Sensing Gestures for Business Intelligence
David Bell, Nikhil Makwana, Chidozie Mgbemena
2014
Abstract
The combination of sensor data with analytic techniques is growing in popularity for both practitioners and researchers as an Internet of Things (IoT) offers new opportunities and insights. Organisations are trying to use sensor technologies to derive intelligence and gain a competitive edge in their industries. Obtaining data from sensors might not pose too much of a problem, however subsequent utilisation in meeting an organisation’s decision making can be more problematic. Understanding how sensor data analytics can be undertaken is the first step to deriving business intelligence from front line retail environments. This paper explores the use of the Microsoft Kinect sensor to provide intelligence by identifying and sensing gestures to better understand customer behaviour in the retail space.
References
- Advanced Performance Institute, 2013. Business Intelligence (BI) - What is BI? Training, examples & case studies: [Online] Available at: http://www.ap-institute.com/ Business Intelligence.html (Accessed 25 July 2013).
- Amma, C., Gehrig, D. & Schultz, T., 2010. Airwriting Recognition using Wearable Motion Sensors. ACM, pp. 10-11.
- Benning, M. et al., 2007. A Comparative Study on Wearable Sensors for Signal Processing on the North Indian Tabla. Communications, Computers and Signal Processing.
- Burke, R. R., 2002. Technology and the customer interface: what consumers want in the physical and virtual store. Journal of the Academy of Marketing Science.
- Cao, L., 2008. Behavior Informatics and Analytics: Let Behavior Talk. Data Mining Workshops.
- Computing, 2012. Case Study: Business intelligence at Carphone Warehouse - 23 Aug 2012 - Computing News:. (Online) Available at: http:// www.computing.co.uk/ctg/news/2200696/case-studybusiness-intelligence-at-carphone-warehouse (Accessed 02 September 2013).
- Doody, P. & Shields, A., 2012. Mining Network Relationships in the Internet of Things. ACM.
- Feng, Y. & Liu, Y., 2010. Design of the Low-Cost Business Intelligence System Based on Multi-agent. Information Science and Management Engineering (ISME).
- Hailo, 2013. HAILO. The Black Cab App:. (Online) Available at: https://www.hailocab.com/ (Accessed 1 September 2013).
- Hester, T. et al., 2006. Using Wearable Sensors to Measure Motor Abilities following Stroke. Wearable and Implantable Body Sensor Networks.
- Hewlett-Packard, 2013. From the Internet of Things, a business intelligence bounty - HP Software Discover Performance:. (Online) Available at: http:// h30458.www3.hp.com/us/us/discover-performance/infomanagement-leaders/2013/apr/from-the-internet-ofthings--a-business-intelligence-bounty.html (Accessed 1 September 2013).
- Hondori, H. M., Khademi, M. & Lopes, C. V., 2012. Monitoring Intake Gestures using Sensor Fusion (Microsoft Kinect and Inertial Sensors) for Smart Home Tele-Rehab Setting. IEEE.
- Ipsos, 2013. Why count customers? | Experts in retail footfall counting | IPSOS Retail Performance:. (Online) Available at: http://www.ipsos-retailperformance.com/ WhatWeDo/WhyCountCustomers (Accessed 01 September 2013).
- Krneta, D., Radosav, D. & Radulovic, B., 2008. Realization business intelligence in commerce using Microsoft Business Intelligence. Intelligent Systems and Informatics, pp. 1-6.
- Leonidas, P., Drakoulis, D., Dres, D. & Smailis, C., 2012. PLATO - Intelligent Middleware Platform for the Collection, Analysis, Processing of Data from Multiple Heterogeneous Sensor Systems and Application Development for Business Intelligence. Informatics (PCI).
- Luhn, H. P., 1958. A Business Intelligence System. IBM Journal of Research and Development, Volume 2, pp. 314-319.
- March, S. T. & Smith, G. F., 1995. Design and natural science research on information technology. Decis. Support Syst., Volume 15, pp. 251-266.
- Martin, A., Lakshmi, M. & Prasanna Venkatesan, V., 2012. An analysis on business intelligence models to improve business performance. Advances in Engineering, Science and Management (ICAESM), pp. 503-508.
