Pedestrian detection via periodic motion analysis

TitlePedestrian detection via periodic motion analysis
Publication TypeJournal Articles
Year of Publication2007
AuthorsRan Y, Weiss I, Zheng Q, Davis LS
JournalInternational Journal of Computer Vision
Volume71
Issue2
Pagination143 - 160
Date Published2007///
Abstract

We describe algorithms for detecting pedestrians in videos acquired by infrared (and color) sensors. Two approaches are proposed based on gait. The first employs computationally efficient periodicity measurements. Unlike other methods, it estimates a periodic motion frequency using two cascading hypothesis testing steps to filter out non-cyclic pixels so that it works well for both radial and lateral walking directions. The extraction of the period is efficient and robust with respect to sensor noise and cluttered background. In order to integrate shape and motion, we convert the cyclic pattern into a binary sequence by Maximal Principal Gait Angle (MPGA) fitting in the second method. It does not require alignment and continuously estimates the period using a Phase-locked Loop. Both methods are evaluated by experimental results that measure performance as a function of size, movement direction, frame rate and sequence length.