Quantitative comparison of motion history image variants for video-based depression assessment

نویسندگان

  • Anastasia Pampouchidou
  • Matthew Pediaditis
  • Anna Maridaki
  • Muhammad Awais
  • Calliope-Marina Vazakopoulou
  • Stelios Sfakianakis
  • Manolis Tsiknakis
  • Panagiotis G. Simos
  • Kostas Marias
  • Fan Yang
  • Fabrice Mériaudeau
چکیده

Depression is the most prevalent mood disorder and a leading cause of disability worldwide. Automated video-based analyses may afford objective measures to support clinical judgments. In the present paper, categorical depression assessment is addressed by proposing a novel variant of theMotion History Image (MHI) which considers Gabor-inhibited filtered data instead of the original image. Classification results obtained with this method on the AVEC’14 dataset are compared to those derived using (a) an earlier MHI variant, the Landmark Motion History Image (LMHI), and (b) the original MHI. The different motion representations were tested in several combinations of appearance-based descriptors, as well as with the use of convolutional neural networks. The F1 score of 87.4% achieved in the proposed work outperformed previously reported approaches.

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عنوان ژورنال:
  • EURASIP J. Image and Video Processing

دوره 2017  شماره 

صفحات  -

تاریخ انتشار 2017