Integration of multiple, heterogeneous sensors is a challenging
problem across a range of applications. Prominent among these are
multi-target tracking, where one must combine observations from
different sensor types in a meaningful and efficient way to track
multiple targets. Because different sensors have differing error models,
we seek a theoretically-justified quantification of the agreement
amongst ensembles of sensors, both overall for a sensor collection,
and also at a fine-grained level specifying pairwise and multi-way
interactions amongst sensors. We demonstrate that the theory of
mathematical sheaves provides a unified answer to this need,
supporting both quantitative and qualitative data. Furthermore, the
theory provides algorithms to globalize data across the network of
deployed sensors, and to diagnose issues when the data do not
globalize cleanly. We demonstrate and illustrate the utility of
sheaf-based tracking models based on experimental data of a wild
population of black bears in Asheville, North Carolina. A measurement
model involving four sensors deployed amongst the bears and the team of
scientists charged with tracking their location is deployed. This
provides a sheaf-based integration model which is small enough to
fully interpret, but of sufficient complexity to demonstrate the
sheaf's ability to recover a holistic picture of the locations and
behaviors of both individual bears and the bear-human tracking
system. A statistical approach was developed in parallel for
comparison, a dynamic linear model which was estimated using a Kalman
filter. This approach also recovered bear and human locations and
sensor accuracies. When the observations are normalized into a common coordinate system, the structure of the dynamic linear observation
model recapitulates the structure of the sheaf model, demonstrating
the canonicity of the sheaf-based approach. But when the observations are not so normalized, the sheaf model still remains valid.
Revised: July 21, 2020 |
Published: June 17, 2020
Citation
Joslyn C.A., L.E. Charles, C.S. DePerno, N. Gould, K.E. Nowak, B.L. Praggastis, and E. Purvine, et al. 2020.A Sheaf Theoretical Approach to Uncertainty Quantification of Heterogeneous Geolocation Information.Sensors 20, no. 12:Article No. 3418.PNNL-SA-147453.doi:10.3390/s20123418