Title :
A Pedestrian Multiple Hypothesis Tracker Fusing Head and Body Detections
Author :
Sherrah, J. ; Ristic, Branko ; Kamenetsky, Dmitri
Author_Institution :
Nat. Security & Intell., Surveillance & Reconnaissance Div., Defence Sci. & Technol. Organ., Edinburgh, SA, Australia
Abstract :
We present a multiple hypothesis pedestrian tracker for surveillance video that combines head and whole-body detections. The multiple hypothesis tracker deals with ambiguity in track-to-observation matching by maintaining the most likely valid data association hypotheses. Observations are head and body detections from HOG sliding window detectors. The head detector has a high probability of detection and high false alarm rate, whereas for the body detector these probabilities are lower. The two detection types are fused in a probabilistic framework to achieve robust pedestrian tracking in a crowded environment with clutter and partial occlusions. Experiments show that the use of head and body detections along with multiple hypothesis tracking can improve online track-by-detect methods.
Keywords :
image fusion; image matching; object detection; object tracking; pedestrians; probability; traffic engineering computing; HOG sliding window detectors; body detection fusion; data association hypotheses; head detection fusion; high false alarm rate; multiple hypothesis tracker; multiple hypothesis tracking; online track-by-detect methods; partial occlusions; pedestrian multiple hypothesis tracker; probability of detection; robust pedestrian tracking; track-to-observation matching; Clutter; Detectors; Head; Magnetic heads; Target tracking; Training;
Conference_Titel :
Digital Image Computing: Techniques and Applications (DICTA), 2013 International Conference on
Conference_Location :
Hobart, TAS
DOI :
10.1109/DICTA.2013.6691474