Multi-agent learning neural network and Bayesian model for real-time IoT skin detectors: a new evaluation and benchmarking methodology

Volume: 32, Issue: 12, Pages: 8315 - 8366
Published: Jul 2, 2019
Abstract
This study aimed to develop a new methodology for evaluating and benchmarking a multi-agent learning neural network and Bayesian model for real-time skin detectors based on Internet of things (IoT) by using multi-criteria decision-making (MCDM). The novelty of this work is in the use of an evaluation matrix for the performance evaluation of real-time skin detectors that are based on IoT. Nevertheless, an issue with the performance evaluation of...
Paper Details
Title
Multi-agent learning neural network and Bayesian model for real-time IoT skin detectors: a new evaluation and benchmarking methodology
Published Date
Jul 2, 2019
Volume
32
Issue
12
Pages
8315 - 8366
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