Browse > Article
http://dx.doi.org/10.9717/JMIS.2017.4.4.163

Environmental IoT-Enabled Multimodal Mashup Service for Smart Forest Fires Monitoring  

Elmisery, Ahmed M. (Department of Electronics Engineering, Universidad Tecnica Federico Santa Maria)
Sertovic, Mirela (Faculty of Humanities and Social Sciences, University of Zagreb)
Publication Information
Journal of Multimedia Information System / v.4, no.4, 2017 , pp. 163-170 More about this Journal
Abstract
Internet of things (IoT) is a new paradigm for collecting, processing and analyzing various contents in order to detect anomalies and to monitor particular patterns in a specific environment. The collected data can be used to discover new patterns and to offer new insights. IoT-enabled data mashup is a new technology to combine various types of information from multiple sources into a single web service. Mashup services create a new horizon for different applications. Environmental monitoring is a serious tool for the state and private organizations, which are located in regions with environmental hazards and seek to gain insights to detect hazards and locate them clearly. These organizations may utilize IoT - enabled data mashup service to merge different types of datasets from different IoT sensor networks in order to leverage their data analytics performance and the accuracy of the predictions. This paper presents an IoT - enabled data mashup service, where the multimedia data is collected from the various IoT platforms, then fed into an environmental cognition service which executes different image processing techniques such as noise removal, segmentation, and feature extraction, in order to detect interesting patterns in hazardous areas. The noise present in the captured images is eliminated with the help of a noise removal and background subtraction processes. Markov based approach was utilized to segment the possible regions of interest. The viable features within each region were extracted using a multiresolution wavelet transform, then fed into a discriminative classifier to extract various patterns. Experimental results have shown an accurate detection performance and adequate processing time for the proposed approach. We also provide a data mashup scenario for an IoT-enabled environmental hazard detection service and experimentation results.
Keywords
Data mashup; Forest Fires Monitoring; Multimodal data; Internet of things;
Citations & Related Records
연도 인용수 순위
  • Reference
1 T. Trojer, B. C. M. Fung, and P. C. K. Hung, "Service- Oriented Architecture for Privacy-Preserving Data Mashup," presented at the Proceedings of the 2009 IEEE International Conference on Web Services, 2009.
2 R. D. Hof. Mix, Match, And Mutate. BusinessWeek. Available: http://www.businessweek.com/print/magazine/conte nt/05_30/b3944108_mz063.htm?chan=gl, 2005.
3 A. M. Elmisery and D. Botvich, "Agent based middleware for private data mashup in IPTV recommender services," in 2011 IEEE 16th International Workshop on Computer Aided Modeling and Design of Communication Links and Networks (CAMAD), pp. 107-111, 2011.
4 A. M. Elmisery and D. Botvich, "An Agent Based Middleware for Privacy Aware Recommender Systems in IPTV Networks," in Intelligent Decision Technologies: Proceedings of the 3rd International Conference on Intelligent Decision Technologies (IDT' 2011), J. Watada, G. Phillips-Wren, L. C. Jain, and R. J. Howlett, Eds., ed Berlin, Heidelberg: Springer Berlin Heidelberg, pp. 821-832, 2011
5 A. M. Elmisery, S. Rho, and D. Botvich, "A distributed collaborative platform for personal health profiles in patient-driven health social network," Int. J. Distrib. Sen. Netw., vol. 20, pp. 11-11, 2015.
6 D. Tschumperle and L. Brun, "Non-local image smoothing by applying anisotropic diffusion PDE's in the space of patches," in Image Processing (ICIP), 2009 16th IEEE International Conference on, pp. 2957-2960, 2009.
7 T. Ojala, M. Pietikainen, and T. Maenpaa, "Multiresolution gray-scale and rotation invariant texture classification with local binary patterns," IEEE Transactions on pattern analysis and machine intelligence, vol. 24, pp. 971-987, 2002.   DOI
8 A. Narayanan and V. Shmatikov, "Robust Deanonymization of Large Sparse Datasets," presented at the Proceedings of the 2008 IEEE Symposium on Security and Privacy, 2008.
9 M. Piccardi, "Background subtraction techniques: a review," in Systems, man and cybernetics, 2004 IEEE international conference on, pp. 3099-3104, 2004.
10 A. Elgammal, D. Harwood, and L. Davis, "Nonparametric model for background subtraction," Computer Vision-ECCV 2000, pp. 751-767, 2000.
11 G. Feng, G.-B. Huang, Q. Lin, and R. Gay, "Error minimized extreme learning machine with growth of hidden nodes and incremental learning," IEEE Transactions on Neural Networks, vol. 20, pp. 1352- 1357, 2009.   DOI