Publications by authors named "Imad Eddine Ibrahim Bekkouch"

Morphological abnormalities of the femoroacetabular (hip) joint are among the most common human musculoskeletal disorders and often develop asymptomatically at early easily treatable stages. In this paper, we propose an automated framework for landmark-based detection and quantification of hip abnormalities from magnetic resonance (MR) images. The framework relies on a novel idea of multi-landmark environment analysis with reinforcement learning.

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Article Synopsis
  • Anomaly detection faces challenges due to the rarity of anomalies, which leads to unbalanced data issues; synthetic anomalies are proposed as a potential solution for this problem.
  • The article introduces a two-level hierarchical latent space representation using autoencoders to create robust feature representations for generating synthetic anomalies without prior examples.
  • The proposed method successfully generates pseudo outlier samples, enabling the training of effective binary classifiers for real anomaly detection, and shows strong performance across multiple benchmarking tests.
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