Probabilistic recognition of human faces from video
Title | Probabilistic recognition of human faces from video |
Publication Type | Conference Papers |
Year of Publication | 2002 |
Authors | Chellappa R, Kruger V, Zhou S |
Conference Name | Image Processing. 2002. Proceedings. 2002 International Conference on |
Date Published | 2002/// |
Keywords | Bayes, Bayesian, CMU;, distribution;, Face, faces;, gallery;, handling;, human, image, images;, importance, likelihood;, methods;, NIST/USF;, observation, posterior, probabilistic, probability;, processing;, propagation;, recognition;, sampling;, sequential, signal, still, Still-to-video, Uncertainty, video, Video-to-video |
Abstract | Most present face recognition approaches recognize faces based on still images. We present a novel approach to recognize faces in video. In that scenario, the face gallery may consist of still images or may be derived from a videos. For evidence integration we use classical Bayesian propagation over time and compute the posterior distribution using sequential importance sampling. The probabilistic approach allows us to handle uncertainties in a systematic manner. Experimental results using videos collected by NIST/USF and CMU illustrate the effectiveness of this approach in both still-to-video and video-to-video scenarios with appropriate model choices. |
DOI | 10.1109/ICIP.2002.1037954 |