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Training Data Set Assessment for Decision-Making in a Multiagent Landmine Detection Platform

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Abstract:

Real-world problems such as landmine detection require multiple sources of information to reduce the uncertainty of decision-making. A novel approach to solve these problems includes distributed systems, as presented in this work based on hardware and software multi-agent systems. To achieve a high rate of landmine detection, we evaluate the performance of a trained system over the distribution of samples between training and validation sets. Additionally, a general explanation of the data set is provided, presenting the samples gathered by a cooperative multi-agent system developed for detecting improvised explosive devices. The results show that input samples affect the performance of the output decisions, and a decision-making system can be less sensitive to sensor noise with intelligent systems obtained from a diverse and suitably organised training set.

Tópico:

Adversarial Robustness in Machine Learning

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Citations: 5
5

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Información de la Fuente:

Fuente2022 IEEE Congress on Evolutionary Computation (CEC)
Cuartil año de publicaciónNo disponible
VolumenNo disponible
IssueNo disponible
Páginas1 - 8
pISSNNo disponible
ISSNNo disponible

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