Abstract Automatic pain intensity assessment has a high value in disease diagnosis applications. Inspired by the fact that many diseases and brain disorders can interrupt normal facial expression formation, we aim to develop a computational model for automatic pain intensity assessment from spontaneous and micro facial variations. For this purpose, we propose a 3D deep architecture for dynamic facial video representation. The proposed model is built by stacking several convolutional modules where each module encompasses a 3D convolution kernel with a fixed temporal depth, several parallel 3D convolutional kernels with different temporal depths, and an average pooling layer. Deploying variable temporal depths in the proposed architecture al...
Automated detection of pain intensity from facial expressions, especially from face images that show...
International audienceWe propose an automatic method for pain intensity measurement from video. For ...
International audienceIn this paper we are proposing a novel computer vision system that can recogni...
Abstract Devising computational models for detecting abnormalities reflective of diseases from faci...
Abstract Automatic pain assessment is crucial in clinical diagnosis. Experiencing pain causes defor...
Abstract Pain is a transient physical reaction that exhibits on human faces. Automatic pain intensi...
Automatic continuous time, continuous value assessment of a patient's pain from face video is highly...
Abstract Recently, automatic pain assessment technology, in particular automatically detecting pain...
Models designed to detect abnormalities that reflect disease from facial structures are an emerging ...
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...
Automatically detecting and locating pain events in video is an important task in medical assessment...
Abstract We present a novel approach based on Residual Generative Adversarial Network (R-GAN) to di...
Many people who are suffering from a chronic pain face pe- riods of acute pain and resulting problem...
A new method to objectively measure pain using computer vision and machine learning technologies is ...
Automated detection of pain intensity from facial expressions, especially from face images that show...
International audienceWe propose an automatic method for pain intensity measurement from video. For ...
International audienceIn this paper we are proposing a novel computer vision system that can recogni...
Abstract Devising computational models for detecting abnormalities reflective of diseases from faci...
Abstract Automatic pain assessment is crucial in clinical diagnosis. Experiencing pain causes defor...
Abstract Pain is a transient physical reaction that exhibits on human faces. Automatic pain intensi...
Automatic continuous time, continuous value assessment of a patient's pain from face video is highly...
Abstract Recently, automatic pain assessment technology, in particular automatically detecting pain...
Models designed to detect abnormalities that reflect disease from facial structures are an emerging ...
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...
Automatically detecting and locating pain events in video is an important task in medical assessment...
Abstract We present a novel approach based on Residual Generative Adversarial Network (R-GAN) to di...
Many people who are suffering from a chronic pain face pe- riods of acute pain and resulting problem...
A new method to objectively measure pain using computer vision and machine learning technologies is ...
Automated detection of pain intensity from facial expressions, especially from face images that show...
International audienceWe propose an automatic method for pain intensity measurement from video. For ...
International audienceIn this paper we are proposing a novel computer vision system that can recogni...