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Hyduke Noshadi

Hyduke Noshadi

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    Behavior-Oriented Data Resource Management in Medical Sensing Systems
    Foad Dabiri
    Saro Meguerdichian
    Miodrag Potkonjak
    Majid Sarrafzadeh
    ACM Transactions on Sensor Networks (TOSN), vol. 9 (2013), 12:1-12:26
    Preview abstract Wearable sensing systems have recently enabled a variety of medical monitoring and diagnostic applications in wireless health. The need for multiple sensors and constant monitoring leads these systems to be power hungry and expensive with short operating lifetimes. We introduce a novel methodology that takes advantage of contextual and semantic properties in human behavior to enable efficient design and optimization of such systems from the data and information point of view. This, in turn, directly influences the wireless communication and local processing power consumption. We exploit intrinsic space and temporal correlations between sensor data while considering both user and system contextual behavior. Our goal is to select a small subset of sensors that accurately capture and/or predict all possible signals of a fully instrumented wearable sensing system. Our approach leverages novel modeling, partitioning, and behavioral optimization, which consists of signal characterization, segmentation and time shifting, mutual signal prediction, and a simultaneous minimization composed of subset sensor selection and opportunistic sampling. We demonstrate the effectiveness of the technique on an insole instrumented with 99 pressure sensors placed in each shoe, which cover the bottom of the entire foot, resulting in energy reduction of 72% to 97% for error rates of 5% to 17.5%. View details
    Behavioural reconfigurable and adaptive data reduction in body sensor networks
    Foad Dabiri
    Majid Sarrafzadeh
    International Journal of Autonomous and Adaptive Communications Systems, vol. 6 (2013), pp. 207-224
    Preview
    HERMES: Mobile system for instability analysis and balance assessment
    Foad Dabiri
    Shaun Ahmadian
    Navid Amini
    Majid Sarrafzadeh
    ACM Transactions on Embedded Computing Systems (TECS), vol. 12 (2013), 57:1-57:24
    Preview abstract We introduce Hermes, a lightweight smart shoe and its supporting infrastructure aimed at extending gait and instability analysis and human instability/balance monitoring outside of a laboratory environment. We aimed to create a scientific tool capable of high-level measures, by combining embedded sensing, signal processing and modeling techniques. Hermes monitors walking behavior and uses an instability assessment model to generate quantitative value with episodes of activity identified by physician, researchers or investigators as important. The underlying instability assessment model incorporates variability and correlation of features extracted during ambulation that have been identified by geriatric motion study experts as precursor to instability, balance abnormality and possible fall risk. Hermes provides a mobile, affordable and long-term instability analysis and detection system that is customizable to individual users, and is context-aware, with the capability of being guided by experts. Our experiments demonstrate the feasibility of our model and the complimentary role our system can play by providing long-term monitoring of patients outside a hospital or clinical setting at a reduced cost, with greater user convenience, compliance and inference capabilities that meet the physician's or investigator's needs. View details
    Semantics-driven sensor configuration for energy reduction in medical sensor networks
    Saro Meguerdichian
    Miodrag Potkonjak
    Proceedings of the 2012 ACM/IEEE international symposium on Low power electronics and design, ACM, pp. 303-308
    Preview abstract Traditional optimization methods for large multisensory networks often use sensor array reduction and sampling techniques that attempt to reduce energy while retaining full predictability of the raw sensed data. For systems such as medical sensor networks, raw data prediction is unnecessary, rather, only relevant semantics derived from the raw data are essential. We present a new method for sensor fusion, array reduction, and subsampling that reduces both energy and cost through semantics-driven system configuration. Using our method, we reduce the energy requirements of a medical shoe by a factor of 17.9 over the original system configuration while maintaining semantic relevance. View details
    Preview abstract We present a new method for spatiotemporal assignment and scheduling of energy harvesters on a medical shoe tasked with measuring gait diagnostics. While prior work exists on the application of dielectric elastomers (DEs) for energy scavenging on shoes, current literature does not address the issues of placement and timing of these harvesters, nor does it address integration into existing sensing systems. We solve these issues and present a self-sustaining medical shoe that harvests energy from human ambulation while simultaneously measuring gait characteristics most relevant to medical diagnosis. View details
    Joint consideration of energy-efficiency and coverage-preservation in microsensor networks
    Navid Amini
    Alireza Vahdatpour
    Foad Dabiri
    Majid Sarrafzadeh
    Wireless Communications & Mobile Computing, vol. 11 (2011), pp. 707-722
    Preview abstract This paper presents an energy-efficient and coverage-preserving communication protocol which distributes a uniform energy load to the sensors in a wireless microsensor network. This protocol, called Distance-based Segmentation (DBS), is a cluster-based protocol that divides the entire network into equal-area segments and applies different clustering policies to each segment to (1) reduce total energy dissipation and (2) balance the energy load among the sensors. Therefore, it prolongs the lifetime of the network and improves the sensing coverage. Moreover, the proposed routing protocol does not need any centralized support from a certain node which is at odds with aiming to establish a scalable communication protocol. Results from extensive simulations on two different network configurations show that by lowering the number of wasteful transmissions in the network, the DBS can achieve as much as a 20% reduction in total dissipated energy as compared with current cluster-based protocols. In addition, this protocol is able to distribute energy load more evenly among the sensors in the network. Hence, it yields up to a 66% increase in the useful network lifetime. According to the simulation results, the sensing coverage degradation of the DBS is considerably slower than that of the other cluster-based protocols. View details
