Hassan Ghasemzadeh’s research while affiliated with Washington State University and other places

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Publications (1)


Fig. 4. Example of Pareto front to minimize a two-dimensional objective problem. N = { <Model>, <K>, <Boolean> } T = { TRUE, FALSE, 2, 3,..., 25 } S = <Model> P = { I <Model> ::= [<K>, <Boolean>, <Boolean>,..., <Boolean>] # Till the total number of features F II <K> ::= 2|3|4...|25 III <Boolean> ::= TRUE|FALSE }
Fig. 6. Per each location: division of the different signal types found and the assignment of the compression ratios.
Fig. 9. Experimental monitoring node.
Toward Ultra-Low-Power Remote Health Monitoring: An Optimal and Adaptive Compressed Sensing Framework for Activity Recognition
  • Article
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June 2018

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151 Reads

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44 Citations

IEEE Transactions on Mobile Computing

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Hassan Ghasemzadeh

Activity recognition, as an important component of behavioral monitoring and intervention, has attracted enormous attention, especially in Mobile Cloud Computing (MCC) and Remote Health Monitoring (RHM) paradigms. While recently resource constrained wearable devices have been gaining popularity, their battery life is limited and constrained by the frequent wireless transmission of data to more computationally powerful back-ends. This paper proposes an ultra-low power activity recognition system using a novel adaptive compressed sensing technique that aims to minimize transmission costs. Coarse-grained on-body sensor localization and unsupervised clustering modules are devised to autonomously reconfigure the compressed sensing module for further power saving. We perform a thorough heuristic optimization using Grammatical Evolution (GE) to ensure minimal computation overhead of the proposed methodology. Our evaluation on a real-world dataset and a low power wearable sensing node demonstrates that our approach can reduce the energy consumption of the wireless data transmission up to 81.2% and 61.5%, with up to 60.6% and 35.0% overall power savings in comparison with baseline and a naive state-of-the-art approaches, respectively. These solutions lead to an average activity recognition accuracy of 89.0% only 4.8% less than the baseline accuracy-while having a negligible energy overhead of on-node computation.

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Citations (1)


... Different techniques are being developed that aim to improve energy efficiency and extend the battery life of wearable devices. For example, compressed sensing [46] allows the reduction of the sampling rate of a signal, which can then be transmitted using a compressed sparse representation and reconstructed with minimal loss compared to the original signal [47,48]. Another algorithm that can be used with time series data, such as motion and muscle data, and can improve energy efficiency is change point detection [49]. ...

Reference:

Tracking Upper Limb Motion via Wearable Solutions: Systematic Review of Research From 2011 to 2023
Toward Ultra-Low-Power Remote Health Monitoring: An Optimal and Adaptive Compressed Sensing Framework for Activity Recognition

IEEE Transactions on Mobile Computing