loading page

The EmoPain@Home Dataset: Capturing Pain Level and Activity Recognition for People with Chronic Pain in Their Homes
  • +6
  • Temitayo Olugbade ,
  • Raffaele Buono ,
  • Kyrill Potapov ,
  • Alex Bujorianu ,
  • Amanda Williams ,
  • Santiago de Ossorno Garcia ,
  • Nicolas Gold ,
  • Catherine Holloway ,
  • Nadia Berthouze
Temitayo Olugbade
University of Sussex

Corresponding Author:[email protected]

Author Profile
Raffaele Buono
Author Profile
Kyrill Potapov
Author Profile
Alex Bujorianu
Author Profile
Amanda Williams
Author Profile
Santiago de Ossorno Garcia
Author Profile
Nicolas Gold
Author Profile
Catherine Holloway
Author Profile
Nadia Berthouze
Author Profile

Abstract

Chronic pain is a prevalent condition where fear of movement and pain interferes with everyday functioning. Yet, there is no open body movement dataset for people with chronic pain in everyday settings. Our EmoPain@Home dataset addresses this with capture from people with and without chronic pain in their homes, while they performed their routine activities. The data includes labels for pain, worry, and movement confidence continuously recorded for activity instances for the people with chronic pain. We explored two-level pain detection based on this dataset and obtained 0.62 mean F1 score. However, extension of the dataset led to deterioration in performance confirming high variability in pain expressions for real world settings. We investigated activity recognition for this setting as a first step in exploring the use of the activity label as contextual information for improving pain level classification performance. We obtained mean F1 score of 0.43 for 9 activity types, highlighting its feasibility. Further exploration, however, showed that data from healthy people cannot be easily leveraged for improving performance because worry and low confidence alter activity strategies for people with chronic pain. Our dataset and findings lay critical groundwork for automatic assessment of pain experience and behaviour in the wild.