Temporal persistence modeling for object searchDownload PDFOpen Website

2017 (modified: 21 Jun 2021)ICRA 2017Readers: Everyone
Abstract: We present a novel solution to the object search problem for domains in which object permanence cannot be assumed and other agents may move objects between locations without the robot's knowledge. We formalize object search as a failure analysis problem and contribute temporal persistence modeling (TPM), an algorithm for probabilistic prediction of the time that an object is expected to remain at a given location given sparse prior observations. We show that probabilistic exponential distributions augmented with a Gaussian component can accurately represent probable object locations and search suggestions based entirely on sparsely made visual observations. We evaluate our work in two domains, a large scale GPS location data set for person tracking, and multi-object tracking on a mobile robot operating in a small-scale household environment over a 2-week period. TPM performance exceeds four baseline methods across all study conditions.
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