Javascript must be enabled to continue!
Computation of Psycho-Acoustic Annoyance Using Deep Neural Networks
View through CrossRef
Psycho-acoustic parameters have been extensively used to evaluate the discomfort or pleasure produced by the sounds in our environment. In this context, wireless acoustic sensor networks (WASNs) can be an interesting solution for monitoring subjective annoyance in certain soundscapes, since they can be used to register the evolution of such parameters in time and space. Unfortunately, the calculation of the psycho-acoustic parameters involved in common annoyance models implies a significant computational cost, and makes difficult the acquisition and transmission of these parameters at the nodes. As a result, monitoring psycho-acoustic annoyance becomes an expensive and inefficient task. This paper proposes the use of a deep convolutional neural network (CNN) trained on a large urban sound dataset capable of efficiently predicting psycho-acoustic annoyance from raw audio signals continuously. We evaluate the proposed regression model and compare the resulting computation times with the ones obtained by the conventional direct calculation approach. The results confirm that the proposed model based on CNN achieves high precision in predicting psycho-acoustic annoyance, predicting annoyance values with an average quadratic error of around 3%. It also achieves a very significant reduction in processing time, which is up to 300 times faster than direct calculation, making CNN designed a clear exponent to work in IoT devices.
Title: Computation of Psycho-Acoustic Annoyance Using Deep Neural Networks
Description:
Psycho-acoustic parameters have been extensively used to evaluate the discomfort or pleasure produced by the sounds in our environment.
In this context, wireless acoustic sensor networks (WASNs) can be an interesting solution for monitoring subjective annoyance in certain soundscapes, since they can be used to register the evolution of such parameters in time and space.
Unfortunately, the calculation of the psycho-acoustic parameters involved in common annoyance models implies a significant computational cost, and makes difficult the acquisition and transmission of these parameters at the nodes.
As a result, monitoring psycho-acoustic annoyance becomes an expensive and inefficient task.
This paper proposes the use of a deep convolutional neural network (CNN) trained on a large urban sound dataset capable of efficiently predicting psycho-acoustic annoyance from raw audio signals continuously.
We evaluate the proposed regression model and compare the resulting computation times with the ones obtained by the conventional direct calculation approach.
The results confirm that the proposed model based on CNN achieves high precision in predicting psycho-acoustic annoyance, predicting annoyance values with an average quadratic error of around 3%.
It also achieves a very significant reduction in processing time, which is up to 300 times faster than direct calculation, making CNN designed a clear exponent to work in IoT devices.
Related Results
Psychoacoustic Parameters and Variations in Annoyance Perception: An EEG-based Study
Psychoacoustic Parameters and Variations in Annoyance Perception: An EEG-based Study
Studies have indicated that prolonged exposure to unwanted acoustic
stimuli can trigger noise annoyance. Large engines are prevalent in
industrial and traffic settings, but their h...
Subjective audiometric measures in individuals with repeated acoustic trauma in the combat zone
Subjective audiometric measures in individuals with repeated acoustic trauma in the combat zone
Intense sound exposure that exceeds the pain threshold of human auditory sensitivity, known as acoustic trauma, causes significant and extensive changes in the auditory system. Thr...
Comparing Annoyance Potency Assessments for Odors from Different Livestock Animals
Comparing Annoyance Potency Assessments for Odors from Different Livestock Animals
(1) Background: When it comes to estimating the annoyance potency of odors, European countries relate to different guidelines. In a previous study we compared complaint rates for d...
Fuzzy Chaotic Neural Networks
Fuzzy Chaotic Neural Networks
An understanding of the human brain’s local function has improved in recent years. But the cognition of human brain’s working process as a whole is still obscure. Both fuzzy logic ...
On the role of network dynamics for information processing in artificial and biological neural networks
On the role of network dynamics for information processing in artificial and biological neural networks
Understanding how interactions in complex systems give rise to various collective behaviours has been of interest for researchers across a wide range of fields. However, despite ma...
Sustainable Soundscape Monitoring of Modified Psycho-Acoustic Annoyance Model With Edge Computing for 5G IoT Systems
Sustainable Soundscape Monitoring of Modified Psycho-Acoustic Annoyance Model With Edge Computing for 5G IoT Systems
Next Generation IoT systems will allow sustainable performance in long-term monitoring systems. This sustainability concept is applicable to soundscape description, as it allows mo...
Noise Annoyance Produced by Commercial Vehicles Transit on Rumble Strips
Noise Annoyance Produced by Commercial Vehicles Transit on Rumble Strips
This paper reports on research examining the extent of noise annoyance affecting residents within the vicinity of installation of two types of transverse rumble strips (TRS), namel...
Psychosocial distress, perceived need and utilization of psycho- social support services in patients in the early phase after the first cancer diagnosis
Psychosocial distress, perceived need and utilization of psycho- social support services in patients in the early phase after the first cancer diagnosis
Abstract
Purpose
Due to the growing number of new oncological diagnosis and the accompanying psychosocial burden, needs-based psycho-oncological ...

