[Agr93] R. Agrawal, C. Faloutsos, and A. Swami, “Efficient similarity search in sequence databases,” in
Proc. of the 4th Conference on Foundations of Data Organization and Algorithms, Oct 1993, pp. 69–84.
[Ank99] Ankerst, M., Breunig, M., Kriegel, H. P., and Sander, J. (1999). OPTICS: Ordering Points To
Identify the Clustering Structure. In Proc. 1999 ACM-SIGMOD Conf. on Management of Data
(SIGMOD’99), pp. 49-60.
[Anna01] Annaswamy TM, Eisenhardt E, Satwicz P and Borg-Stein J. Self-rated pain and functional status
with acupuncture. Medical Acupuncture; 2001. 13/1: 13-15
[Anna99] Annaswamy TM, Giddings C, Della Croce U and Kerrigan DC. Rectus Femoris: Its role in
normal gait. Archives of Physical Medicine & Rehabilitation; 1999. 80/8: 930-934
[Atl02] Atluri, A. and P. Mazzoleni: Uniform Indexing for Geospatial Data and Authorizations. Proceedings of
the IFIP Database Security Conference, Cambridge, UK, July 2002.
[Atl04] Atluri, V. and S. Chun, An Authorization Model for Geospatial Data. IEEE Trans. Dependable and
Secure Computing, December 2004.
[Awad05] Awad M. and Khan, L. (2005), “Classification Problems using Support Vector Machine in Data
Mining,” In Encyclopedia of Data Warehousing and Mining, ed. John Wang, Information Science
Publishing, (April 2005), ISBN 1-59140-557-2.
[Bas04] A. Bashir, L. Khan, “A Framework for Image Annotation using Semantic Web” to appear in
Mining for and from the Semantic Web (MSW 2004) Workshop in conjunction with ACM SIGKDD,
Seattle, August, 2004.
[Bat00] V. Batagelj, A. Mrvar, and M. Zaversnik, Partitioning Approaches to Clustering in Graphs, Proc.
GD’1999, LNCS, Springer, pp. 90-97(2000).
[Bec90] N. Beckmann, H. Kriegel, R. Schneider, and B. Seeger, “The R*-tree: an efficient and robust
access method for points and rectangles,” in Proceedings of ACM SIGMOD Int’l Conference on
Management of Data, May 1990, pp. 322–331.
[Beh88] Behbehani K, Kondraske GV, & Richmond J. (1988). Investigation of upper extremity
visuomotor control performance measures. IEEE Trans Biomed Eng, 35(7), 518-525.
[Beh90] Behbehani K, Kondraske GV, Tintner R, Tindall RS, & Imrhan S. (1990). Evaluation of
quantitative measures of upper extremity speed and coordination in normals and three patient populations.
Arch Phys Med Rehabil, 71(2), 106-111.
[Ber04a] Bertino, E., B. Carminati, E. Ferrari and B. Thuraisingham, Selective and Authentic Third-Party
Distribution of XML Documents, IEEE Transactions on Knowledge and Data Engineering, October 2004.
[Ber04b] E.Bertino, E.Ferrari, A.C. Squicciarini, “A Peer-to-Peer Framework for Trust Establishment”,
IEEE Trans. on Knowledge and Data Engineering, July 2004.
[Blo99] D. Blosetin and A. Schürr, Computing with Graphs and Graph Transformation, Software –
Practice and Experience, 29(3), 1999, 197-217.
[Bol98] D. L. Boley, Principal Direction Divisive Partitioning, Data Mining and Knowledge Discovery,
Vol. 2, No. 4, pp. 325-344 (1998).
[Bur05] M. M. Burnett, Visual Language Research Bibliography, http://www.cs.orst.edu/~burnett/vpl.html,
2005, up to date.
[Burg98] C. J. Burges, “A tutorial on support vector machines for pattern recognition,” Data Mining and
Knowledge Discovery, no. 2, pp. 121–167, 1998.
[Cal97] Callaghan JT, Cerimele BJ, Kassahun K, Nyhart EH, Hoyes-Beehler PJ, Kondraske GV. (1997).
Olanzapine: interaction study with imipramine. J. Clinical Pharmacology, October, 971-978.
