Pain monitoring is essential to the quality of care for patients undergoing a medical procedure with sedation. An automated mechanism for detecting pain could improve sedation dose titration. Previous studies on facial pain detection have shown the viability of computer vision methods in detecting pain in unoccluded faces. However, the faces of patients undergoing procedures are often partially occluded by medical devices and face masks. A previous preliminary study on pain detection on artificially occluded faces has shown a feasible approach to detect pain from a narrow band around the eyes. This study has collected video data from masked faces of 14 patients undergoing procedures in an interventional radiology department and has trained ...
Objectives The Automatic Pain Assessment (APA) relies on the exploitation of objective methods to ev...
BACKGROUND: The ability to accurately recognize facial expressions of pain is known to affect clinic...
Automatic pain detection is an important challenge in health computing. In this paper we report on o...
Hassan T, Seuss D, Wollenberg J, et al. Automatic Detection of Pain from Facial Expressions: A Surve...
Pain is typically assessed by patient self-report. Self-reported pain, however, is difficult to inte...
A new method to objectively measure pain using computer vision and machine learning technologies is ...
Accurately determining pain levels is difficult, even for trained professionals. Facial activity pro...
AbstractPain is typically assessed by patient self-report. Self-reported pain, however, is difficult...
Many people who are suffering from a chronic pain face pe- riods of acute pain and resulting problem...
Recognition of pain in patients who are incapable of expressing themselves allows for several possib...
In a clinical setting, pain is reported either through patient self-report or via an observer. Such ...
Detecting pain in infants is of vital importance in healthcare. The currently applied pain scaling m...
Pain assessment is used to improve patients’ treatment outcomes. Human observers may be influenced b...
Pain is generally measured by patient self-report, normally via verbal communication. However, if th...
Chronic pain affects more than 100 million Americans and more than 1.5 billion people worldwide. Pai...
Objectives The Automatic Pain Assessment (APA) relies on the exploitation of objective methods to ev...
BACKGROUND: The ability to accurately recognize facial expressions of pain is known to affect clinic...
Automatic pain detection is an important challenge in health computing. In this paper we report on o...
Hassan T, Seuss D, Wollenberg J, et al. Automatic Detection of Pain from Facial Expressions: A Surve...
Pain is typically assessed by patient self-report. Self-reported pain, however, is difficult to inte...
A new method to objectively measure pain using computer vision and machine learning technologies is ...
Accurately determining pain levels is difficult, even for trained professionals. Facial activity pro...
AbstractPain is typically assessed by patient self-report. Self-reported pain, however, is difficult...
Many people who are suffering from a chronic pain face pe- riods of acute pain and resulting problem...
Recognition of pain in patients who are incapable of expressing themselves allows for several possib...
In a clinical setting, pain is reported either through patient self-report or via an observer. Such ...
Detecting pain in infants is of vital importance in healthcare. The currently applied pain scaling m...
Pain assessment is used to improve patients’ treatment outcomes. Human observers may be influenced b...
Pain is generally measured by patient self-report, normally via verbal communication. However, if th...
Chronic pain affects more than 100 million Americans and more than 1.5 billion people worldwide. Pai...
Objectives The Automatic Pain Assessment (APA) relies on the exploitation of objective methods to ev...
BACKGROUND: The ability to accurately recognize facial expressions of pain is known to affect clinic...
Automatic pain detection is an important challenge in health computing. In this paper we report on o...