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المؤلفSaid, A.
المؤلفSaid, Ahmed Ben
المؤلفAl-Sa'D, Mohamed Fathi
المؤلفTlili, Mounira
المؤلفAbdellatif, Alaa Awad
المؤلفMohamed, Amr
المؤلفElfouly, Tarek
المؤلفHarras, Khaled
المؤلفO'Connor, Mark Dennis
تاريخ الإتاحة2019-09-18T07:55:29Z
تاريخ النشر2018-06-05
اسم المنشورIEEE Access
المعرّفhttp://dx.doi.org/10.1109/ACCESS.2018.2844308
الاقتباسA. B. said et al., "A Deep Learning Approach for Vital Signs Compression and Energy Efficient Delivery in mhealth Systems," in IEEE Access, vol. 6, pp. 33727-33739, 2018. doi: 10.1109/ACCESS.2018.2844308
الرقم المعياري الدولي للكتاب2169-3536
معرّف المصادر الموحدhttps://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=85048183039&origin=inward
معرّف المصادر الموحدhttp://hdl.handle.net/10576/11885
الملخص© 2013 IEEE. Due to the increasing number of chronic disease patients, continuous health monitoring has become the top priority for health-care providers and has posed a major stimulus for the development of scalable and energy efficient mobile health systems. Collected data in such systems are highly critical and can be affected by wireless network conditions, which in return, motivates the need for a preprocessing stage that optimizes data delivery in an adaptive manner with respect to network dynamics. We present in this paper adaptive single and multiple modality data compression schemes based on deep learning approach, which consider acquired data characteristics and network dynamics for providing energy efficient data delivery. Results indicate that: 1) the proposed adaptive single modality compression scheme outperforms conventional compression methods by 13.24% and 43.75% reductions in distortion and processing time, respectively; 2) the proposed adaptive multiple modality compression further decreases the distortion by 3.71% and 72.37% when compared with the proposed single modality scheme and conventional methods through leveraging inter-modality correlations; and 3) adaptive multiple modality compression demonstrates its efficiency in terms of energy consumption, computational complexity, and responding to different network states. Hence, our approach is suitable for mobile health applications (mHealth), where the smart preprocessing of vital signs can enhance energy consumption, reduce storage, and cut down transmission delays to the mHealth cloud.
راعي المشروعThis work was supported by NPRP through the Qatar National Research Fund (a member of the Qatar Foundation) under Grant 7-684-1-127.
اللغةen
الناشرInstitute of Electrical and Electronics Engineers Inc.
الموضوعcompression
cross-layer optimization
deep learning
multiple modality data
WBASN
العنوانA Deep Learning Approach for Vital Signs Compression and Energy Efficient Delivery in mhealth Systems
النوعArticle
الصفحات33727-33739
رقم المجلد6


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