Urban Noise Computing for Event Discovery
Abstract
has picked up momentum after the introduction of Smart City
vision. Smart City initiative aims to improve the quality of life
of its citizens by building a strong and resilient framework for
the city. Noise pollution is one of the main problems affecting
citizens all over. Citizen science, when combined with Mobile
crowdsensing and Data mining can help researchers and town
planners to collect urban noise data at a massive spatio-temporal
scale, and analyse it to understand urban dynamics. This work is
an effort to use urban noise computing to detect anomalies and
interesting events happening in the city. The paper introduces
the readers to the basics of Urban noise computing. It covers a
comprehensive literature survey in the area of Urban noise computing and Anomaly detection. This work also includes problem
statement, problem modelling and partial implementation details.
Full Text:
PDFReferences
Ruge, Altakouri, Schrader, ”SoundOfTheCity - Continuous Noise Monitoring for a Healthy City”, IEEE International Conference on Pervasive
Computing and Communication, pp. 670-675, San Diego, CA, 2013
Berglund, ”Guidelines for Community Noise”, World Health Organization
meeting, 1999
Pune Municipal Corporation, ”Pune Municipal Corporation”,website:
http://www.punecorporation.org
Pune Municipal Corporation, ”Environmental Status Report (ESR) 2015-
”, website: http://www.punecorporation.org/informpdf/green
Cecaj, Mamei, ”Data fusion for city life event detection”, Journal of
Ambient Intelligence and Humanized Computing, Springer, 2016
Zheng, Zhang, Yu, ”Detecting Collective Anomalies from Multiple
Spatio-Temporal Datasets across Different Domains”, Proceedings of the
rd SIGSPATIAL International Conference on Advances in Geographic
Information Systems (GIS ’15). ACM, New York, NY, USA, , Article 2,
Pan, Zheng, Wilkie, ”Crowd Sensing of Traffic Anomalies based on
Human Mobility and Social Media”, Proceedings of the 21st ACM
SIGSPATIAL International Conference on Advances in Geographic Information Systems, NY, USA, 344-353, 2013
Zappatore, Longo, Bochicchio, ”Improving Urban Noise Monitoring
Opportunites via Mobile Crowd-Sensing”, First EAI International Summit
Smart City 360 - Springer June 2016
I.N. Athanasiadis et al., ”NoiseTube: Measuring and mapping noise
pollution with mobile phones”, Information Technologies in Environmental Engineering: Proceedings of the 4th International ICSC Symposium
Thessaloniki, Greece, May 28-29, 2009
Salamon, Jacoby, Bello, ”A Dataset and Taxonomy for Urban Sound
Research”, Proceedings of the 22nd ACM international conference on
Multimedia, Orlando, Florida, USA, 2014
Kanjo, ”NoiseSPY: A Real-Time Mobile Phone Platform for Urban
Noise Monitoring and Mapping”, Mobile Networks and Applications,
Springer, 2010
Central Pollution Control Board, ”THE NOISE POLLUTION (REGULATION AND CONTROL) RULES, 2000”
Bhattacharyya, Kim, Pal, ”A Comparative Study of Wireless Sensor
Networks and Their Routing Protocols”, Sensors 2010, 10, 10506-10523,
November 2010
Liu, Zheng, Liu, Liu, Zhu, ”Methods for Sensing Urban Noises”, MSRTR-2014-66, 2014
Guo et. al., ”Mobile Crowd Sensing and Computing: The Review
of an Emerging Human-Powered Sensing Paradigm”, ACM Computing
Surveys, Vol. 48, No. 1, Article 7, 2015
Hondt, Stevens, Jacobs, ”Participatory noise mapping works! An evaluation of participatory sensing as an alternative to standard techniques for
environmental monitoring”, Pervasive and Mobile Computing, Volume 9,
Issue 5, October 2013, Pages 681-694, ISSN 1574-1192
Rana, Chou, Bulusu, Kanhere, Hu, ”Ear-Phone: A Context-Aware Noise
Mapping using Smart Phones”, Volume 17, Part A, February 2015, Pages
-22, ISSN 1574-1192
Rana et. al., ”Ear-phone: An end-to-end participatory urban noise
mapping system”, In Proceedings of the 9th ACM/IEEE International
Conference on Information Processing in Sensor Networks, Stockholm,
Sweden, 105116, 2014
Krause et. al., ”Toward Community Sensing”, Information processing in
sensor networks Pages 481-492, 2008
Christin, ”Privacy in mobile participatory sensing: Current trends and
future challenges”, Journal of Systems and Software, Volume 116, June
, Pages 57-68, ISSN 0164-1212
Wang et. al., ”Sparse Mobile Crowdsensing: Challenges and Opportunities”, IEEE Communications Magazine August 2016
Yu Zheng et. al., ”Diagnosing New York City’s Noises with Ubiquitous
Data”, Proceedings of the 2014 ACM International Joint Conference on
Pervasive and Ubiquitous Computing, 2014
Zheng, Capra, Wolfson, Yang, ”Urban Computing: Concepts, Methodologies, and applications”, ACM Transactions on Intelligent Systems and
Technology, 5, 3, Article 38, 2014
Ganti et. al., ”Mobile Crowdsensing: Current State and Future Challenges”, IEEE Communications Magazine, vol. 49, no. 11, pp. 32-39,
November 2011
Varun Chandola, Arindam Banerjee, And Vipin Kumar, ”Anomaly
Detection: A Survey”, ACM Computing Survey, Volume 41, Article 15,
Manish Gupta, Jing Gao, Charu Aggarwal and Jiawei Han, ”Outlier Detection For Temporal Data: A Survey”, IEEE Transactions On Knowledge
And Data Engineering (Volume: 26, Issue: 9, pp. 2250-2267, Sept. 2014)
Wisniewski et. al., ”NoizCrowd: A Crowd-Based Data Gathering”, Mobile Web Information Systems: 10th International Conference, MobiWIS
, Paphos, Cyprus, August 26-29, 2013
Schweizer et. al. ”NoiseMap - Real-time participatory noise maps”,
Citiseerx : In Second International Workshop on Sensing Applications
on Mobile Phones, 2011
Marti et. al., ”Mobile Application for Noise Pollution Monitoring
through Gamification Techniques”, 11th International Conference, ICEC,
Bremen, Germany, September 26-29, 2012
Chawla, Zheng, Hu, ”Inferring the Root Cause in Road Traffic Anomalies”, In proceedings of IEEE 12th International Conference on Data
Mining, 2012, IEEE Computer Society, Washington, DC, USA, 141-150
Witay-angkurn et. al, ”Anomalous Event Detection on Large- Scale
GPS Data from Mobile Phones Using Hidden Markov Model and Cloud
Platform”, Proceedings of the 2013 ACM Conference on Pervasive and
Ubiquitous Computing Adjunct Publication, Zurich, Switzerland, 2013
Chen, Yang, Zhang, ”Sensing the Pulse of Urban Activity Centers
Leveraging Bike Sharing Open Data”, 2015 IEEE 12th Intl Conf on
Ubiquitous Intelligence and Computing and 2015 IEEE 12th Intl Conf
on Autonomic and Trusted Computing, Beijing, 2015, pp. 135-142
Hsieh et. al., ”What Makes New York So Noisy?: Reasoning Noise
Pollution by Mining Multimodal Geo-Social Big Data”, Proceedings
of the 23rd ACM International Conference on Multimedia, Brisbane,
Australia, 181-184, 2015
Refbacks
- There are currently no refbacks.
Copyright © IJETT, International Journal on Emerging Trends in Technology