Models designed to detect abnormalities that reflect disease from facial structures are an emerging area of research for automated facial analysis, which has important potential value in smart healthcare applications. However, most of the proposed models directly analyze the whole face image containing the background information, and rarely consider the effects of the background and different face regions on the analysis results. Therefore, in view of these effects, we propose an end-to-end attention network with spatial transformation to estimate different pain intensities. In the proposed method, the face image is first provided as input to a spatial transformation network for solving the problem of background interference; then, the atte...
Abstract Pain is a transient physical reaction that exhibits on human faces. Automatic pain intensi...
Recently, automatic pain assessment technology, in particular automatically detecting pain from faci...
A new method to objectively measure pain using computer vision and machine learning technologies is ...
Abstract Devising computational models for detecting abnormalities reflective of diseases from faci...
Automatic pain recognition from facial expressions is a challenging problem that has attracted a sig...
Automated detection of pain intensity from facial expressions, especially from face images that show...
International audienceAutomatic pain recognition from facial expressions is a challenging problem th...
Abstract—Pain is a primary symptom of diseases and an indicator of a patients’ health status. Effect...
Abstract Automatic pain assessment is crucial in clinical diagnosis. Experiencing pain causes defor...
Many people who are suffering from a chronic pain face pe- riods of acute pain and resulting problem...
This paper reports on research to design an ensemble deep learning framework that integrates fine-tu...
Abstract Automatic pain intensity assessment has a high value in disease diagnosis applications. In...
Pain assessment is used to improve patients’ treatment outcomes. Human observers may be influenced b...
Automatic pain recognition is an evolving research area with promising applications in health care. ...
Abstract We present a novel approach based on Residual Generative Adversarial Network (R-GAN) to di...
Abstract Pain is a transient physical reaction that exhibits on human faces. Automatic pain intensi...
Recently, automatic pain assessment technology, in particular automatically detecting pain from faci...
A new method to objectively measure pain using computer vision and machine learning technologies is ...
Abstract Devising computational models for detecting abnormalities reflective of diseases from faci...
Automatic pain recognition from facial expressions is a challenging problem that has attracted a sig...
Automated detection of pain intensity from facial expressions, especially from face images that show...
International audienceAutomatic pain recognition from facial expressions is a challenging problem th...
Abstract—Pain is a primary symptom of diseases and an indicator of a patients’ health status. Effect...
Abstract Automatic pain assessment is crucial in clinical diagnosis. Experiencing pain causes defor...
Many people who are suffering from a chronic pain face pe- riods of acute pain and resulting problem...
This paper reports on research to design an ensemble deep learning framework that integrates fine-tu...
Abstract Automatic pain intensity assessment has a high value in disease diagnosis applications. In...
Pain assessment is used to improve patients’ treatment outcomes. Human observers may be influenced b...
Automatic pain recognition is an evolving research area with promising applications in health care. ...
Abstract We present a novel approach based on Residual Generative Adversarial Network (R-GAN) to di...
Abstract Pain is a transient physical reaction that exhibits on human faces. Automatic pain intensi...
Recently, automatic pain assessment technology, in particular automatically detecting pain from faci...
A new method to objectively measure pain using computer vision and machine learning technologies is ...