An Efficient Design of a Machine Learning-Based Elderly Fall Detector

Author(s):  
L. P. Nguyen ◽  
M. Saleh ◽  
R. Le Bouquin Jeannès
2021 ◽  
Vol 17 (4) ◽  
pp. 1-19
Author(s):  
Mahmoud Masadeh ◽  
Yassmeen Elderhalli ◽  
Osman Hasan ◽  
Sofiene Tahar

Machine learning is widely used these days to extract meaningful information out of the Zettabytes of sensors data collected daily. All applications require analyzing and understanding the data to identify trends, e.g., surveillance, exhibit some error tolerance. Approximate computing has emerged as an energy-efficient design paradigm aiming to take advantage of the intrinsic error resilience in a wide set of error-tolerant applications. Thus, inexact results could reduce power consumption, delay, area, and execution time. To increase the energy-efficiency of machine learning on FPGA, we consider approximation at the hardware level, e.g., approximate multipliers. However, errors in approximate computing heavily depend on the application, the applied inputs, and user preferences. However, dynamic partial reconfiguration has been introduced, as a key differentiating capability in recent FPGAs, to significantly reduce design area, power consumption, and reconfiguration time by adaptively changing a selective part of the FPGA design without interrupting the remaining system. Thus, integrating “Dynamic Partial Reconfiguration” (DPR) with “Approximate Computing” (AC) will significantly ameliorate the efficiency of FPGA-based design approximation. In this article, we propose hardware-efficient quality-controlled approximate accelerators, which are suitable to be implemented in FPGA-based machine learning algorithms as well as any error-resilient applications. Experimental results using three case studies of image blending, audio blending, and image filtering applications demonstrate that the proposed adaptive approximate accelerator satisfies the required quality with an accuracy of 81.82%, 80.4%, and 89.4%, respectively. On average, the partial bitstream was found to be 28.6 smaller than the full bitstream .


2014 ◽  
Vol 627 ◽  
pp. 97-100 ◽  
Author(s):  
R. Fernandez-Martinez ◽  
R. Hernandez ◽  
J. Ibarretxe ◽  
Pello Jimbert ◽  
M. Iturrondobeitia ◽  
...  

Mastering the relationship between the final mechanical properties of carbon black reinforced rubber blends and their composition is a key advantage for an efficient design of the composition of the blend. In this work, some models to predict three relevant physical attributes of rubber blends — modulus at 100% deformation, Shore A hardness, and tensile strength — are built by machine learning methods and subsequently evaluated. Linear regression, artificial neural networks, support vector machine, and regression trees are used to generate the models. The number of used samples and the values for the input variables is determined by a Taguchi design of experiments, and prior to the modeling the uncertainty of the experimental data was analyzed.


2014 ◽  
Vol 15 (1) ◽  
pp. 191 ◽  
Author(s):  
Mikhail Zaslavskiy ◽  
Claudia Bertonati ◽  
Philippe Duchateau ◽  
Aymeric Duclert ◽  
George H Silva

2020 ◽  
Vol 25 (5) ◽  
pp. 1-27
Author(s):  
Yong Hu ◽  
Marcel Mettler ◽  
Daniel Mueller-Gritschneder ◽  
Thomas Wild ◽  
Andreas Herkersdorf ◽  
...  

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