Abstract
Acknowledgements
I would like to express my gratitude to my supervisors: Amy Loutfi, Per Dahl
and Gunnar Akner, who were consistently providing me with both good advice
and technical equipment during the project. I would also like to thank personnel
and patients of the Backagården medical facility for their participation and
patience during the experimental part.
Contents
1 Introduction 17
1.1 Motivation . . . .
1.2 Task description . .
1.3 Thesis outline . . . . . . . . . .
2 Background 21
2.1 Remote Monitoring of Physiological Parameters . . .2.2 Processing Device . .
2.3 Data Processing for Ubiquitous systems .
2.3.1 Change point detection . . . . . .
2.3.2 Anomaly detection . . . .
2.4 Decision Support System in Remote Monitoring Applications .
3 System Set up 31
3.1 Sensors . . .3.1.1 Accelerometer
3.1.2 Nonin Wrist 0x2 . . .
3.2 Processing Device . . .
3.2.1 Samsung smart-phones . . . . .
3.2.2 Application development . . .
3.2.3 Data collection . .
4.1 Change Point Detection .
4.2 Anomaly Detection
4.3 Activity Correlation .
5 Patient Trials 53
5.1 Target group .
5.2 Results . . . . .
12 CONTENTS
6 Conclusion 63
References[1] WristOx2TM Model 3150 Bluetooth® Wrist-Worn Pulse Oximeter
OEM Specification and Technical Information, 2010.
[2] Ryan Prescott Adams and David J.C. MacKay. Bayesian online changepoint
detection. University of Cambridge Technical Report, 2007.
[3] Gunnar Akner. Nutrition och fysisk funktion/fysisk aktivitet hos äldre
personer. Technical report, Örebro Universitet, April 2009.
[4] Novruz Allahverdi. Some applications of fuzzy logic in medical area.
IEEE, 2009.
pdf download here
[5] B.Otal, C.Verikoukis, and L.Alonso. Fuzzy-logic scheduling for highly
reliable and energy-efficient medical body sensor networks. IEEE, 2009.
[6] Shuwei Chen, Jie Wang, and Dongshu Wang. Exatraction of fuzzy rules
by using support vector machines. IEEE, 2008.
[7] Haibin Cheng, Christopher Potter, and Steven Klooster. Detection and
characterization of anomalies in multivariate time series. SIAM.
[8] R. Cucchiara, A. Prati, and R. Vezzani. Posture classification in a multicamera
indoor environment. IEEE, 2005.
[9] Adriana da Costa F.Chaves, Marley Maria B.R.Vellasco, and Ricardo Tanscheit.
Fuzzy rule extraction from support vector machines. IEEE, 2008.
[10] Allen B. Downey. Changepoint detection in network measurements.
Franklin W.Olin College of Engineering.
[11] Keogh E., Lin J., Lonardi S., and Chiu B. A symbolic representation of
time series, with implications for streaming algorithms. In proceeding of
the 8th ACM SIGMOD Workshop on Reasearch Issues in Data Mining
and Knowledge Discovery, 2003.
73
74 REFERENCES
[12] E.Sivasankar and Dr.R.S.Rajesh. Knowledge discovery in medical datasets
using a fuzzy logic rule based classifier. IEEE, 2010.
[13] Fei Hu, Yang Xiao, and Qi Hao. Congestion-aware, loss-resilient biomonitoring
sensor networking for mobile health applications. IEEE Journal
on Selected Areas in Communications, 27(4), May 2009.
[14] J.W.Zheng, T.H.Wu, and Y.Zhang. A wearable mobihealth care system
support in real-time diagnosis and alarm. Med Bio Eng Comput, 2007.
[15] Yoshinobu Kawahara and Masashi Sugiyama. Change-point detection in
time-series data by direct density-ratio estimation. SIAM, 2009.
[16] Eamonn Keogh, Jessica Lin, and Ada Fu. Hot sax: Finding the most unusual
time series subsequences: Algorithms and application. ICDM, 2005.
[17] Eamonn Keogh, Jessica Lin, AdaWaichee Fu, and Helga Van Herle. Finding
unusual medical time-series subsequences: Algorithms and applications.
IEEE TRANSACTIONS ON INFORMATION TECHNOLOGY
IN BIOMEDICINE, 10(3), July 2006.
[18] Eamonn Keogh, Jessica Lin, andWagner Truppel. Clustering of time series
subsequences is meaningless: Implication of previous and future research.
Proceedings of the Third IEEE International Conference on Data Mining,
2003.
[19] Amol Khatkhate, Asok Ray, Eric Keller, Shalabh Gupta, and Shin C. Chin.
Symbolic time-series analysis for anomaly detection in mechanical systems.
