On the Effectiveness of Heterogeneous Ensemble Methods for Re-identification

In this contribution, we introduce a novel ensemble method for the re-identification of industrial entities, using images of chipwood pallets and galvanized metal plates as dataset examples. Our algorithms replace commonly used, complex siamese neural networks with an ensemble of simplified, rudimentary models, providing wider applicability, especially in hardware-restricted scenarios. Each ensemble sub-model uses different types of extracted features of the given data as its input, allowing for the creation of effective ensembles in a fraction of the training duration needed for more complex state-of-the-art models. We reach state-of-the-art performance at our task, with a Rank-1 accuracy of over 77% and a Rank-10 accuracy of over 99%, and introduce five distinct feature extraction approaches, and study their combination using different ensemble methods.

  • Veröffentlicht in:
    International Conference on Machine Learning and Applications (ICMLA)
  • Typ:
    Inproceedings
  • Autoren:
    Klüttermann, Simon; Rutinowski, Jérôme; Polachowski, Frederik; Nguyen, Anh; Grimme, Britta; Roidl, Moritz; Müller, Emmanuel
  • Jahr:
    2024

Informationen zur Zitierung

Klüttermann, Simon; Rutinowski, Jérôme; Polachowski, Frederik; Nguyen, Anh; Grimme, Britta; Roidl, Moritz; Müller, Emmanuel: On the Effectiveness of Heterogeneous Ensemble Methods for Re-identification, International Conference on Machine Learning and Applications (ICMLA), 2024, Kluettermann.etal.2024b,

Assoziierte Lamarr-ForscherInnen

lamarr institute person Mueller Emmanuel - Lamarr Institute for Machine Learning (ML) and Artificial Intelligence (AI)

Prof. Dr. Emmanuel Müller

Principal Investigator Vertrauenswürdige KI zum Profil