42 research outputs found
5G Positioning and Mapping with Diffuse Multipath
5G mmWave communication is useful for positioning due to the geometric
connection between the propagation channel and the propagation environment.
Channel estimation methods can exploit the resulting sparsity to estimate
parameters(delay and angles) of each propagation path, which in turn can be
exploited for positioning and mapping. When paths exhibit significant spread in
either angle or delay, these methods breakdown or lead to significant biases.
We present a novel tensor-based method for channel estimation that allows
estimation of mmWave channel parameters in a non-parametric form. The method is
able to accurately estimate the channel, even in the absence of a specular
component. This in turn enables positioning and mapping using only diffuse
multipath. Simulation results are provided to demonstrate the efficacy of the
proposed approach
5G Synchronization, Positioning, and Mapping from Diffuse Multipath
5G mmWave communication systems have the potential to jointly estimate the positions of user equipment (UE) and mapping their propagation environments using a single base station. But such potential depends on the characteristics of the reflecting surfaces, such as a deterministic specular nature, a stochastic diffuse/scattering nature, or a combination of both. In this letter, we proposed a 5G positioning and mapping algorithm with unknown orientation and clock bias for single-bounce diffuse multipath channel models. The method is able to accurately localize, calibrate and synchronize the UE, even in the absence of line-of-sight and specular components. This enables robust positioning and mapping using only diffuse multipath
Robust MIMO Channel Estimation from Incomplete and Corrupted Measurements
Location-aware communication is one of the enabling techniques for future 5G networks. It requires accurate temporal and spatial channel estimation from multidimensional data. Most of the existing channel estimation techniques assume that the measurements are complete and noise is Gaussian. While these approaches are brittle to corrupted or outlying measurements, which are ubiquitous in real applications. To address these issues, we develop a lp-norm minimization based iteratively reweighted higher-order singular value decomposition algorithm. It is robust to Gaussian as well as the impulsive noise even when the measurement data is incomplete. Compared with the state-of-the-art techniques, accurate estimation results are achieved for the proposed approach
Tensor Decomposition-based Beamspace Esprit Algorithm for Multidimensional Harmonic Retrieval
Beamspace processing is an efficient and commonly used approach in harmonic retrieval (HR). In the beamspace, measurements are obtained by linearly transforming the sensing data, thereby achieving a compromise between estimation accuracy and system complexity. Meanwhile, the widespread use of multi-sensor technology in HR has highlighted the necessity to move from a matrix (two-way) to tensor (multi-way) analysis. In this paper, we propose a beamspace tensor-ESPRIT for multidimensional HR. In our algorithm, parameter estimation and association are achieved simultaneously
A Cooperative Perception System Robust to Localization Errors
Cooperative perception is challenging for safety-critical autonomous driving
applications.The errors in the shared position and pose cause an inaccurate
relative transform estimation and disrupt the robust mapping of the Ego
vehicle. We propose a distributed object-level cooperative perception system
called OptiMatch, in which the detected 3D bounding boxes and local state
information are shared between the connected vehicles. To correct the noisy
relative transform, the local measurements of both connected vehicles (bounding
boxes) are utilized, and an optimal transport theory-based algorithm is
developed to filter out those objects jointly detected by the vehicles along
with their correspondence, constructing an associated co-visible set. A
correction transform is estimated from the matched object pairs and further
applied to the noisy relative transform, followed by global fusion and dynamic
mapping. Experiment results show that robust performance is achieved for
different levels of location and heading errors, and the proposed framework
outperforms the state-of-the-art benchmark fusion schemes, including early,
late, and intermediate fusion, on average precision by a large margin when
location and/or heading errors occur.Comment: Accepted by IEEE IV 202
An Iterative 5G Positioning and Synchronization Algorithm in NLOS Environments with Multi-Bounce Paths
5G positioning is a very promising area that presents many opportunities and
challenges. Many existing techniques rely on multiple anchor nodes and
line-of-sight (LOS) paths, or single reference node and single-bounce non-LOS
(NLOS) paths. However, in dense multipath environments, identifying the LOS or
single-bounce assumptions is challenging. The multi-bounce paths will make the
positioning accuracy deteriorate significantly. We propose a robust 5G
positioning algorithm in NLOS multipath environments. The corresponding
positioning problem is formulated as an iterative and weighted least squares
problem, and different weights are utilized to mitigate the effects of
multi-bounce paths. Numerical simulations are carried out to evaluate the
performance of the proposed algorithm. Compared with the benchmark positioning
algorithms only using the single-bounce paths, similar positioning accuracy is
achieved for the proposed algorithm
Impact of Rough Surface Scattering on Stochastic Multipath Component Models
Multipath-assisted positioning makes use of specular multipath components (MPCs), whose parameters are geometrically related to the positions of the transceiver nodes. Diffuse scattering from rough surfaces affects the observed specular reflections in the angular and delay domains. Based on the effective roughness approach, the angular delay power spectrum can be calculated as a function of location parameters, which-in a next step-could be useful to accurately characterize the position-related information of MPCs. The calculated power spectra follow reported characteristics of stochastic multipath models, i.e. Gaussian shape in the angular domain and an exponential shape in the delay domain. The resulting angular and delay spreads are in an equivalent range to values reported in literature
Tensor Decomposition Based Beamspace ESPRIT for Millimeter Wave MIMO Channel Estimation
We propose a search-free beamspace tensor-ESPRIT algorithm for millimeter wave MIMO channel estimation. It is a multidimensional generalization of beamspace-ESPRIT method by exploiting the multiple invariance structure of the measurements. Geometry-based channel model is considered to contain the channel sparsity feature. In our framework, an alternating least squares problem is solved for low rank tensor decomposition and the multidimensional parameters are automatically associated. The performance of the proposed algorithm is evaluated by considering different transformation schemes