Litcius/Paper detail

Embedded Vision Intelligence for the Safety of Smart Cities

Jon Martín, David Cantero, Maite González, Andrea Cabrera, Mikel Larrañaga, Evangelos Maltezos, Panagiotis Lioupis, Dimitris Kosyvas, Lazaros Karagiannidis, Eleftherios Ouzounoglou, Angelos Amditis

2022Journal of Imaging11 citationsDOIOpen Access PDF

Abstract

Advances in Artificial intelligence (AI) and embedded systems have resulted on a recent increase in use of image processing applications for smart cities' safety. This enables a cost-adequate scale of automated video surveillance, increasing the data available and releasing human intervention. At the same time, although deep learning is a very intensive task in terms of computing resources, hardware and software improvements have emerged, allowing embedded systems to implement sophisticated machine learning algorithms at the edge. Additionally, new lightweight open-source middleware for constrained resource devices, such as EdgeX Foundry, have appeared to facilitate the collection and processing of data at sensor level, with communication capabilities to exchange data with a cloud enterprise application. The objective of this work is to show and describe the development of two Edge Smart Camera Systems for safety of Smart cities within S4AllCities H2020 project. Hence, the work presents hardware and software modules developed within the project, including a custom hardware platform specifically developed for the deployment of deep learning models based on the I.MX8 Plus from NXP, which considerably reduces processing and inference times; a custom Video Analytics Edge Computing (VAEC) system deployed on a commercial NVIDIA Jetson TX2 platform, which provides high level results on person detection processes; and an edge computing framework for the management of those two edge devices, namely Distributed Edge Computing framework, DECIoT. To verify the utility and functionality of the systems, extended experiments were performed. The results highlight their potential to provide enhanced situational awareness and demonstrate the suitability for edge machine vision applications for safety in smart cities.

Topics & Concepts

Computer scienceEdge computingCloud computingEmbedded systemSoftware deploymentEdge deviceMiddleware (distributed applications)AnalyticsSoftwareDeep learningSmart cameraEnhanced Data Rates for GSM EvolutionArtificial intelligenceDistributed computingSoftware engineeringOperating systemData scienceVideo Surveillance and Tracking MethodsIoT and Edge/Fog ComputingAdvanced Neural Network Applications