Active Object Tracking using Context Estimation: Handling Occlusions and Detecting Missing Targets
Minkyu Kim, Luis Sentis

TL;DR
This paper presents a novel active object tracking method that uses context estimation with a Dynamic Bayesian Network and POMDP to handle occlusions and missing targets in real-time robotic applications.
Contribution
It introduces a context-aware approach combining Bayesian filtering and decision-making frameworks for improved target tracking under occlusion and absence conditions.
Findings
Effective handling of occlusions and missing targets in real-time
Improved target localization accuracy using context estimation
Successful implementation on a mobile robot platform
Abstract
When performing visual servoing or object tracking tasks, active sensor planning is essential to keep targets in sight or to relocate them when missing. In particular, when dealing with a known target missing from the sensor's field of view, we propose using prior knowledge related to contextual information to estimate its possible location. To this end, this study proposes a Dynamic Bayesian Network that uses contextual information to effectively search for targets. Monte Carlo particle filtering is employed to approximate the posterior probability of the target's state, from which uncertainty is defined. We define the robot's utility function via information-theoretic formalism as seeking the optimal action which reduces uncertainty of a task, prompting robot agents to investigate the location where the target most likely might exist. Using a context state model, we design the agent's…
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Taxonomy
TopicsData Management and Algorithms
