Article ID Journal Published Year Pages File Type
525977 Computer Vision and Image Understanding 2012 14 Pages PDF
Abstract

We introduce MMTrack (max-margin tracker), a single-target tracker that linearly combines constant and adaptive appearance features. We frame offline single-camera tracking as a structured output prediction task where the goal is to find a sequence of locations of the target given a video. Following recent advances in machine learning, we discriminatively learn tracker parameters by first generating suitable bad trajectories and then employing a margin criterion to learn how to distinguish among ground truth trajectories and all other possibilities. Our framework for tracking is general, and can be used with a variety of features. We demonstrate a system combining a variety of appearance features and a motion model, with the parameters of these features learned jointly in a coherent learning framework. Further, taking advantage of a reliable human detector, we present a natural way of extending our tracker to a robust detection and tracking system. We apply our framework to pedestrian tracking and experimentally demonstrate the effectiveness of our method on two real-world data sets, achieving results comparable to state-of-the-art tracking systems.

► We introduce MMTrack (max-margin tracker), a single-target tracker. ► MMTrack linearly combines constant and adaptive appearance features. ► We discriminatively learn tracker parameters employing a margin criterion. ► Our framework for tracking is general, and can be used with a variety of features. ► We describe a fully automatic human detection and tracking system using MMTrack.

Related Topics
Physical Sciences and Engineering Computer Science Computer Vision and Pattern Recognition
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