[Cas03] V. Castelli, A. Thomasian, and C.-S. Li, “CSVD: Clustering and singular value decomposition for
approximate similarity search in high-dimensional spaces,” IEEE Transactions on knowledge and data
engineering, vol. 15, no. 3, pp. 671–685, 2003.
[Cat97] T. Catarci, M. F. Costabile, S. Levialdi, and C. Batini, Visual query systems for databases: a
Survey, Journal of Visual Languages and Computing, Vol. 8, 1997, 215-260.
[Cha03] K.-P. Chan, A. W.-C. Fu, and C. Yu, “Haar wavelets for efficient similarity search of time-seiers:
With and without time warping,” IEEE Transactions on knowledge and data engineering, vol. 15, no. 3,
pp. 686–705, 2003.
[Cha99] K.-P. Chan and A. W.-C. Fu, “Efficient time series matching by wavelets,” in Proceedings of The
15th International Conference on Data Engineering, Mar 1999, pp. 126 – 133.
[Chak02] K. Chakrabarti, E. J. Keogh, S. Mehrotra, and M. J. Pazzani, “Locally adaptive dimensionality
reduction for indexing large time series databases,” ACT Transactions on Database Systems, vol. 27, no. 2,
pp. 188–228, 2002.
[Chan87] Chan HC, Manry MT, & Kondraske GV. (1987). Classification of resistance to passive motion
using minimum probability of error criterion. Annals of Biomed Eng, 15, 579-590.
[Chi05] Chin Y, Wang, L., and Khan L. (2005),”Improving Image Annotations using WordNet” to appear
in International Workshop on Multimedia Information Systems (MIS), October 2005, Italy.
[Cri00] Cristianini N, and J. Shawe-Taylor (2000), An Introduction to Support Vector Machines,
Cambridge University Press, 2000 ISBN: 0 521 78019 5
[Cru01] I. F. CRUZ and P. S. LEVEILLE, As You Like It: Personalized Database Visualization Using a
Visual Language, Journal of Visual Languages and Computing, Vol.12, No.5, 2001, 525-549.
[Dan01] Dang T, Annaswamy TM and Srinivasan MA. Development and Evaluation of an Epidural
Injection Simulator with Force Feedback for Medical Training. In: 2001 Medicine Meets Virtual Reality.
2001. 97-102. Eds.: Westwood JD, Hoffman HM, Mogel GT, Stredney D and Robb RA; IOS Press,
[Dem77] A. P. Dempster, N. M. Laird, and D. B. Rubin, Maximum Likelihood from Incomplete Data via
the EM algorithm. Journal of the Royal Statistical Society, Series B, 39, pp. 1-38 (1977).
[Dil00] Dillon WE, Kondraske GV, Everett LJ, and Volz RA. (2000). Performance theory based outcome
measurement in engineering education and training. IEEE Trans Eng Educ, vol. 43(2):92-99.
[Dya04] V. M. Dyaberi, H. Sundaram, J. James, and G. Qian, “Phrase structure detection in dance,” in
Proceedings of the ACM Multimedia Conference 2004, Oct. 2004, pp. 332–335.
[Est96] Ester, M., Kriegel, H. P., Sander, J., and Xu, X. (1996). A density-based algorithm for discovering
clusters in large spatial databases with noise, Proc. 2nd Int. Conf. on Knowledge Discovery and Data
Mining (KDD-96), AAAI Press, pp. 226-231
[Fal94] C. Faloutsos, M. Ranganathan, and Y. Manolopoulos, “Fast subsequence matching in time-series
databases,” in SIGMOD, May 1994, pp. 419–429.
[Fis02] Fischer CA, Kondraske GV & Stewart RM. (2002). Prediction of driving performance using
nonlinear causal resource analysis. CD-ROM Proceedings of the 24th Int. Conf. IEEE Eng. in Med. Biol.
Soc., Houston, October 23-26, (pp. 2473-2474).
[Gan04] A. Ganapathiraju, J. E. Hamaker, and J. Picone, “Application of support vector machines to
speech recognition,” IEEE Transactions on Signal Processing, vol. 52, no. 8, pp. 2348–2355, 2004.
[Gao02a] L. Gao and X. S. Wang, “Continually evaluating similarity-based pattern queries on a streaming
time series,” in ACM SIGMOD, Jun 2002, pp. 370–381.
