Results

Report

To publish about the dataset, the contest or the results, please cite us:

@inproceedings{Artaud2018,
  author    = {Artaud, Chloé and
               Sidère, Nicolas and
               Doucet, Antoine and
               Ogier, Jean-Marc and
               Poulain d'Andecy, Vincent},
  title     = {Find it! Fraud Detection Contest Report},
  booktitle = {24th International Conference on Pattern Recognition, {ICPR} 2018,
               Beijing, China, August 20-24, 2018},
  year      = {2018},
}

Few statistics:

  • 36 registrations
  • 11 countries
  • Different affiliations :
    • 66% Academic
    • 19% Industry
    • 14% Other : Police…
  • 5 participants for 1st task (classification) and only 2 for the 2nd (localization)

Human baseline

We asked 5 humans to check each document of the test dataset of the first task. They don’t well detect the forged document!

Task 1 Results

The Verdoliva’s team and the Zampoglou’s team sent us results obtained with the first task training dataset and too with both the task 1 and task 2 training dataset. The non-balanced results of Zampoglou’s team used the same settings as the 2 tasks dataset.

Precision Recall F-Measure
Fabre 0.364 0.933 0.523
Cruz 0.857 0.4 0.545
Clausner 0.882 0.5 0.638
Zampoglou T1 non-balanced 0.964 0.9 0.931
Verdoliva T1 0.906 0.967 0.935
Zampoglou T1 balanced 1.0 0.9 0.947
Verdoliva T1+T2 0.935 0.967 0.951
Zampoglou T1+T2 1.0 1.0 1.0
Human5 0.45 0.33 0.38
Human4 0.55 0.37 0.44
Human3 0.69 0.37 0.48
Human2 0.64 0.47 0.54
Human1 0.75 0.5 0.6

Task 2 results

In order to evaluate the second task we computed:

  • the average of the Jaccard Indexes of all documents
  • the average of the non-zero Jaccard Indexes (where one fraud was at least a little well located)
Average Standard deviation
Clausner 0,091 0,222
Verdoliva 0,426 0,261
Clausner without 0 0,287 0,315
Verdoliva without 0 0,461 0,24

ICPR contest session presentation

You can see more details on the participants approaches and the results in the presentation of the Contest Report here: ICPRFindit.