Article ID Journal Published Year Pages File Type
487582 Procedia Computer Science 2014 4 Pages PDF
Abstract

In visual adaptive tracking, the tracker adapts to the target, background, and conditions of the image sequence. Each update introduces some error, so the tracker might drift away from the target over time. To increase the robustness against the drifting problem, we present three ideas on top of a particle filter framework: An optical-flow-based motion estimation, a learning strategy for preventing bad updates while staying adaptive, and a sliding window detector for failure detection and finding the best training examples. We experimentally evaluate the ideas using the BoBoT dataseta, . The code of our tracker is available onlineb.

Related Topics
Physical Sciences and Engineering Computer Science Computer Science (General)