Graph-Based Tracking With Uncertain Id Measurement Associations

2019 22ND INTERNATIONAL CONFERENCE ON INFORMATION FUSION (FUSION 2019)(2019)

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摘要
While multiple-hypothesis tracking is a leading paradigm for multi-sensor multi-target tracking, it is not effective in settings with disparate sensors that include high-rate kinematic data and low-rate identity data. Recent work has led to an effective graph-based approach to this challenge. This paper introduces two further advances: a generalization that allows for multiple (indistinguishable) objects of each type, and a scalable, time-based framework for hypothesis resolution. We illustrate promising performance results for multi-target track maintenance scenarios.
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关键词
hypothesis resolution,uncertain ID measurement associations,multiple-hypothesis tracking,multisensor multitarget tracking,high-rate kinematic data,low-rate identity data,multitarget track maintenance,graph-based tracking
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