Discrete Positioning Using UWB Channel Impulse Responses and Machine Learning

Author(s):  
Maximilian Stahlke ◽  
Sebastian Kram ◽  
Thorbjoern Mumme ◽  
Jochen Seitz
2018 ◽  
Vol 5 (4) ◽  
pp. 107
Author(s):  
Jamie Scanlan ◽  
Francis Li ◽  
Olga Umnova ◽  
Gyorgy Rakoczy ◽  
Nóra Lövey ◽  
...  

Osteoporosis is an asymptomatic bone condition that affects a large proportion of the elderly population around the world, resulting in increased bone fragility and increased risk of fracture. Previous studies had shown that the vibroacoustic response of bone can indicate the quality of the bone condition. Therefore, the aim of the authors’ project is to develop a new method to exploit this phenomenon to improve detection of osteoporosis in individuals. In this paper a method is described that uses a reflex hammer to exert testing stimuli on a patient’s tibia and an electronic stethoscope to acquire the impulse responses. The signals are processed as mel frequency cepstrum coefficients and passed through an artificial neural network to determine the likelihood of osteoporosis from the tibia’s impulse responses. Following some discussions of the mechanism and procedure, this paper details the signal acquisition using the stethoscope and the subsequent signal processing and the statistical machine learning algorithm. Pilot testing with 12 patients achieved over 80% sensitivity with a false positive rate below 30% and accuracies in the region of 70%. An extended dataset of 110 patients achieved an error rate of 30% with some room for improvement in the algorithm. By using common clinical apparatus and strategic machine learning, this method might be suitable as a large population screening test for the early diagnosis of osteoporosis, thus avoiding secondary complications.


2021 ◽  
Author(s):  
Damian Dziwis ◽  
Simon Zimmermann ◽  
Tim Lubeck ◽  
Johannes M. Arend ◽  
David Bau ◽  
...  

2019 ◽  
Vol 146 (4) ◽  
pp. 2961-2961
Author(s):  
Nicholas C. Durofchalk ◽  
Arslan Ali ◽  
Saibal Mukhopadhyay ◽  
Justin Romberg ◽  
Karim G. Sabra

2021 ◽  
Author(s):  
Minakshi Pradeep Atre ◽  
Shaila Apte

Music is the pulse of human lives and is an amazing tool to relieve and re-live. And when it comes to the signal processing, impulse is the pulse of the researchers. The work presented here is focused on impulse response modeling of noted produced by box shaped acoustic guitar. The impulse response is very fundamental behavior of any system. The music note is the convolution of the impulse response and the excitation signal of that guitar. The frequency of the generated music note follows the octave rule. The octave rule can be checked for impulse responses as well. If the excitation signal and impulse response are separated, then an impulse response of a single fret can be used to generate the impulse responses of other frets. Here the music notes are analyzed and synthesized on the basis of the plucking style and plucking expression of the guitar-player. If the impulse response of the musical instrument is known, the output music note can be synthesized in an unusual manner. Researchers have been able to estimate the impulse response by breaking the string of the guitar. Estimating the impulse response from the recorded music notes is possible using the methodology of cepstral domain window. By means of the Adaptive Cepstral Domain Window (ACDW) the author estimated the impulse response of guitar notes. The work has been further extended towards the classification of synthesized notes for plucking style and plucking expression using Neural Network and Machine Learning algorithms.


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