Introduction to Gait-based Individual Recognition at a Distance -- Part 2. Gait-based Individual Recognition at a Distance -- Gait Representations in Video -- Model-Free Gait-Based Human Recognition in Video -- Discrimination Analysis for Model-Based Gait Recognition -- Model-Based Human Recognition, 2D and 3D Gait -- Fusion of Color/Infrared Video for Human Detection -- Part 3. Face Recognition at a Distance in Video -- Super-Resolution of Facial Images in Video at a Distance -- Evaluating Quality of Super-Resolved Face Images -- Part 4. Integrated Face and Gait for Human Recognition at a Distance in Video -- Integrating Face Profile and Gait at a Distance -- Match Score Level Fusion of Face and Gait at a Distance -- Feature Level Fusion of Face and Gait at a Distance -- Part 5. Conclusions for Integrated Gait and Face for Human Recognition at a Distance in Video.
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Most biometric systems employed for human recognition require physical contact with, or close proximity to, a cooperative subject. Far more challenging is the ability to reliably recognize individuals at a distance, when viewed from an arbitrary angle under real-world environmental conditions. Gait and face data are the two biometrics that can be most easily captured from a distance using a video camera. This comprehensive and logically organized text/reference addresses the fundamental problems associated with gait and face-based human recognition, from color and infrared video data that are acquired from a distance. It examines both model-free and model-based approaches to gait-based human recognition, including newly developed techniques where both the model and the data (obtained from multiple cameras) are in 3D. In addition, the work considers new video-based techniques for face profile recognition, and for the super-resolution of facial imagery obtained at different angles. Finally, the book investigates integrated systems that detect and fuse both gait and face biometrics from video data. Topics and features:Discusses a framework for human gait analysis based on Gait Energy Image, a spatio-temporal gait representationEvaluates the discriminating power of model-based gait features using Bayesian statistical analysisExamines methods for human recognition using 3D gait biometrics, and for moving-human detection using both color and thermal image sequencesDescribes approaches for the integration of face profile and gait biometrics, and for super-resolution of frontal and side-view face imagesIntroduces an objective non-reference quality evaluation algorithm for super-resolved imagesPresents performance comparisons between different biometrics and different fusion methods for integrating gait and super-resolved face from videoThis unique and authoritative text is an invaluable resource for researchers and graduate students of computer vision, pattern recognition and biometrics. The book will also be of great interest to professional engineers of biometric systems. Dr. Bir Bhanu is Distinguished Professor of Electrical Engineering, and Director of the Center for Research in Intelligent Systems, at the University of California, Riverside, USA. Dr. Ju Han is a Specialist at the Energy Biosciences Institute, a joint appointment with the Lawrence Berkeley National Laboratory and the University of California, Berkeley, USA.