TY - JOUR
T1 - Tracking the soccer ball using multiple fixed cameras
AU - Ren, Jinchang
AU - Orwell, James
AU - Jones, Graeme A.
AU - Xu, Ming
N1 - Funding Information:
This work formed part of the INMOVE project, supported by the European Commission IST 2001-37422.
PY - 2009/5
Y1 - 2009/5
N2 - This paper demonstrates innovative techniques for estimating the trajectory of a soccer ball from multiple fixed cameras. Since the ball is nearly always moving and frequently occluded, its size and shape appearance varies over time and between cameras. Knowledge about the soccer domain is utilized and expressed in terms of field, object and motion models to distinguish the ball from other movements in the tracking and matching processes. Using ground plane velocity, longevity, normalized size and color features, each of the tracks obtained from a Kalman filter is assigned with a likelihood measure that represents the ball. This measure is further refined by reasoning through occlusions and back-tracking in the track history. This can be demonstrated to improve the accuracy and continuity of the results. Finally, a simple 3D trajectory model is presented, and the estimated 3D ball positions are fed back to constrain the 2D processing for more efficient and robust detection and tracking. Experimental results with quantitative evaluations from several long sequences are reported.
AB - This paper demonstrates innovative techniques for estimating the trajectory of a soccer ball from multiple fixed cameras. Since the ball is nearly always moving and frequently occluded, its size and shape appearance varies over time and between cameras. Knowledge about the soccer domain is utilized and expressed in terms of field, object and motion models to distinguish the ball from other movements in the tracking and matching processes. Using ground plane velocity, longevity, normalized size and color features, each of the tracks obtained from a Kalman filter is assigned with a likelihood measure that represents the ball. This measure is further refined by reasoning through occlusions and back-tracking in the track history. This can be demonstrated to improve the accuracy and continuity of the results. Finally, a simple 3D trajectory model is presented, and the estimated 3D ball positions are fed back to constrain the 2D processing for more efficient and robust detection and tracking. Experimental results with quantitative evaluations from several long sequences are reported.
KW - 3D vision
KW - Domain knowledge modeling
KW - Motion analysis
KW - Sports analysis
KW - Trajectory modeling
KW - Video signal processing
UR - http://www.scopus.com/inward/record.url?scp=63249096803&partnerID=8YFLogxK
U2 - 10.1016/j.cviu.2008.01.007
DO - 10.1016/j.cviu.2008.01.007
M3 - Article
AN - SCOPUS:63249096803
SN - 1077-3142
VL - 113
SP - 633
EP - 642
JO - Computer Vision and Image Understanding
JF - Computer Vision and Image Understanding
IS - 5
ER -