In this paper, we present a smart connected parking lots solution to automatically count and notify drivers about empty parking spots in major cities. As its name implies, the proposed smart IoT system has two operating phases: (i) continuous counting of empty spots in the monitored far-apart parking lots, and (ii) instantaneous driver notification through a lightweight MQTT mechanism. This notification system relies only on information collected from the pre-installed multimedia devices (no other apparatus installation or maintenance such as ground sensors is required). To validate the proper operation of our solution, we have implemented a small-scale version of it and assessed its performance while considering different classical and lightweight deep learning techniques (MobileNetV2, ResNet-50, YOLOv3, SSD-MobileNetV2, Tiny-YOLO, SqueezeDet, and SqueezeDet pruned with ℓ1-norm). The experiments have confirmed the proper operation, efficiency, ease of deployment, and ease of extension of our system. They also confirmed that lightweight deep learning solutions are more adequate for small-sized resource-constrained embedded systems. They are more efficient in terms of inference time, size, resource consumption, and yield an accuracy that is close to that of classical solutions.

Merzoug, M., Mostefaoui, A., Gianini, G., Damiani, E. (2021). Smart connected parking lots based on secured multimedia IoT devices. COMPUTING, 103(6), 1143-1164 [10.1007/s00607-021-00921-1].

Smart connected parking lots based on secured multimedia IoT devices

Gianini, G;
2021

Abstract

In this paper, we present a smart connected parking lots solution to automatically count and notify drivers about empty parking spots in major cities. As its name implies, the proposed smart IoT system has two operating phases: (i) continuous counting of empty spots in the monitored far-apart parking lots, and (ii) instantaneous driver notification through a lightweight MQTT mechanism. This notification system relies only on information collected from the pre-installed multimedia devices (no other apparatus installation or maintenance such as ground sensors is required). To validate the proper operation of our solution, we have implemented a small-scale version of it and assessed its performance while considering different classical and lightweight deep learning techniques (MobileNetV2, ResNet-50, YOLOv3, SSD-MobileNetV2, Tiny-YOLO, SqueezeDet, and SqueezeDet pruned with ℓ1-norm). The experiments have confirmed the proper operation, efficiency, ease of deployment, and ease of extension of our system. They also confirmed that lightweight deep learning solutions are more adequate for small-sized resource-constrained embedded systems. They are more efficient in terms of inference time, size, resource consumption, and yield an accuracy that is close to that of classical solutions.
Articolo in rivista - Articolo scientifico
Connected parking lots; Deep learning; In-city parking; Internet of things; Parking spot availability;
English
2021
103
6
1143
1164
reserved
Merzoug, M., Mostefaoui, A., Gianini, G., Damiani, E. (2021). Smart connected parking lots based on secured multimedia IoT devices. COMPUTING, 103(6), 1143-1164 [10.1007/s00607-021-00921-1].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/454831
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