IEEE/ASME TRANSACTIONS ON MECHATRONICS, 11(4),
August 2006.
[20] Hon Fai Lau and Shigeru Yamamoto. Bayesian online changepoint detection
to improve transparency in human-machine interaction systems.
IEEE Conference on Decision and Control, 2010.
[21] Mingwei Leng, Xiaoyun Chen, and Longjie Li. Variable length methods
for detecting anomaly patterns in time series. International Symposium
on Computational Intelligence and Design, 2008.
[22] Donna L.Hudson and Maurice E.Cohen. Fuzzy logic in medical expert
systems. IEEE Engineering in Medicine and Biology, December 1994.
[23] L.Mikhailov, A.Nabout, A.Lekova, F.Fischer, and H.A. Nour Eldin.
Method for fuzzy rules extraction from numerical data. IEEE, 1997.
[24] J Luprano, J.Sola, S.Dasen, J.M.Koller, and O.Chetelat. Combination of
body sensor network and on-body signal processing algorithms : the practical
case of myheart project. Proceedings of the International Workshop
on Wearable and Implantable Sensor Networks, 2007.
REFERENCES 75
[25] Ming Ma, Chun-Gang Zhou, Li-Biao Zhang, and Quan-Sheng Duo.
Automatic fuzzy rule extraction based on particle swarm optimization.
IEEE, 2004.
[26] Chris Matthews and Ilona Jagielska. Fuzzy rule extraction from a trained
multi layered neural network.
[27] Mark L. Murphy. Beginning Android 2. Apress, 2010.
[28] Oliver Nelles, Martin Fischer, and Bernd Muller. Fuzzy rule extraction by
a genetic algorithm and constrained nonlinear optimization of the membership
functions. IEEE, 1996.
[29] Minh Quoc Nguyen. TOWARD ACCURATE AND EFFICIEN
DETECTION IN HIGH DIMENSIONAL AND LARGE DATA
SETS. PhD thesis, Georgia Institute of Technology, August 2010.
[30] Manabu Nii, Takafumi Yamaguchi, Yutaka Takahashi, Atsuko Uchinuno,
and Reiko Sakashita. Fuzzy rule extraction from nursing -care texts.
IEEE, 2009.
[31] Spiros Papadimitriou, Jimeng Sun, and Christos Faloutsos. Streaming pattern
discovery in multiple time-series. Carnegie Mellon University, 2005.
[32] Tanja Radu, Cormac Fay, King Tong Lau, Rhys Waite, and Dermot Diamond.
Wearable sensing application- carbon dioxide monitoring for
emergency personnel using wearable sensors. World Academy of Science,
Engineering and Technology, 2009.
[33] Nishkam Ravi, Nikhil Dandekar, Preetham Mysore, and Michael L.
Littman. Activity recognition from accelerometer data. American Association
for Artificial Intelli- gence, 2005.
[34] Harald Reiter, Elke Naujokat, Robert Pinter, and Sandrine Devot. Takecare:
A home-based sensor system for the management of cardiovascular
risk factros. Proceedings of the International Workshop on Wearable and
Implantable Sensor Networks, June 2008.
[35] R.J.Almeida, U.Kaymak, and J.M.C. Sousa. Fuzzy rule extraction from
typicality and membership partitions. IEEE, 2008.
[36] Samsung. Samsung Galaxy S GTI-9000 user manual, April 2011.
[37] Mingyan Teng. Anomaly detection on time series. IEEE, 2010.
[38] John Paul M. Torregoza, In-Yeup Kong, and Won-Joo Hwang. Wireless
sensor network renewable energy source life estimation. IEEE, 2006.
76 REFERENCES
[39] Motohide Umano, Takahiro Okada, and Hiroyuki Tamura. Extraction of
quantified fuzzy rules from numerical data. IEEE, 2000.
[40] Achim Volmer, Niels Torben Krüger, and Reinhold Orglmeister. Posture
and motion detection using acceleration data for context aware sensing
in personal healthcare systems. Chair of Electronics and Medical Signal
Processing, 2009.
[41] Matt Van Wieringen and J.Mikael Eklund. Real-time signal processing
of accelerometer data for wearable medical patient monitoring devices.
IEEE, 2008.
[42] Oh young Kwon, Su hong Shin, Seung jung Shin, andWoo sung Kim. Design
of u-health system with the use of smart phone and sensor network.
IEEE, 2010.
[43] Shelten G. Yuen, Daniel Rudoy, Robert D. Howe, and Patrick J. Wolfe.
Bayesian changepoint detection through switching regressions: Contact
point determination in material indentation experiments. IEEE, 2007.
if u like the post just say thank u in comment box.
No comments:
Post a Comment
its cool