TOA sensor network self-calibration for receiver and transmitter spaces with difference in dimension

Burgess, Simon; Kuang, Yubin; Åström, Karl (2015). TOA sensor network self-calibration for receiver and transmitter spaces with difference in dimension. Signal Processing, 107, (Online 11 June 2014), 33 - 42
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DOI:
| Published | English
Authors:
Burgess, Simon ; Kuang, Yubin ; Åström, Karl
Department:
Mathematics (Faculty of Engineering)
Mathematical Imaging Group
ELLIIT: the Linköping-Lund initiative on IT and mobile communication
eSSENCE: The e-Science Collaboration
Research Group:
Mathematical Imaging Group
Abstract:
We study and solve the previously unstudied problem of finding both transmitter and receiver positions using only time of arrival (TOA) measurements when there is a difference in dimensionality between the affine subspaces spanned by receivers and transmitters. Anchor-free TOA network calibration has uses both in radio, radio strength and sound applications, such as calibrating ad hoc microphone arrays. Using linear techniques and requiring only minimal number of receivers and transmitters, an algorithm is constructed for general dimension p for the lower dimensional subspace. Degenerate cases are determined and partially characterized as when receivers or transmitters inhabit a lower dimensional affine subspace than was given as input. The algorithm is further extended to overdetermined cases in a straightforward manner. Utilizing the minimal solver, an algorithm using the Random Sample Consensus (RANSAC) paradigm has been constructed to simultaneously solve the calibration problem and remove severe outliers, a common problem in TOA applications. Simulated experiments show good performance for the minimal solver and the RANSAC-like algorithm under noisy measurements. Two indoor environment experiments using microphones and speakers give a RMSE of 2.35 cm and 3.95 cm on receiver and transmitter positions compared to computer vision reconstructions.
Keywords:
TOA ; Array calibration ; Minimal problem ; Ad hoc microphone arrays ; Computer Vision and Robotics (Autonomous Systems) ; Mathematics
ISSN:
0165-1684
LUP-ID:
d90f6a6a-564a-4a8b-84f3-f7615bd4957e | Link: https://lup.lub.lu.se/record/d90f6a6a-564a-4a8b-84f3-f7615bd4957e | Statistics

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