Vehicle Intrusion Classification using Deep Learning and Simulated Sensor Networks

No Thumbnail Available

Authors

Rababaah, Aaron Rasheed
Rababah, Haroun Musa

Issue Date

2024-04-18

Type

Conference Presentations/Proceedings
Peer-reviewed

Language

Keywords

Research Projects

Organizational Units

Journal Issue

Alternative Title

Abstract

This paper presents a development of classification Deep Learning (DL)-based model for simulated vehicles intruding a sensor network. The study proposes a DL architecture that is capable of learning and classifying a set of six different vehicle classes including motorcycles, military SUV, trucks, tank, etc. The proposed DL architecture consists of number of layers including: input, convolution, activation, pooling, flatten, fully-connected, and soft-max layers. To train and validate the proposed model, a simulated sensor network was developed to detect intruding vehicles to a guarded area. Simulated sensors were deployed on large scale, detection patters are collected and fed to the DL model for training and validation. The experimental results showed that the proposed model was effective and reliable with an average accuracy of 95.41% and a highest accuracy of 98.31%. The primary outcome of this study is that simple large-scale deployment of simple sensors is effective in detecting and tracking objects within a sensor network. We believe the proposed model can be extended to different domains such as wildlife surveys and forest protection.

Description

Citation

Publisher

License

Journal

Volume

Issue

PubMed ID

ISSN

EISSN