Cognitive privacy middleware for deep learning mashup in environmental IoT
AM Elmisery, M Sertovic, BB Gupta - IEEE access, 2017 - ieeexplore.ieee.org
AM Elmisery, M Sertovic, BB Gupta
IEEE access, 2017•ieeexplore.ieee.orgData mashup is a Web technology that combines information from multiple sources into a
single Web application. Mashup applications support new services, such as environmental
monitoring. The different organizations utilize data mashup services to merge data sets from
the different Internet of Multimedia Things (IoMT) context-based services in order to leverage
the performance of their data analytics. However, mashup, different data sets from multiple
sources, is a privacy hazard as it might reveal citizens specific behaviors in different regions …
single Web application. Mashup applications support new services, such as environmental
monitoring. The different organizations utilize data mashup services to merge data sets from
the different Internet of Multimedia Things (IoMT) context-based services in order to leverage
the performance of their data analytics. However, mashup, different data sets from multiple
sources, is a privacy hazard as it might reveal citizens specific behaviors in different regions …
Data mashup is a Web technology that combines information from multiple sources into a single Web application. Mashup applications support new services, such as environmental monitoring. The different organizations utilize data mashup services to merge data sets from the different Internet of Multimedia Things (IoMT) context-based services in order to leverage the performance of their data analytics. However, mashup, different data sets from multiple sources, is a privacy hazard as it might reveal citizens specific behaviors in different regions. In this paper, we present our efforts to build a cognitive-based middleware for private data mashup (CMPM) to serve a centralized environmental monitoring service. The proposed middleware is equipped with concealment mechanisms to preserve the privacy of the merged data sets from multiple IoMT networks involved in the mashup application. In addition, we presented an IoT-enabled data mashup service, where the multimedia data are collected from the various IoMT platforms, and then fed into an environmental deep learning service in order to detect interesting patterns in hazardous areas. The viable features within each region were extracted using a multiresolution wavelet transform, and then fed into a discriminative classifier to extract various patterns. We also provide a scenario for IoMT-enabled data mashup service and experimentation results.
ieeexplore.ieee.org
Showing the best result for this search. See all results