Smart City Gnosys

Smart city article details

Title Multimedia-Oriented Action Recognition In Smart City-Based Iot Using Multilayer Perceptron
ID_Doc 38560
Authors AL Zamil, MGH; Samarah, S; Rawashdeh, M; Karime, A; Hossain, MS
Year 2019
Published MULTIMEDIA TOOLS AND APPLICATIONS, 78, 21
DOI http://dx.doi.org/10.1007/s11042-018-6919-z
Abstract The Internet of Things (IoT) devices and technologies for smart city applications produces a vast amount of multimedia data (e.g., audio, video, image, text and sensorial data), such big data are difficult to handle with traditional techniques and algorithms. The emerging machine learning techniques have the potential to facilitate the development of a new class of applications that can deal with such multimedia big data. Recently, Activity Recognition systems suggest using of multimedia data to detect daily actions, since it provides more accurate patterns; prevent the arising complain on privacy issues (in case of using audio-base data) and able to work on a big data. In this paper, we propose a Deep Learning (DL) methodology for classifying audio data that is based on multilayer perceptron neural networks. The contributions of our work are to propose an efficient design of the network topology including hidden layers, neurons, and the fitness function. In addition, the proposed methodology contributed in producing high performance classifier in terms of accuracy and f-measure. The experiments have been conducted on four large audio-datasets that have been collected to represent different modalities in a smart city. The results indicated that the proposed methodology achieved high performance as compared to the state-of-the-art machine learning techniques.
Author Keywords Internet of things; Multimedia big data; Multilayer perceptron neural networks; Smart City


Similar Articles


Id Similarity Authors Title Published
8761 View0.888Khalifa O.O.; Roubleh A.; Esgiar A.; Abdelhaq M.; Alsaqour R.; Abdalla A.; Ali E.S.; Saeed R.An Iot-Platform-Based Deep Learning System For Human Behavior Recognition In Smart City Monitoring Using The Berkeley Mhad DatasetsSystems, 10, 5 (2022)
6094 View0.877Rustemli S.; Alani A.Y.B.; Şahin G.; van Sark W.Action Detection Of Objects Devices Using Deep Learning In Iot ApplicationsAnalog Integrated Circuits and Signal Processing, 123, 1 (2025)
33720 View0.874Ebrahimy A.R.; Naghshnilchi A.R.; Monadjemi A.H.; Saeidehsani M.Iot Based Smart Surveillance Monitoring By Using Model-Based Human Action Recognition DesignProceedings of 2021 5th International Conference on Internet of Things and Applications, IoT 2021 (2021)
5227 View0.858Usman M.; Jan M.A.; He X.; Chen J.A Survey On Big Multimedia Data Processing And Management In Smart CitiesACM Computing Surveys, 52, 3 (2020)
59770 View0.858Ameur I.; Ameur M.E.A.; Ameur M.; Dagha H.E.Unveiling Human Activity Patterns In Smart Cities Through A Cnn-Lstm ApproachLecture Notes in Networks and Systems, 1267 LNNS (2025)
38537 View0.858Putra D.N.S.; Yulita I.N.Multilayer Perceptron For Activity Recognition Using A Batteryless Wearable SensorIOP Conference Series: Earth and Environmental Science, 248, 1 (2019)
6138 View0.857Baghezza R.; Bouchard K.; Bouzouane A.; Gouin-Vallerand C.Activity Recognition In The City Using Embedded Systems And Anonymous SensorsProcedia Computer Science, 170 (2020)
58351 View0.855Bellavista P.; Ota K.; Lv Z.; Mehmood I.; Rho S.Towards Smarter Cities: Learning From Internet Of Multimedia Things-Generated Big DataFuture Generation Computer Systems, 108 (2020)
38615 View0.854Kalimuthu S.; Perumal T.; Yaakob R.; Marlisah E.; Raghavan S.Multiple Human Activity Recognition Using Iot Sensors And Machine Learning In Device-Free Environment: Feature Extraction, Classification, And Challenges: A Comprehensive ReviewAIP Conference Proceedings, 2816, 1 (2024)
33935 View0.852Aminiyeganeh K.; Coutinho R.W.L.; Boukerche A.Iot Video Analytics For Surveillance-Based Systems In Smart CitiesComputer Communications, 224 (2024)