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era and laser scanners will be developed. Improvement and face eling, Proceedings of IEEE International Conference on Com-
identification of pedestrian will be able to be achieved. puter Vision and Pattern Recognition.
Simon Mochon and Thomas A.McMahon, 1980, Ballistic Walk-
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