    Semantic Multimodal Compression for Wearable sensing Systems
    Saro Meguerdichian
    Foad Dabiri
    Miodrag Potkonjak
    In Proceedings of the 9th Annual IEEE Conference on Sensors, IEEE (2010), pp. 1149-1453
    Preview abstract Wearable sensing systems (WSS's) are emerging as an important class of distributed embedded systems in application domains ranging from medical to military. Such systems can be expensive and power hungry due to their multi sensor implementations that require constant use, yet by nature they demand low-cost and low-power implementations. Semantic multimodal compression (SMC) mitigates these metrics in terms of data size by leveraging the natural tendency of signals in many types of embedded sensing systems to be composed of phases. In our driving example of a medical shoe with an insole lined with pressure sensors, we find that the natural airborne, landing, and take-off segments have sharply different and repetitive properties. SMC models and compresses each segment independently, selecting the best compression scheme for each segment and thus reducing total transmission energy. View details
    Energy Optimization in Wireless Medical Systems Using Physiological Behavior
    Foad Dabiri
    Saro Meguerdichian
    Miodrag Potkonjak
    Majid Sarrafzadeh
    In Proceedings of the ACM, BMES conference of Wireless Health, ACM (2010), pp. 128-136
    Preview abstract Wearable sensing systems are becoming widely used for a variety of applications, including sports, entertainment, and military. These systems have recently enabled a variety of medical monitoring and diagnostic applications in Wireless Health. The need for multiple sensors and constant monitoring lead these systems to be power hungry and expensive, with short operating lifetimes. In this paper, we introduce a novel methodology that takes advantage of the influence of human behavior on signal properties and reduces those three metrics from the data size point of view. This, in turn, directly influences the wireless communication and local processing power consumption. We exploit intrinsic space and temporal correlations between sensor data while considering both user and system behavior. Our goal is to select a small subset of sensors to accurately capture and/or predict all possible signals of a fully instrumented wearable sensing system. Our approach leverages novel modeling, partitioning, and behavioral optimization, which consists of signal characterization, segmentation and time shifting, mutual signal prediction, and subset sensor selection. We demonstrate the effectiveness of the technique on an insole instrumented with 99 pressure sensors placed in each shoe, which cover the bottom of the entire foot, resulting in energy reduction of 56% to 96% for error rates of 5% to 17.5%. View details
    Remote Medical Monitoring Through Vehicular Ad Hoc Network
    Eugenio Giordano
    Hagop Hagopian
    Giovanni Pau
    Mario Gerla
    Majid Sarrafzadeh
    IEEE 68th Vehicular Technology Conference (VTC), 2008., IEEE, pp. 1-5
    Preview abstract Several diseases and medical conditions require constant monitoring of physiological signals and vital signs on daily bases, such as diabetics, hypertension and etc. In order to make these patients capable of living their daily life it is necessary to provide a platform and infrastructure that allows the constant collection of physiological data even when the patient is not inside of the coverage area. The data must be rapidly "transported" to care givers or to the designated medical enterprise. The problem is particularly severe in case of emergencies (e.g. natural disasters or hostile attacks) when the communications infrastructure (e.g. cellular telephony, WiFi public access, etc) has failed or is totally congested. In this paper we present an evaluation of of the vehicular ad-hoc networks (VANET) as an alternate method of collecting patient pre-recorded physiological data and at the same time reconfiguring patient medical wearable body vests to select the data specifically requested by the physicians. Another important use of vehicular collection of medical data from body vests is prompted by the need to correlate pedestrian reaction to vehicular traffic hazards such as chemical and noise pollution and traffic congestion. The vehicles collect noise, chemical and traffic samples and can directly correlate with the "stress level" of volunteers. View details
    Electronic orthotics shoe: preventing ulceration in diabetic patients
    Foad Dabiri
    Alireza Vahdatpour
    Hagop Hagopian
    Majid Sarrafzadeh
    In Proceedings of the 30th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC’08), IEEE (2010), pp. 771-775
    A Telehealth Architecture for Networked Embedded Systems: A Case Study in In Vivo Health Monitoring
    Foad Dabiri
    Tammara Massey
    Hagop Hagopian
    C.K. Lin
    R, Tran
    Jacob Schmidt
    Majid Sarrafzadeh
    Information Technology in Biomedicine, IEEE Transactions on, vol. 13 (2009), pp. 351 - 359
    Ubiquitous personal assistive system for neuropathy
    Foad Dabiri
    Alireza Vahdatpour
    Hagop Hagopian
    Majid Sarrafzadeh
    Proceedings of the 2nd International Workshop on Systems and Networking Support for Health Care and Assisted Living Environments, ACM (2008), 17:1-17:6
    Constant Approximation Algorithm for MST in Resource Constrained Wireless Sensor Networks
    Foad Dabiri
    Alireza Vahdatpour
    Majid Sarrafzadeh
    In Proceedings of the 17th International Conference on Computer Communications and Networks (ICCCN’08) (2008)
    Adaptive Medical Feature Extraction for Resource Constrained Distributed Embedded Systems
    Roozbeh Jafari
    Majid Sarrafzadeh
    Soheil Ghiasi
    Fourth Annual IEEE International Conference on Pervasive Computing and Communications Workshops. PerCom Workshops 2006, IEEE Computer Society, pp. 511 - 517
    Adaptive Electrocardiogram Feature Extraction on Distributed Embedded Systems
    Roozbeh Jafari
    Soheil Ghiasi
    Majid Sarrafzadeh
    IEEE Transactions on Parallel and Distributed Systems, vol. 17 (2006), pp. 797 - 807
    Wireless sensor networks for health monitoring
    Roozbeh Jafari
    Andre Encarnacao
    Azad Zahoory
    Foad Dabiri
    Majid Sarrafzadeh
    The 2nd ACM/IEEE International Conference on Mobile and Ubiquitous Systems, IEEE Computer Society (2005), pp. 479-481