Abstract Pain is a transient physical reaction that exhibits on human faces. Automatic pain intensity estimation is of great importance in clinical and health-care applications. Pain expression is identified by a set of deformations of facial features. Hence, features are essential for pain estimation. In this paper, we propose a novel method that encodes low-level descriptors and powerful high-level deep features by a weighting process, to form an efficient representation of facial images. To obtain a powerful and compact low-level representation, we explore the way of using second-order pooling over the local descriptors. Instead of direct concatenation, we develop an efficient fusion approach that unites the low-level local descriptors ...
The correct assessment is essential to ensure the proper treatment for the patient and pain is relie...
Traditional pain assessment approaches ranging from self-reporting methods, to observational scales,...
Automatic pain intensity estimation from facial images is challenging mainly because of high variabi...
Automatic pain recognition is an evolving research area with promising applications in health care. ...
Abstract Self-report is the most conventional means of pain intensity assessment in clinical enviro...
Automatic continuous time, continuous value assessment of a patient's pain from face video is highly...
Abstract Automatic pain intensity assessment has a high value in disease diagnosis applications. In...
Abstract Automatic pain assessment is crucial in clinical diagnosis. Experiencing pain causes defor...
Recently, automatic pain assessment technology, in particular automatically detecting pain from faci...
Abstract. Automatic1 monitoring for the assessment of pain can sig-nificantly improve the psychologi...
Human inner feelings and psychological states like pain are subjective states that cannot be directl...
Abstract Devising computational models for detecting abnormalities reflective of diseases from faci...
Automated detection of pain intensity from facial expressions, especially from face images that show...
Many people who are suffering from a chronic pain face pe- riods of acute pain and resulting problem...
Models designed to detect abnormalities that reflect disease from facial structures are an emerging ...
The correct assessment is essential to ensure the proper treatment for the patient and pain is relie...
Traditional pain assessment approaches ranging from self-reporting methods, to observational scales,...
Automatic pain intensity estimation from facial images is challenging mainly because of high variabi...
Automatic pain recognition is an evolving research area with promising applications in health care. ...
Abstract Self-report is the most conventional means of pain intensity assessment in clinical enviro...
Automatic continuous time, continuous value assessment of a patient's pain from face video is highly...
Abstract Automatic pain intensity assessment has a high value in disease diagnosis applications. In...
Abstract Automatic pain assessment is crucial in clinical diagnosis. Experiencing pain causes defor...
Recently, automatic pain assessment technology, in particular automatically detecting pain from faci...
Abstract. Automatic1 monitoring for the assessment of pain can sig-nificantly improve the psychologi...
Human inner feelings and psychological states like pain are subjective states that cannot be directl...
Abstract Devising computational models for detecting abnormalities reflective of diseases from faci...
Automated detection of pain intensity from facial expressions, especially from face images that show...
Many people who are suffering from a chronic pain face pe- riods of acute pain and resulting problem...
Models designed to detect abnormalities that reflect disease from facial structures are an emerging ...
The correct assessment is essential to ensure the proper treatment for the patient and pain is relie...
Traditional pain assessment approaches ranging from self-reporting methods, to observational scales,...
Automatic pain intensity estimation from facial images is challenging mainly because of high variabi...