Inicio  /  Applied Sciences  /  Vol: 10 Par: 6 (2020)  /  Artículo
ARTÍCULO
TITULO

Estimation of Hand Motion from Piezoelectric Soft Sensor Using Deep Recurrent Network

Sung Hee Kim    
Yongchan Kwon    
KangGeon Kim and Youngsu Cha    

Resumen

Soft sensors are attracting significant attention in human?machine interaction due to their high flexibility and adaptability. However, estimating motion state from these sensors is difficult due to their nonlinearity and noise. In this paper, we propose a deep learning network for a smart glove system to predict the moving state of a piezoelectric soft sensor. We implemented the network using Long-Short Term Memory (LSTM) units and demonstrated its performance in a real-time system based on two experiments. The sensor?s moving state was estimated and the joint angles were calculated. Since we use moving state in the sensor offset calculation and the offset value is used to estimate the angle value, the accurate moving state estimation results in good performance for angle value estimation. The proposed network performed better than the conventional heuristic method in estimating the moving state. It was also confirmed that the calculated values successfully mimic the joint angles measured using a leap motion controller.

 Artículos similares

       
 
Liming Li, Sanming Song and Xisheng Feng    
In a typical underwater acoustic target detection mission, we have to estimate the target number (N), perform source separation when ??>1 N > 1 , and consequently predict the motion parameters such as fundamental frequency (F0) from separated noises for ... ver más

 
Vlad Andrei Ciubotariu, Maria Crina Radu, Eugen Herghelegiu, Valentin Zichil, Cosmin Constantin Grigoras and Elena Nechita    
Even though they initially appeared as a method of using waste from other production processes, tailored welded blanks (TWB) presented several advantages by combining materials with different characteristics. On the one hand, this study focuses on minimi... ver más
Revista: Applied Sciences

 
Khandakar M. Rashid and Joseph Louis    
Construction companies are increasingly utilizing sensing technologies to automatically record different steps of the construction process in detail for effective monitoring and control. This generates a significant amount of event data that can be used ... ver más
Revista: Algorithms

 
Stéphane Crépey, Noureddine Lehdili, Nisrine Madhar and Maud Thomas    
A major concern when dealing with financial time series involving a wide variety of market risk factors is the presence of anomalies. These induce a miscalibration of the models used to quantify and manage risk, resulting in potential erroneous risk meas... ver más
Revista: Algorithms

 
Rachid Addou, Mohamed Hanchane, Khalid Obda, Nir Y. Krakauer, Bouchta El Khazzan, Ridouane Kessabi and Hassan Achiban    
The lack of a complete and reliable data series often represents the main difficulty in carrying out climate studies. Diverse causes, such as human and instrumental errors, false and incomplete records, and the use of obsolete equipment in some meteorolo... ver más
Revista: Applied Sciences