We present a new approach to automatically recognize the pain expression from video sequences, which categorize pain as 4 levels: “no pain,” “slight pain,” “moderate pain,” and “ severe pain.” First of all, facial velocity information, which is used to characterize pain, is determined using optical flow technique. Then visual words based on facial velocity are used to represent pain expression using bag of words. Final pLSA model is used for pain expression recognition, in order to improve the recognition accuracy, the class label information was used for the learning of the pLSA model. Experiments were performed on a pain expression dataset built by ourselves to test and evaluate the proposed method, the experiment results show that the av...
The correct assessment is essential to ensure the proper treatment for the patient and pain is relie...
Abstract Automatic pain assessment is crucial in clinical diagnosis. Experiencing pain causes defor...
Abstract: It is likely that research has only begun to scratch the surface of what might be learned ...
permits unrestricted use, distribution, and reproduction in any medium, provided the original work i...
Recognition of pain in patients who are incapable of expressing themselves allows for several possib...
Automatic pain recognition from videos is a vital clinical application and, owing to its spontaneous...
International audienceIn this paper we are proposing a novel computer vision system that can recogni...
In this paper, a novel approach is proposed for recognizing pain expression. First of all, supervise...
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...
Objectives The Automatic Pain Assessment (APA) relies on the exploitation of objective methods to ev...
Pain is typically assessed by patient self-report. Self-reported pain, however, is difficult to inte...
Automatically detecting and locating pain events in video is an important task in medical assessment...
Automatically recognizing pain from video is a very useful application as it has the potential to al...
In a clinical setting, pain is reported either through patient self-report or via an observer. Such ...
The correct assessment is essential to ensure the proper treatment for the patient and pain is relie...
Abstract Automatic pain assessment is crucial in clinical diagnosis. Experiencing pain causes defor...
Abstract: It is likely that research has only begun to scratch the surface of what might be learned ...
permits unrestricted use, distribution, and reproduction in any medium, provided the original work i...
Recognition of pain in patients who are incapable of expressing themselves allows for several possib...
Automatic pain recognition from videos is a vital clinical application and, owing to its spontaneous...
International audienceIn this paper we are proposing a novel computer vision system that can recogni...
In this paper, a novel approach is proposed for recognizing pain expression. First of all, supervise...
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...
Objectives The Automatic Pain Assessment (APA) relies on the exploitation of objective methods to ev...
Pain is typically assessed by patient self-report. Self-reported pain, however, is difficult to inte...
Automatically detecting and locating pain events in video is an important task in medical assessment...
Automatically recognizing pain from video is a very useful application as it has the potential to al...
In a clinical setting, pain is reported either through patient self-report or via an observer. Such ...
The correct assessment is essential to ensure the proper treatment for the patient and pain is relie...
Abstract Automatic pain assessment is crucial in clinical diagnosis. Experiencing pain causes defor...
Abstract: It is likely that research has only begun to scratch the surface of what might be learned ...