A Pattern Classification Approach to Dynamical Object Detection

ICCV(1999)

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摘要
Current systems for object detection in video sequences rely on explicit dynamical models like Kalman filters or hidden Markov models. There is significant overhead needed in the development of such systems as well as the a priori assumption that the object dynamics can be described with such a dynamical model. This paper describes a new pattern classification technique for object detection in video sequences that uses a rich, over complete dictionary of wavelet features to describe an object class. Unlike previous work where a small subset of features was selected from the dictionary, this system does no feature selection and learns the model in the full 1,326 dimensional feature space. Comparisons using different sized sets of several types of features are given. We extend this representation into the time domain without assuming any explicit model of dynamics. This data driven approach produces a model of the physical structure and short-time dynamical characteristics of people from a training set of examples; no assumptions are made about the motion of people, just that short sequences characterize their dynamics sufficiently for the purposes of detection. One of the main benefits of this approach is that transient false positives are reduced. This technique compares favorably with the static detection approach and could be applied to other object classes. We also present a real-time version of one of our static people detection systems.
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关键词
object dynamic,hidden markov model,explicit model,dynamical model,static detection approach,detection system,object detection,pattern classification approach,explicit dynamical model,object class,dynamical object detection,video sequence,hidden markov models,read only memory,kalman filter,time domain,face recognition,kalman filters,markov model,face detection,real time,feature space,wavelet transforms,false positive,feature selection,layout
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