Smart City Gnosys

Smart city article details

Title Compressive Sensing-Based Iot Applications: A Review
ID_Doc 15359
Authors Djelouat H.; Amira A.; Bensaali F.
Year 2018
Published Journal of Sensor and Actuator Networks, 7, 4
DOI http://dx.doi.org/10.3390/jsan7040045
Abstract The Internet of Things (IoT) holds great promises to provide an edge cutting technology that enables numerous innovative services related to healthcare, manufacturing, smart cities and various human daily activities. In a typical IoT scenario, a large number of self-powered smart devices collect real-world data and communicate with each other and with the cloud through a wireless link in order to exchange information and to provide specific services. However, the high energy consumption associated with the wireless transmission limits the performance of these IoT self-powered devices in terms of computation abilities and battery lifetime. Thus, to optimize data transmission, different approaches have to be explored such as cooperative transmission, multi-hop network architectures and sophisticated compression techniques. For the latter, compressive sensing (CS) is a very attractive paradigm to be incorporated in the design of IoT platforms. CS is a novel signal acquisition and compression theory that exploits the sparsity behavior of most natural signals and IoT architectures to achieve power-efficient, real-time platforms that can grant efficient IoT applications. This paper assesses the extant literature that has aimed to incorporate CS in IoT applications. Moreover, the paper highlights emerging trends and identifies several avenues for future CS-based IoT research. © 2018 by the authors.
Author Keywords Compressive sensing (CS); Hardware implementation; Internet of things (IoT); Reconstruction algorithms


Similar Articles


Id Similarity Authors Title Published
37400 View0.894Eltabie O.M.; Ghuniem A.M.; Abdelkader M.F.Model Assisted Compressive Data Gathering In Dense Iot Monitoring Of Water Distribution Networks5th IEEE International Smart Cities Conference, ISC2 2019 (2019)
40716 View0.887Gambheer R.; Bhat M.S.Optimized Compressed Sensing For Iot: Advanced Algorithms For Efficient Sparse Signal Reconstruction In Edge DevicesIEEE Access, 12 (2024)
15357 View0.883Ma L.; Zhang Z.; Li Y.; Fu Y.; Ma D.Compressive Sensing Solution Optimization Method In Sensing-Transmission-Calculation Integrated SystemProceedings - 24th IEEE International Conference on High Performance Computing and Communications, 8th IEEE International Conference on Data Science and Systems, 20th IEEE International Conference on Smart City and 8th IEEE International Conference on Dependability in Sensor, Cloud and Big Data Systems and Application, HPCC/DSS/SmartCity/DependSys 2022 (2022)
5136 View0.876Wang X.; Chen H.A Survey Of Compressive Data Gathering In Wsns For IotsWireless Communications and Mobile Computing, 2022 (2022)
39940 View0.866Ababzadeh R.; Khansari M.On The Unequal Error Protection In Compressive Video Sensing For Low Power And Lossy Iot NetworksProceeding of 4th International Conference on Smart Cities, Internet of Things and Applications, SCIoT 2020 (2020)
35760 View0.863Shi Y.; Dong J.; Zhang J.Low-Overhead Communications In Iot Networks: Structured Signal Processing ApproachesLow-overhead Communications in IoT Networks: Structured Signal Processing Approaches (2020)
35304 View0.859Vaananen O.; Hamalainen T.Linearity-Based Sensor Data Online Compression Methods For Environmental ApplicationsProceedings - 2023 6th Conference on Cloud and Internet of Things, CIoT 2023 (2023)
15346 View0.859Kavitha K.J.; Manur V.B.; Suprith P.G.; Naik M.S.; Chaitra S.N.Compressed Sensing Reconstruction Algorithms For Medical Images – A ComparisonSmart Hospitals: 5G, 6G and Moving Beyond Connectivity (2024)
57924 View0.858Lounas R.; Salhi D.E.; Mokrani H.; Djerbi R.; Bennai M.T.Towards A Smart Data Transmission Strategy For Iot Monitoring Systems: Application To Air Quality Monitoring2019 International Conference on Theoretical and Applicative Aspects of Computer Science, ICTAACS 2019 (2019)
5237 View0.856Benazzouza S.; Ridouani M.; Salahdine F.; Hayar A.A Survey On Compressive Spectrum Sensing For Cognitive Radio Networks5th IEEE International Smart Cities Conference, ISC2 2019 (2019)