from EventMedia  Altered metadata:  geo-tags removed for 80% of the photos (random)  33466 photos still geo-tagged  Provide only metadata … but real media were available to participants if they asked (5,5 Gb) 04/10/2012 - Social Event Detection (SED) Task - MediaEval 2012, Pisa, Italy -5
  • 6. Ground Truth and Evaluation Measures  CrEve annotation tool: http://www.clusttour.gr/creve/  For each of the 6 collections, review all photos and associate them to events (that have to be created)  Search by text, geo-coordinates, date and user  Review annotations made by others  Use EventMedia and machine tags (upcoming:event=xxx)  Evaluation Measures:  Harmonic mean (F-score of Precision and Recall)  Normalized Mutual Information (NMI): jointly consider the goodness of the photos retrieved and their correct assignment to different events 04/10/2012 - Social Event Detection (SED) Task - MediaEval 2012, Pisa, Italy -6
  • 7. What ideally should be found  Challenge 1:  19 events, 2234 photos (avg = 117)  Baseline precision (random): 0,01%  Challenge 2:  79 events, 1684 photos (avg = 21)  Baseline precision (random): 0,01%  Challenge 3:  52 events, 3992 Photos (avg = 77)  Baseline precision (random): 0,02% 04/10/2012 - Social Event Detection (SED) Task - MediaEval 2012, Pisa, Italy -7
  • 8. Who Has Participated ?  21 Teams registered (18 in 2011)  5 Teams cross the lines (7 in 2011, 2 overlaps)  One participant missing at the workshop! 04/10/2012 - Social Event Detection (SED) Task - MediaEval 2012, Pisa, Italy -8
  • 9. Quick Summary of Approaches  2011: all but 1 participants use background knowledge  Last.fm (all), Fbleague (EURECOM), PlayerHistory (QMUL)  DBpedia, Freebase, Geonames, WordNet  2012: all but 2 participants use a generic approach  IR approach: query matching clusters (metadata, temporal, spatial): MISIMIS  Classification approach:  Topic detection with LDA, city classification with TF-IDF, event detection using peaks in timeline using the query topics: AUTH-ISSEL  Learning model using the training data and SVM: CERTH-ITI  Background knowledge: QMUL, DISI  2012: all approaches are NOT fully automatic  Manual selection of some parameters (e.g. topics) 04/10/2012 - Social Event Detection (SED) Task - MediaEval 2012, Pisa, Italy -9
  • 10. Results – Challenge 1 (Technical Events) Precision Recall F-score NMI AUTHISSEL_4 76,29 94,9 84,58 0,7238 CERTH_1 43,11 11,91 18,66 0,1877 DISI_1 86,23 59,13 70,15 0,6011 MISIMS_2 2,52 1,88 2,15 0,0236 QMUL_4 3,86 12,85 5,93 0,0475 90 84.58 80 70.15 70 60 50 40 30 18.66 20 10 5.93 2.15 0 Runs AUTHISSEL_4 CERTHITI_1 DISI_1 MISIMS_2 QMUL_4 04/10/2012 - Social Event Detection (SED) Task - MediaEval 2012, Pisa, Italy - 10
  • 11. Results – Challenge 2 (Soccer Events) Precision Recall F-score NMI AUTHISSEL_4 88,18 93,49 90,76 0,8499 CERTH_1 85,57 66,19 74,64 0,6745 DISI_1 MISIMS_2 34,49 17,25 22,99 0,1993 QMUL_4 79,04 67,12 72,59 0,6493 100 90.76 90 80 74.64 72.59 70 60 50 40 30 22.99 20 10 0 Runs AUTHISSEL_4 CERTHITI_3 DISI_1 MISIMS_2 QMUL_1 04/10/2012 - Social Event Detection (SED) Task - MediaEval 2012, Pisa, Italy - 11
  • 12. Results – Challenge 3 (Indignados Events) Precision Recall F-score NMI AUTHISSEL_4 88,91 90,78 89,83 0,738 CERTH_1 86,24 54,61 66,87 0,4654 DISI_1 86,15 47,17 60,96 0,4465 MISIMS_2 48,3 46,87 47,58 0,3088 QMUL_4 22,88 33,48 27,19 0,1988 100 89.83 90 80 70 66.87 60.96 60 47.58 50 40 27.19 30 20 10 0 Runs AUTHISSEL_4 CERTHITI_3 DISI_1 MISIMS_2 QMUL_4 04/10/2012 - Social Event Detection (SED) Task - MediaEval 2012, Pisa, Italy - 12
  • 13. Conclusion  Lessons learned  Clear winner for all tasks: generic approach but manual selection of the topics  Use of background knowledge still useful if well-used  Looking at next year SED  Shlomo Geva (Queensland University of Technology) + Philipp Cimiano (University of Bielefeld)  Dataset: bigger, more diverse  Media: photos and videos ? (at least 10% videos?)  Metadata: include some social network relationships, participation at events  Evaluation measures: event granularity? Time/CPU? 04/10/2012 - Social Event Detection (SED) Task - MediaEval 2012, Pisa, Italy - 13