Classification of Inter-Floor Noise Type/Position Via Convolutional Neural Network-Based Supervised Learning

Inter-floor noise, i.e., noise transmitted from one floor to another floor through walls or ceilings in an apartment building or an office of a multi-layered structure, causes serious social problems in South Korea. Notably, inaccurate identification of the noise type and position by human hearing i...

Full description

Bibliographic Details
Main Authors: Hwiyong Choi, Haesang Yang, Seungjun Lee, Woojae Seong
Format: Article
Language:English
Published: MDPI AG 2019-09-01
Series:Applied Sciences
Subjects:
Online Access:https://www.mdpi.com/2076-3417/9/18/3735
id doaj-62b617b0a6da4f358f79e055ad17df51
record_format Article
spelling doaj-62b617b0a6da4f358f79e055ad17df512020-11-25T01:18:50ZengMDPI AGApplied Sciences2076-34172019-09-01918373510.3390/app9183735app9183735Classification of Inter-Floor Noise Type/Position Via Convolutional Neural Network-Based Supervised LearningHwiyong Choi0Haesang Yang1Seungjun Lee2Woojae Seong3Department of Naval Architecture and Ocean Engineering, Seoul National University, Seoul 08826, KoreaDepartment of Naval Architecture and Ocean Engineering, Seoul National University, Seoul 08826, KoreaDepartment of Naval Architecture and Ocean Engineering, Seoul National University, Seoul 08826, KoreaDepartment of Naval Architecture and Ocean Engineering, Seoul National University, Seoul 08826, KoreaInter-floor noise, i.e., noise transmitted from one floor to another floor through walls or ceilings in an apartment building or an office of a multi-layered structure, causes serious social problems in South Korea. Notably, inaccurate identification of the noise type and position by human hearing intensifies the conflicts between residents of apartment buildings. In this study, we propose a robust approach using deep convolutional neural networks (CNNs) to learn and identify the type and position of inter-floor noise. Using a single mobile device, we collected nearly 2000 inter-floor noise events that contain 5 types of inter-floor noises generated at 9 different positions on three floors in a Seoul National University campus building. Based on pre-trained CNN models designed and evaluated separately for type and position classification, we achieved type and position classification accuracy of 99.5% and 95.3%, respectively in validation datasets. In addition, the robustness of noise type classification with the model was checked against a new test dataset. This new dataset was generated in the building and contains 2 types of inter-floor noises at 10 new positions. The approximate positions of inter-floor noises in the new dataset with respect to the learned positions are presented.https://www.mdpi.com/2076-3417/9/18/3735inter-floor noisesupervised learningsingle sensor acoustic featureconvolutional neural networkacoustic scene classification
collection DOAJ
language English
format Article
sources DOAJ
author Hwiyong Choi
Haesang Yang
Seungjun Lee
Woojae Seong
spellingShingle Hwiyong Choi
Haesang Yang
Seungjun Lee
Woojae Seong
Classification of Inter-Floor Noise Type/Position Via Convolutional Neural Network-Based Supervised Learning
Applied Sciences
inter-floor noise
supervised learning
single sensor acoustic feature
convolutional neural network
acoustic scene classification
author_facet Hwiyong Choi
Haesang Yang
Seungjun Lee
Woojae Seong
author_sort Hwiyong Choi
title Classification of Inter-Floor Noise Type/Position Via Convolutional Neural Network-Based Supervised Learning
title_short Classification of Inter-Floor Noise Type/Position Via Convolutional Neural Network-Based Supervised Learning
title_full Classification of Inter-Floor Noise Type/Position Via Convolutional Neural Network-Based Supervised Learning
title_fullStr Classification of Inter-Floor Noise Type/Position Via Convolutional Neural Network-Based Supervised Learning
title_full_unstemmed Classification of Inter-Floor Noise Type/Position Via Convolutional Neural Network-Based Supervised Learning
title_sort classification of inter-floor noise type/position via convolutional neural network-based supervised learning
publisher MDPI AG
series Applied Sciences
issn 2076-3417
publishDate 2019-09-01
description Inter-floor noise, i.e., noise transmitted from one floor to another floor through walls or ceilings in an apartment building or an office of a multi-layered structure, causes serious social problems in South Korea. Notably, inaccurate identification of the noise type and position by human hearing intensifies the conflicts between residents of apartment buildings. In this study, we propose a robust approach using deep convolutional neural networks (CNNs) to learn and identify the type and position of inter-floor noise. Using a single mobile device, we collected nearly 2000 inter-floor noise events that contain 5 types of inter-floor noises generated at 9 different positions on three floors in a Seoul National University campus building. Based on pre-trained CNN models designed and evaluated separately for type and position classification, we achieved type and position classification accuracy of 99.5% and 95.3%, respectively in validation datasets. In addition, the robustness of noise type classification with the model was checked against a new test dataset. This new dataset was generated in the building and contains 2 types of inter-floor noises at 10 new positions. The approximate positions of inter-floor noises in the new dataset with respect to the learned positions are presented.
topic inter-floor noise
supervised learning
single sensor acoustic feature
convolutional neural network
acoustic scene classification
url https://www.mdpi.com/2076-3417/9/18/3735
work_keys_str_mv AT hwiyongchoi classificationofinterfloornoisetypepositionviaconvolutionalneuralnetworkbasedsupervisedlearning
AT haesangyang classificationofinterfloornoisetypepositionviaconvolutionalneuralnetworkbasedsupervisedlearning
AT seungjunlee classificationofinterfloornoisetypepositionviaconvolutionalneuralnetworkbasedsupervisedlearning
AT woojaeseong classificationofinterfloornoisetypepositionviaconvolutionalneuralnetworkbasedsupervisedlearning
_version_ 1725140080208642048