FPGA implementation of environment/noise classification using neural networks
Abstract
The purpose of this thesis is to give an insight into the implementation of a system of neural
networks, for the tasks of Noise/Environment Modeling, Feature Extraction and Classification
of Noise/Environment, on a Field Programmable Gate Array (FPGA). A methodology for
creating baseline architecture for a new system of neural networks has been followed, to give
worst case estimates. After necessary analysis an estimate of hardware utilization, within a
specific FPGA (XC3S250E Spartan 3E Device) and the Time for Computation, for each of the
machines used, is given. It also summarizes the Performance-Price Ratio in terms of Time of
Computation and Hardware for Logic simplementation, for different degrees of parallelism in
the system.
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- M Tech Dissertations [923]