Pedestrians in the Smart City

Dmitry Namiot, Vasily Kupriyanovsky, Oleg Karasev, Sergey Sinyagov, Andrey Dobrynin

Abstract


In this article, we look at tracking movements of pedestrians in Smart Cities. A mobility (Smart Mobility) is a major component of what is called Smart City. At the moment, there are changes in urban planning paradigms from cars to pedestrians and bicycles. The more we (who live in cities) walk, the better the city in all respects. Walking in the city is not only health benefits, but also a lot of economic benefits for developers, employers and retailers, the lowest carbon emissions, and minimal environmental pollution. Development of pedestrian-oriented city has a lot of different aspects. In this paper, we stop on the issues of tracking the movement of pedestrians. The data collected during this process will play a role of metric in future development.

Full Text:

PDF (Russian)

References


Namiot D. E., Kuprijanovskij V. P., Sinjagov S. A. Infokommunikacionnye servisy v umnom gorode //International Journal of Open Information Technologies. – 2016. – T. 4. – #. 4.-S.1-9.

Kuprijanovskij V. P. i dr. Umnaja policija v umnom gorode //International Journal of Open Information Technologies. – 2016. – T. 4. – #. 3. - S.21-31.

Kuprijanovskij V. P. i dr. Cifrovaja jekonomika - «Umnyj sposob rabotat'» //International Journal of Open Information Technologies. – 2016. – T. 4. – #. 2. – S.26-33.

Kuprijanovskij V. P. i dr. Umnye reshenija cifrovoj jekonomiki dlja bor'by s pozharami //International Journal of Open Information Technologies. – 2016. – T. 4. – #. 3. – S. 32-37.

Sustainable Urban Mobility https://eu-smartcities.eu/content/sustainable-urban-mobility-0 Retrieved: Aug, 2016

ARUP - URBAN MOBILITY IN THE SMART CITY AGE. SMART CITIES CORNERSTONE SERIES, 2016

Cities Alive Towards a walking world. ARUP 2016.

Volkov A. A., Namiot D. E., Shneps-Shneppe M. A. O zadachah sozdanija jeffektivnoj infrastruktury sredy obitanija //International Journal of Open Information Technologies. – 2013. – T. 1. – #. 7. – S. 1-10.

CITIES, SMART. "Trace analysis and mining for smart cities: issues, methods, and applications." IEEE Communications Magazine 121 (2013).

Opiela, Kenneth S., Snehamay Khasnabis, and Tapan K. Datta. "Determination of the characteristics of bicycle traffic at urban intersections." Transportation Research Record 743 (1980): 30-38.

Zhang, Jun, et al. "Comparative analysis of pedestrian, bicycle and car traffic moving in circuits." Procedia-Social and Behavioral Sciences 104 (2013): 1130-1138.

Hancke, Gerhard P., and Gerhard P. Hancke Jr. "The role of advanced sensing in smart cities." Sensors 13.1 (2012): 393-425.

Taylor, Nicholas K., et al. "Congestrian: monitoring pedestrian traffic and congestion." Proceedings of the 2013 ACM conference on Pervasive and ubiquitous computing adjunct publication. ACM, 2013.

Caceres, Noelia, et al. "Traffic flow estimation models using cellular phone data." IEEE Transactions on Intelligent Transportation Systems 13.3 (2012): 1430-1441.

Derendyaev, Alexander. "Traffic Speed Estimation By Mobile Operator Data." (2011).

Tracking Urban Mobility http://googlepolicyeurope.blogspot.ru/2015/11/tackling-urban-mobility-with-technology.html Retrieved: Aug, 2016

Google Urban Lab https://www.sidewalklabs.com/ Retrieved: Aug, 2016

FLOW http://www.flowmobility.io/ Retrieved: Aug, 2016

Smart City Bicycle and Pedestrian Counting http://thinkingcities.com/smart-city-bicycle-and-pedestrian-counting-technology-released/ Retrieved: Aug, 2016

Vimoc http://vimoc.com/product-2/ Retrieved: Aug, 2016

Axis People Counter http://www.axis.com/dk/en/solutions-by-application/people-counting Retrieved: Aug, 2016

True View People Counter http://www.cognimatics.com/Products/TrueView-People-Counter Retrieved: Aug, 2016

IVA 6.10 Intelligent Video Analysis http://resource.boschsecurity.com/documents/DS_IVA_6.10_Data_sheet_enUS_19245749387.pdf Retrieved: Aug, 2016

Heikkilä, Janne, and Olli Silvén. "A real-time system for monitoring of cyclists and pedestrians." Image and Vision Computing 22.7 (2004): 563-570.

