In the framework of buried object detection and subsurface sensing, some of the main difficulties in the reconstruction process are certainly due to the aspect-limited nature of available measurement data and to the requirement of an on-line reconstruction. To limit these problems, a multi-source (MS) learning-by-example (LBE) technique is proposed in this paper. In order to fully exploit the more attractive features of the MS strategy, the proposed approach is based on a support vector machine (SVM). The effectiveness of the MS-LBE technique is evaluated by comparing the achieved results with those obtained by means of a previously developed single-source (SS) SVM-based procedure for an ideal as well as a noisy enviroment.

A Multi-Source Strategy based on a Learning-by-Examples Technique for Buried Object Detection / Bermani, Emanuela; Boni, Andrea; Caorsi, Salvatore; Massa, Andrea; Donelli, Massimo. - ELETTRONICO. - (2004).

A Multi-Source Strategy based on a Learning-by-Examples Technique for Buried Object Detection

Bermani, Emanuela;Boni, Andrea;Massa, Andrea;Donelli, Massimo
2004-01-01

Abstract

In the framework of buried object detection and subsurface sensing, some of the main difficulties in the reconstruction process are certainly due to the aspect-limited nature of available measurement data and to the requirement of an on-line reconstruction. To limit these problems, a multi-source (MS) learning-by-example (LBE) technique is proposed in this paper. In order to fully exploit the more attractive features of the MS strategy, the proposed approach is based on a support vector machine (SVM). The effectiveness of the MS-LBE technique is evaluated by comparing the achieved results with those obtained by means of a previously developed single-source (SS) SVM-based procedure for an ideal as well as a noisy enviroment.
2004
Trento, Italia
Università degli Studi di Trento. DEPARTMENT OF INFORMATION AND COMMUNICATION TECHNOLOGY
A Multi-Source Strategy based on a Learning-by-Examples Technique for Buried Object Detection / Bermani, Emanuela; Boni, Andrea; Caorsi, Salvatore; Massa, Andrea; Donelli, Massimo. - ELETTRONICO. - (2004).
Bermani, Emanuela; Boni, Andrea; Caorsi, Salvatore; Massa, Andrea; Donelli, Massimo
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/359078
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