The design of border surveillance systems is critical for most countries in the world having each border specific needs. This paper focuses on an Internet of Things oriented surveillance system to be deployed in the Sahara Desert which is composed of many unattended fixed platforms where the nodes in the edge have a Forward Looking InfraRed (FLIR) camera for field monitoring. To reduce communications and decentralise the processing IR images should be fully computed on the edge by an Automated Target Recognition (ATR) algorithm tracking and identifying targets of interest. As edge nodes are constrained in energy and computing capacity this work proposes two ATR systems to be executed in low-power microprocessors. Both proposals are based on using Bag-of-Features for feature extraction and a supervised algorithm for classification both differing in segmenting the InfraRed image in regions of interest or working directly with the whole image. Both proposals are successfully applied to infer about a dataset generated to this end getting a trade-off between computing cost and detection capacity. As a result the authors obtained a detection capacity of up to 97% and a frame rate of up to 5.71 and 59.17 running locally on the edge device and the workstation respectively.
CITATION STYLE
Bellazi, K. M., Marino, R., Lanza-Gutierrez, J. M., & Riesgo, T. (2020). Towards an Machine Learning-Based Edge Computing Oriented Monitoring System for the Desert Border Surveillance Use Case. IEEE Access, 8, 218304–218322. https://doi.org/10.1109/ACCESS.2020.3042699
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