Pain is an alert state of the human body that can be conveyed to the external world through different modalities. A possible communication channel for human pain is represented by facial expressions, whose role in social interactions has been well established. In this work, the link between pain and transfer entropy (TE), passing through facial expressions, is investigated. A new approach to the vision-based measurement (VBM) of pain is presented, which is based on TE among the time-series of facial landmarks positions. The system is composed of three main blocks: A VBM block for the automatic landmarking and the generation of the time-series from the video-sequences; a second block for the evaluation of TE; and finally a classification model based on machine learning algorithms for pain assessment. A public database of video sequences of patients experiencing pain in a controlled scenario was used for the characterization of the system in terms of accuracy and precision. Different uncertainty contributions related to realistic signals interruptions and fluctuations were modeled and propagated to provide a comprehensive evaluation of the proposed measurement system. The obtained results indicate that TE-based approaches can provide great benefits in automatic pain assessment, opening new perspectives for remote management of patients.

Casti, P., Mencattini, A., Filippi, J., D'Orazio, M., Comes, M.c., Giuseppe, D.d., et al. (2021). Metrological Characterization of a Pain Detection System Based on Transfer Entropy of Facial Landmarks. IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 70, 1-8 [10.1109/TIM.2021.3067611].

Metrological Characterization of a Pain Detection System Based on Transfer Entropy of Facial Landmarks

Casti P.;Mencattini A.;Martinelli E.
2021-01-01

Abstract

Pain is an alert state of the human body that can be conveyed to the external world through different modalities. A possible communication channel for human pain is represented by facial expressions, whose role in social interactions has been well established. In this work, the link between pain and transfer entropy (TE), passing through facial expressions, is investigated. A new approach to the vision-based measurement (VBM) of pain is presented, which is based on TE among the time-series of facial landmarks positions. The system is composed of three main blocks: A VBM block for the automatic landmarking and the generation of the time-series from the video-sequences; a second block for the evaluation of TE; and finally a classification model based on machine learning algorithms for pain assessment. A public database of video sequences of patients experiencing pain in a controlled scenario was used for the characterization of the system in terms of accuracy and precision. Different uncertainty contributions related to realistic signals interruptions and fluctuations were modeled and propagated to provide a comprehensive evaluation of the proposed measurement system. The obtained results indicate that TE-based approaches can provide great benefits in automatic pain assessment, opening new perspectives for remote management of patients.
2021
Pubblicato
Rilevanza internazionale
Articolo
Esperti anonimi
Settore ING-INF/07 - MISURE ELETTRICHE ED ELETTRONICHE
English
Facial landmarks
machine learning
pain measurement
transfer entropy (TE)
uncertainty modeling and propagation
vision-based measurement (VBM) system
Casti, P., Mencattini, A., Filippi, J., D'Orazio, M., Comes, M.c., Giuseppe, D.d., et al. (2021). Metrological Characterization of a Pain Detection System Based on Transfer Entropy of Facial Landmarks. IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 70, 1-8 [10.1109/TIM.2021.3067611].
Casti, P; Mencattini, A; Filippi, J; D'Orazio, M; Comes, Mc; Giuseppe, Dd; Martinelli, E
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2108/289513
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