- McRobbie, G., Talati, S. & Watt, K., 2012. Developing business intelligence for Small and Medium Sized Enterprises using mobile technology. Information Society (i-Society).
- Microsoft Corporation, 2013. Product Features | Microsoft Kinect for Windows:. (Online) Available at: http://www.microsoft.com/enus/kinectforwindows/develop/sdk-eula.aspx (Accessed 20 July 2013).
- Microstrategy, 2013. MicroStrategy-Mobile-BI-RetailApps.pdf:. (Online) Available at: https:// www.microstrategy.com/Strategy/media/downloads/pr oducts/MicroStrategy-Mobile-BI-Retail-Apps.pdf.
- O'Keeffe, D. T., Gates, D. H. & Bonato, P., 2007. A Wearable Pelvic Sensor Design for Drop Foot Treatment in Post-Stroke Patients. Engineering in Medicine and Biology Society.
- PhoneDog Media, 2013. How important are display models in wireless retail stores? | PhoneDog:. (Online) Available at: http://www.phonedog.com/2013/ 04/23/how-important-are-display-models-in-wirelessretail-stores/ (Accessed 02 September 2013).
- Peffers, K., Tuunanen, T., Rothenberger, M. A. & Chatterjee, S., 2007. A Design Science Research Methodology for Information Systems Research. J. Manage. Inf. Syst., Volume 24, pp. 45-77.
- Ren, Z., Yuan, J., Meng, J. & Zhang, Z., 2013. Robust PartBased Hand Gesture Recognition Using Kinect Sensor. Multimedia, IEEE Transactions on, Volume 15, pp. 1110-1120.
- Ridgian, 2011. RidgianBarclaysYourPeopleCS.pdf:. (Online) Available at: http://www.ridgian.co.uk/downloads/ RidgianBarclaysYourPeopleCS.pdf (Accessed 03 September 2013).
- Tvrdikova, M., 2007. Support of Decision Making by Business Intelligence Tools. Computer Information Systems and Industrial Management Applications, 2007.
- Vassiliadis, P., 1998. Modeling multidimensional databases, cubes and cube operations. Scientific and Statistical Database Management.
- Vera-Baquero, A., Colomo-Palacios, R. & Molloy, O., 2013. Business process analytics using a big data approach. IT Professional.
- Wang, C. & Chen, H., 2012. From data to knowledge to action: A taxi business intelligence system. s.l., Information Fusion (FUSION).
- Xiao, J. et al., 2012. FIMD: Fine-grained Device-free Motion Detection. Parallel and Distributed Systems (ICPADS), pp. 229-235.
- Xu, L. et al., 2007. Research on Business Intelligence in enterprise computing environment. Systems, Man and Cybernetics, pp. 3270-3275.
- Zakaria, I., Rahman, B. A. & Othman, A. K., 2012. The relationship between loyalty program and customer loyalty in retail industry: A case study. Innovation Management and Technology Research (ICIMTR).
- Zhang, Z., 2012. Microsoft Kinect Sensor and Its Effect. MultiMedia, IEEE, pp. 4-10.
Paper Citation
in Harvard Style
Bell D., Makwana N. and Mgbemena C. (2014). Sensing Gestures for Business Intelligence . In Proceedings of the 3rd International Conference on Sensor Networks - Volume 1: SENSORNETS, ISBN 978-989-758-001-7, pages 52-60. DOI: 10.5220/0004878100520060
in Bibtex Style
@conference{sensornets14,
author={David Bell and Nikhil Makwana and Chidozie Mgbemena},
title={Sensing Gestures for Business Intelligence},
booktitle={Proceedings of the 3rd International Conference on Sensor Networks - Volume 1: SENSORNETS,},
year={2014},
pages={52-60},
publisher={SciTePress},
organization={INSTICC},
doi={10.5220/0004878100520060},
isbn={978-989-758-001-7},
}
in EndNote Style
TY - CONF
JO - Proceedings of the 3rd International Conference on Sensor Networks - Volume 1: SENSORNETS,
TI - Sensing Gestures for Business Intelligence
SN - 978-989-758-001-7
AU - Bell D.
AU - Makwana N.
AU - Mgbemena C.
PY - 2014
SP - 52
EP - 60
DO - 10.5220/0004878100520060