Map Building of Indoor Environment with Sensors using Neural Network

Latha Mary, S Angel and Ulagapriya, K. and Poonguzhali, A and Menaha, R. and David, Beaulah and Priyadharshini, T.R. (2023) Map Building of Indoor Environment with Sensors using Neural Network. In: 2023 Winter Summit on Smart Computing and Networks (WiSSCoN), Chennai, India.

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Abstract

The necessity of a blueprint of a building structure is a mandatory requirement for any reconnaissance or rescue operations. In our project, we build a modular system combining sensors related to sonar, laser, micro-wave to read sensory values and generate a 2D path of any building. The data is fetched and stored to feed to anOptimal Neural Network (ONN)-based computing system to create a 2D route with minimal discrepancies of error. Here the NN architecture is fine-tuned using Modified Dolphin Partner Optimization (MDPO) Exploration of unknown environments and space using autonomous vehicles has recently gained good attention in the field of Robotic Mapping. The recent advancements in the Internet of Things have enabled us to establish an ideal frame of reference for sonar and lidar-based systems. New effects are displayed by the sensors according to the physical characteristics of a room. The range data from sensors in various surroundings are interpreted by NNs. The distorted errors due to the material medium, particles, and moving objects present in the environment pose a threat to building a high-quality path map. The sensor fusion technique is applied to the rotatable modular array sensor to minimalize discrepancies caused by cloth materials during sonar readings, particle noise in an environment for Lidar reading, and moving human bodies present in the environment for path building and obstacle detection.

Item Type: Conference or Workshop Item (Paper)
Subjects: Computer Science Engineering > Computer Network
Divisions: Computer Science Engineering
Depositing User: Mr IR Admin
Date Deposited: 25 Sep 2024 06:01
Last Modified: 25 Sep 2024 06:01
URI: https://ir.vistas.ac.in/id/eprint/7179

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