certh @ mediaeval 2014 social event detection task

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Informatics and Telematics Institute, CERTH Marina Riga, Georgios Petkos, Symeon Papadopoulos, Emmanouil Schinas, Yiannis Kompatsiaris CERTH @ 2014 MediaEval Social Event Detection Task Challenge 1 Goal Cluster all images in the test set, so that each cluster corresponds to a social event Approach Same event model (SEM) predicts if a pair of images belong to the same cluster (based on set of per-modality similarities) Organize images in graph according to the predictions of the SEM Select candidate neighbours using appropriate indices for scalability Cluster the graph using a community detection algorithm to obtain the clusters Key tweak False positive predictions of the SEM are much more important for the task than false negatives Tune the SEM so that we obtain a higher true positives rate at the cost of a somewhat lower true negatives rate Results Without tweak F1 is 0.4514 and NMI is 0.7594. With tweak F1 is 0.9161 and NMI is 0.9818 Challenge 2 Goal Retrieve all events matching a set of criteria (type, location, time, involved entities) Approach Crawl Flickr to obtain data related to the criteria and build language models for each of them Also collect a general dataset on which we build a reference language model An event i is classified using the specific language models and the general language model according to: pspecific(i) / pgeneral (i) > θ Alternative approach: pspecific, general(i) / pgeneral (i) > θ For location in particular, we use a grid-based location estimation approach [3] Results Alternative classification approach with tuning of threshold using the training set gave the best results: F1 was 0.4604 (with an average Recall of 0.3915 and an average Precision of 0.7080) Average F1 when considering only queries that contain location criteria was 0.6331 [ϭ] G. Petkos, “. Papadopoulos, Y. Koŵpatsiaris. “ocial eveŶt detectioŶ usiŶg ŵultiŵodal clusteriŶg aŶd iŶtegratiŶg supervisory sigŶals. ICMR ϮϬϭϮ. [Ϯ] G. Petkos, “. Papadopoulos, E. “chiŶas, Y. Koŵpatsiaris. Graph-based multimodal clustering for social event detection in large collectioŶs of iŵages. MMM 2014. [ϯ] A. Popescu. CEA lists’ participatioŶ at MediaEval ϮϬϭϯ placiŶg task. MediaEval ϮϬϭϯ.

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Page 1: CERTH @ MediaEval 2014 Social Event Detection Task

Informatics and Telematics Institute, CERTH

Marina Riga, Georgios Petkos, Symeon Papadopoulos, Emmanouil Schinas, Yiannis Kompatsiaris

CERTH @ 2014 MediaEval Social Event Detection Task

Challenge 1 Goal

• Cluster all images in the test set, so that each cluster corresponds to a social event

Approach

• Same event model (SEM) predicts if a pair of images belong to the same cluster

(based on set of per-modality similarities)

• Organize images in graph according to the predictions of the SEM

• Select candidate neighbours using appropriate indices for scalability

• Cluster the graph using a community detection algorithm to obtain the clusters

Key tweak

• False positive predictions of the SEM are much more important for the task than false negatives

• Tune the SEM so that we obtain a higher true positives rate at the cost of a somewhat lower

true negatives rate

Results

• Without tweak F1 is 0.4514 and NMI is 0.7594. With tweak F1 is 0.9161 and NMI is 0.9818

Challenge 2 Goal

• Retrieve all events matching a set of criteria (type, location, time, involved entities)

Approach

• Crawl Flickr to obtain data related to the criteria and build language models for each of them

• Also collect a general dataset on which we build a reference language model

• An event i is classified using the specific language models and the general language model

according to: pspecific(i) / pgeneral (i) > θ

• Alternative approach: pspecific, general(i) / pgeneral (i) > θ

• For location in particular, we use a grid-based location estimation approach [3]

Results

• Alternative classification approach with tuning of threshold using the training set gave the best

results: F1 was 0.4604 (with an average Recall of 0.3915 and an average Precision of 0.7080)

• Average F1 when considering only queries that contain location criteria was 0.6331

[ ] G. Petkos, “. Papadopoulos, Y. Ko patsiaris. “ocial eve t detectio usi g ulti odal clusteri g a d i tegrati g supervisory sig als . ICMR . [ ] G. Petkos, “. Papadopoulos, E. “chi as, Y. Ko patsiaris. Graph-based multimodal clustering for social event detection in large collectio s of i ages . MMM 2014.

[ ] A. Popescu. CEA lists’ participatio at MediaEval placi g task. MediaEval .