DIGITAL ARCHITECTURES FOR ADAPTIVE PROCESSING OF MEASUREMENT DATA

Andrea Boni, Dario Petri, Ivan Biasi
Abstract:
In this paper we describe the design of digital architectures suitable for the implementation of measurement data classification based on Support Vector Machines (SVMs). The performance of such architectures are then analyzed. The proposed approach can be applied for solving identification and inverse modelling problems, and for processing complex measurement data. Two very different case studies where real-time processing is of paramount importance are discussed: a nonlinear channel equalization and a high energy physics classification task.
Download:
IMEKO-TC4-2004-035.pdf
DOI:
-
Event details
IMEKO TC:
TC4
Event name:
TC4 Symposium 2004
Title:
XIII IMEKO TC4 International Symposium on Measurements for Research and Industrial Applications (together with IXth International Workshop on ADC Modeling and Testing, IWADC)
Place:
Athens, GREECE
Time:
29 September 2004 - 01 October 2004