[Gao02b] L. Gao, Z. Yao, and X. S. Wang, “Evaluating continuous nearest neighbor queries for streaming
time series via prefetching,” in Proceedings of the 11th international conference on Information and
Knowledge Management, Nov 2002, pp. 485–492.
[Ger88] German D, Tintner R, Clark K, Stanley L, Hom J, Peters P, Sadler J, Fuchs I, Speciale S,
Behbehani K, & Kondraske GV. (1988). Adrenal medullary autotransplantation for parkinsonism:
Preliminary studies. Proceedings, Ninth International Symposium on Parkinson's Disease; Tel-Aviv,
[Get03] Gettman, MT, Kondraske, GV, Traxer, O, Ogan, K, Napper, C, Jones, DB, Pearle, MS, and
Cadeddu, J. (2003). Assessment of basic human performance resources predicts operative performance of
laparoscopic surgery. J. American College of Surgeons, 197(3):489-496.
[Gol96] G. H. Golub and C. F. V. Loan, Matrix Computations. Baltimore,Maryland: The Johns Hopkins
University Press, 1996.
[Gor02] M. Gordan, C. Kotropoulos, and I. Pitas, “Application of support vector machines classifiers to
visual speech recognition,” in Proceedings of the International Conference on Image Processing., June
2002, pp. 24–28.
[Guar99] Guarino, N. Masolo, C. and Vetere, G. (1999). OntoSeek: Content-based Access to the Web,
IEEE Intelligent Systems, 14(3), (pp. 70-80).
[Guh98]S. Guha, R. Rastogi, and K. Shim, CURE: An Efficient Clustering Algorithm for Large Databases.
Proc. 1998 ACM-SIGMOD Int. Conf. Management of Data, pp. 73-84 (1998)
[Gut84] A. Guttman, “R-trees: a dynamic index structure for spatial searching,” in Proceedings of ACM
SIGMOD Int’l Conference on Management of Data, June 1984, pp. 47–57.
[Ham93] Hammer J., and McLeod D (1993), “An Approach to Resolving Semantic Heterogeneity In A
Federation Of Autonomous, Heterogeneous Database Systems,” (1993), Journal for Intelligent and
Cooperative Information Systems.
[Ham02] Hamilton, N., & Luttgens, K., 2002. ‘Kinesiology, Scientific Basis of Human Motion”, 10thed.
Madison, WI, Brown & Benchmark. Chapter 19, pp. 467-494.
[Han01] Han, J., Kamber, M., and Tung, A. K. H. (2001). Spatial clustering methods in data mining: A
survey, H. Miller and J. Han (eds.), Geographic Data Mining and Knowledge Discovery, Taylor and
[Har01] D. Harel and Y. Koren, Clustering Spatial Data Using Random Walks, Proc. 7th Int’l Conf.
Knowledge Discovery and Data Mining (KDD-2001), ACM Press, New York, pp. 281-286 (2001).
[Hei01] B. Heiselet, T. Serre, M. Pontil, and T. Poggio, “Component-based face detection,” in Proceedings
of the 2001 IEEE Computer Society Conference on Computer Vision and Pattern Recognition, Dec. 2001,
pp. I – 657–662.
[Hin98] A. Hinneburg and D. A. Keim, An Efficient Approach to Clustering in Large Multimedia
Databases with Noise. Proc. 1998 Int. Conf Knowledge Discovery and Data Mining, pp. 58-65 (1998).
[Hsu02] C.-W. Hsu and C.-J. Lin, “A comparison of methods for multi-class support vector machines,”
IEEE Transactions on Neural Networks, no. 13, pp. 415–425, 2002.
[Hua90] X. D. Huang, Y. Ariki, and M. A. Jack, Hidden Markov Models for Speech Recognition.
Edinburgh University Press, 1990.
[Jah99] M. C. Jahannesmeyer, “Abnormal situation analysis using pattern recognition techniques and
historical data,” M.Sc. Thesis, University of California, Santa Barbara, CA, 1999.
[Jai03] Jaimes A., Tseng B., Smith J. (2003), “Modal Keywords, Ontologies, and Reasoning for Video
Understanding,” CIVR 2003: 248-259.
