2022
DOI: 10.1109/tsp.2022.3230332
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Propagation Map Reconstruction via Interpolation Assisted Matrix Completion

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Cited by 14 publications
(2 citation statements)
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“…where F (u) is the kernel function. It allows the regression problem in equation ( 9) to consider only the interpolation of sample values within the radius b from c. A high weight is assigned if the baseline position s p corresponding to the visibility sample value is close to the interpolated position c; conversely, a low weight is assigned if the baseline position s p corresponding to the visibility sample value is far from the interpolated position c. The kernel function is chosen in this article as Epanechnikov kernel, 11 whose expression is:…”
Section: Interpolation Based On Local Polynomial Regression Modelmentioning
confidence: 99%
“…where F (u) is the kernel function. It allows the regression problem in equation ( 9) to consider only the interpolation of sample values within the radius b from c. A high weight is assigned if the baseline position s p corresponding to the visibility sample value is close to the interpolated position c; conversely, a low weight is assigned if the baseline position s p corresponding to the visibility sample value is far from the interpolated position c. The kernel function is chosen in this article as Epanechnikov kernel, 11 whose expression is:…”
Section: Interpolation Based On Local Polynomial Regression Modelmentioning
confidence: 99%
“…Interpolation-based radio map construction techniques exploit real measurements taken at various locations of transmitters (TXs) and receivers (RXs) without explicitly exploiting the geometry structure of the environment. Some representative interpolation methods for radio map construction include k-nearest neighbor (KNN) interpolation [13], inverse distance weighted (IDW) interpolation [14], matrix completion [15], dictionary-based compressive sensing [16], and Kriging [17], etc. These methods are based on the spatial correlation of measurements, but they cannot differentiate the corresponding propagation conditions, such as LOS and non-line-of-sight (NLOS).…”
Section: Introductionmentioning
confidence: 99%