Title of article :
Optimal-flow minimum-cost correspondence assignment in particle flow tracking
Author/Authors :
O. R. Matov، نويسنده , , Alexandre and Edvall، نويسنده , , Marcus M. and Yang، نويسنده , , Ge and Danuser، نويسنده , , Gaudenz، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Abstract :
A diversity of tracking problems exists in which cohorts of densely packed particles move in an organized fashion, however the stability of individual particles within the cohort is low. Moreover, the flows of cohorts can regionally overlap. Together, these conditions yield a complex tracking scenario that cannot be addressed by optical flow techniques that assume piecewise coherent flows, or by multi-particle tracking techniques that suffer from the local ambiguity in particle assignment. Here, we propose a graph-based assignment of particles in three consecutive frames to recover from image sequences the instantaneous organized motion of groups of particles, i.e. flows. The algorithm makes no a priori assumptions on the fraction of particles participating in organized movement, as this number continuously alters with the evolution of the flow fields in time. Graph-based assignment methods generally maximize the number of acceptable particles assignments between consecutive frames and only then minimize the association cost. In dense and unstable particle flow fields this approach produces many false positives. The here proposed approach avoids this via solution of a multi-objective optimization problem in which the number of assignments is maximized while their total association cost is minimized. The method is validated on standard benchmark data for particle tracking. In addition, we demonstrate its application to live cell microscopy where several large molecular populations with different behaviors are tracked.
Keywords :
graph algorithms , Multi-directional flows , Multi-Objective optimization , vector field , Particle tracking
Journal title :
Computer Vision and Image Understanding
Journal title :
Computer Vision and Image Understanding