We propose a novel approach for multi-person trackingby-
detection in a particle filtering framework. In addition
to final high-confidence detections, our algorithm uses the
continuous confidence of pedestrian detectors and online
trained, instance-specific classifiers as a graded observation
model. Thus, generic object category knowledge is
complemented by instance-specific information. A main
contribution of this paper is the exploration of how these
unreliable information sources can be used for multi-person
tracking. The resulting algorithm robustly tracks a large
number of dynamically moving persons in complex scenes
with occlusions, does not rely on background modeling, and
operates entirely in 2D (requiring no camera or ground
plane calibration). Our Markovian approach relies only on
information from the past and is suitable for online applications.
We evaluate the performance on a variety of datasets
and show that it improves upon state-of-the-art methods.
Michael D. Breitenstein, Fabian Reichlin, Bastian