Ponte, G., et al. "Using specialised cyclist detection software to count cyclists and determine cyclist travel speed from video." Australasian Road Safety Research Policing Education Conference, 2014, Melbourne, Victoria, Australia. 2014.

Somasundaram, Guruprasad, Vassilios Morellas, and Nikolaos Papanikolopoulos. "Deployment of Practical Methods for Counting Bicycle and Pedestrian Use of a Transportation Facility." (2012).

Masoud, Osama, and Nikolaos P. Papanikolopoulos. "A novel method for tracking and counting pedestrians in real-time using a single camera." IEEE transactions on vehicular technology 50.5 (2001): 1267-1278.

Mizushima, M. I. K. I., et al. "Counting pedestrians passing through a line in video sequences based on optical flow extraction." Proc. CSECS (2013): 129-136.

Tang, Nick C., et al. "Cross-camera knowledge transfer for multiview people counting." IEEE Transactions on Image Processing 24.1 (2015): 80-93.

Placemeter http://www.placemeter.com/how-it-works Retrieved: Aug, 2016

BlueScan http://www.bluescan.org/english/counting/people-counting/index.php Retrieved: Aug, 2016

Bike counter http://metrocount.com/shop/traffic-counters/40-mc5720-advanced-bicycle-counter.html Retrieved: Aug, 2016

HI-TRAC CMU - Bicycle and Pedestrian Monitoring http://www.jamartech.com/cmu.html Retrieved: Aug, 2016

RadioBeam http://www.chambers-electronics.com/radiobeam-outdoor-people-counter-(rbx-eb).html Retrieved: Aug, 2016

Sensors movement http://wongm.com/2012/10/city-of-melbourne-pedestrian-counters/ Retrieved: Aug, 2016

Beonic http://beonic.com/ Retrieved: Aug, 2016

Bu, Fanping, et al. "Estimating pedestrian accident exposure: automated pedestrian counting devices report." Safe Transportation Research & Education Center (2007).

Fujii, Shuto, et al. "Pedestrian counting with grid-based binary sensors based on Monte Carlo method." SpringerPlus 3.1 (2014): 1.

Lindsey, Greg, et al. "The Minnesota Bicycle and Pedestrian Counting Initiative: Methodologies for Non-motorized Traffic Monitoring." (2013).

Namiot, Dmitry, and Manfred Sneps-Sneppe. "Geofence and network proximity." Internet of Things, Smart Spaces, and Next Generation Networking. Springer Berlin Heidelberg, 2013. 117-127.

Sneps-Sneppe M., Namiot D. Spotique: A new approach to local messaging //International Conference on Wired/Wireless Internet Communication. – Springer Berlin Heidelberg, 2013. – S. 192-203.

Smartphone, Cellular, Mobile and Hand Phone Detection http://www.libelium.com/products/meshlium/smartphone-detection/

Retrieved: Aug, 2016

MIT Hyman Dynamics Lab http://hd.media.mit.edu/ Retrieved: Aug, 2016

Neznanov I. V., Namiot D. E. Kontrol' transportnyh marshrutov s pomoshh'ju mobil'nyh telefonov //International Journal of Open Information Technologies. – 2015. – T. 3. – #. 8. – S. 30-39.

Namiot D., Sneps-Sneppe M. On Open Source Mobile Sensing //International Conference on Next Generation Wired/Wireless Networking. – Springer International Publishing, 2014. – S. 82-94.

Grossman, David A., and Ophir Frieder. Information retrieval: Algorithms and heuristics. Vol. 15. Springer Science & Business Media, 2012.

Akbari, Mohammad, et al. "From Tweets to Wellness: Wellness Event Detection from Twitter Streams." Thirtieth AAAI Conference on Artificial Intelligence. 2016

Zhou, Deyu, Liangyu Chen, and Yulan He. "An Unsupervised Framework of Exploring Events on Twitter: Filtering, Extraction and Categorization." AAAI. 2015.

Zhu, Zack, et al. "Human activity recognition using social media data." Proceedings of the 12th International Conference on Mobile and Ubiquitous Multimedia. ACM, 2013.

Daggitt, Matthew L., et al. "Tracking urban activity growth globally with big location data." Royal Society open science 3.4 (2016): 150688.

Kuo, Yin-Hsi, et al. "Discovering the city by mining diverse and multimodal data streams." Proceedings of the 22nd ACM international conference on Multimedia. ACM, 2014.


Refbacks

  • There are currently no refbacks.


Abava  Кибербезопасность MoNeTec 2024

ISSN: 2307-8162