Automatic discomfort detection for infants is important in health care, since infants have no ability to express their discomfort. In this paper, we propose an automatic system for detecting and monitoring discomfort of infants based on video analysis. The system is based on supervised learning and classifies previously unseen infants from the testing set in a fully automated way. Our system consists of face detection and discomfort detection. For each frame, we first detect a face area by using a combination of a skin-color detector and a ViolaJones face detector, and then fit a face shape to the detected face area by using a Constrained Local Model (CLM). After that, we extract expression features by using Elongated Local Binary Pattern (...