Adaptive Discriminative Generative Model and Its Applications
Lin, Ruei-sung, Ross, David A., Lim, Jongwoo, Yang, Ming-Hsuan
–Neural Information Processing Systems
This paper presents an adaptive discriminative generative model that generalizes theconventional Fisher Linear Discriminant algorithm and renders a proper probabilistic interpretation. Within the context of object tracking, we aim to find a discriminative generative model that best separates thetarget from the background. We present a computationally efficient algorithm to constantly update this discriminative model as time progresses. While most tracking algorithms operate on the premise that the object appearance or ambient lighting condition does not significantly change as time progresses, our method adapts a discriminative generative modelto reflect appearance variation of the target and background, thereby facilitating the tracking task in ever-changing environments. Numerous experimentsshow that our method is able to learn a discriminative generative model for tracking target objects undergoing large pose and lighting changes.
Neural Information Processing Systems
Dec-31-2005