Nalazite se na CroRIS probnoj okolini. Ovdje evidentirani podaci neće biti pohranjeni u Informacijskom sustavu znanosti RH. Ako je ovo greška, CroRIS produkcijskoj okolini moguće je pristupi putem poveznice www.croris.hr
izvor podataka: crosbi !

Rapid Object Depth Estimation From Position- Referenced EMI Data Using Machine Learning (CROSBI ID 319067)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

Simic, Marko ; Ambrus, Davorin ; Bilas, Vedran Rapid Object Depth Estimation From Position- Referenced EMI Data Using Machine Learning // Ieee sensors journal, PP (2023), 1-1. doi: 10.1109/jsen.2023.3234143

Podaci o odgovornosti

Simic, Marko ; Ambrus, Davorin ; Bilas, Vedran

engleski

Rapid Object Depth Estimation From Position- Referenced EMI Data Using Machine Learning

State-of-the-art methods for localization and detection of small metallic objects using electromagnetic induction (EMI) sensing usually struggle due to the strong correlation between the intrinsic parameters of the object and the object’s depth. In this paper, we present a machine learning-based approach for rapid estimation of metallic object depth from line-scan EMI data. The 1D-convolutional neural network (1D- CNN), trained on a simulated dataset, takes advantage of metal detector (MD) spatial response to extract features from which depth is inferred. Experimental evaluation using a mono-coil pulse induction MD and an electromagnetic (EM) tracking system was performed under laboratory conditions on a large dataset containing arbitrarily oriented objects of different sizes, shapes, and materials. The nonlinear least squares (NLS) inversion was employed as the benchmark method for comparison. The proposed solution shows superior performance over NLS at depths >10 cm. From two passes of MD over the object at depths within the range of 2.5 to 15 cm, our method yields a median absolute error on the order of millimeters.

Depth estimation, metal detector, electromagnetic induction, electromagnetic tracking system, metallic object, convolutional neural network (CNN), machine learning, nonlinear least squares (NLS) inversion.

nije evidentirano

nije evidentirano

nije evidentirano

nije evidentirano

nije evidentirano

nije evidentirano

Podaci o izdanju

PP

2023.

1-1

objavljeno

1530-437X

1558-1748

10.1109/jsen.2023.3234143

Povezanost rada

nije evidentirano

Poveznice
Indeksiranost