[Jai99] Jain, A. K., Murty, M. N., and Flynn, P. J. (1999). Data clustering: a review, ACM Computing
Surveys, Vol.31, No. 3, pp. 264-323.
[Jan98] Jankovic J, and Tolosa E (eds.) (1998) Parkinson's Disease and Movement Disorders, Baltimore:
Williams and Wilkens Publishing.
[Kah03] K. Kahol, P. Tripathi, S. Panchanathan, and T. Rikakis, “Gesture segmentation in complex motion
sequences,” in Proceedings of IEEE International Conference on Image Processing, Sept. 2003, pp. II –
[Kar99] G. Karypis, E. Han, and V. Kumar, CHAMELEON, A Hierarchical Clustering Algorithm Using
Dynamic Modeling, IEEE Computer pp. 68-75, 32 (1999).
[Kat97] N. Katayama and S. Satoh, “The SR-tree: a index structure for high-dimensional nearest neighbor
queries,” in Proceedings of ACM SIGMOD Int’l Conference on Management of Data, May 1997, pp. 369–
[Kau90] L. Kaufman and P. J. Rousseeuw, Finding Groups in Data: An Introduction to Cluster Analysis,
John Wiley & Sons (1990).
[Keo01] E. J. Keogh, K. Chakrabarti, M. J. Pazzani, and S. Mehrotra, “Dimensionality reduction for fast
similarity search in large time series databases,” Knowledge and Information Systems, vol. 3, no. 3, pp.
[Ker96] Kerrigan DC, Thirunarayan MA, Sheffler LR, Ribaudo TA, Corcoran, PJ. A tool to assess
biomechanical gait efficiency: a preliminary clinical study. American Journal of Physical Medicine &
Rehabilitation; 1996. 75:3-8
[Ker97] Kerrigan DC and Annaswamy TM. The functional significance of spasticity as assessed by gait
analysis. Journal of Head Trauma Rehabilitation; 1997. 12(6):29-39
[Khan99] L. Khan, “Structuring and Querying Personalized Audio Using Ontologies” in Proc. of ACM
Multimedia, Vol. 2, pp. 209-210, Orlando, FL, November 1999.
[Khan00a] L. Khan and D. McLeod, “Audio Structuring and Personalized Retrieval Using Ontologies,” in
Proc. of IEEE Advances in Digital Libraries, Library of Congress, pp. 116-126, Bethesda, MD, May 2000.
[Khan00b] L. Khan and D. McLeod, “Efficient Retrieval of Audio Information from Annotated Text Using
Ontologies,” in the Proc. of ACM SIGKDD Workshop on Multimedia Data Mining, Boston, MA, August
[Khan01a] I-Ling Yen, L. Khan, R. Prabhakaran, F. Bastani and J. Linn, “An On-Line Software Repository
for Embedded Systems” Proc. of The Thirteenth IEEE International Conference on Tools with Artificial
Intelligence, Dallas, TX, pp. 314-324, November 2001
[Khan02a] L. Khan, and F. Luo, “Ontology Construction for Information Selection”, in Proc. of 14th IEEE
International Conference on Tools with Artificial Intelligence, pp. 122-127, Washington DC, November
[Khan02b] L. Khan, and L. Wang, “Automatic Ontology Derivation Using Clustering for Image
Classification,” in Proc. of Eighth International Workshop on Multimedia Information Systems, pp. 56- 65,
Tempe, Arizona, October 2002.
[Khan03] L. Khan and L. Wang, “Object Boundary Detection for Hierarchical Image Classification,”
Mining Multimedia and Complex Data, ed. C. Djeraba, S. J. Simoff, and O. R. Zaiane , ISBN
3-540-20305-2, DOI:10.1007/b12031, Chapter 6, pp. 36 – 49, Springer-Verlag Publishing, Heidelberg,
[Khan04a] Khan L., McLeod D. and Hovy E. (2004), “Retrieval Effectiveness of Ontology-based Model
for Information Selection” VLDB Journal: The International Journal on Very Large Databases,
ACM/Springer-Verlag Publishing, 13 0 (January, 2004) 71-85.
[Khan04b] L. Khan, and M. Awad, “Classification Problems using Support Vector Machine in Data
Mining,” ed. John Wang to appear in Encyclopedia of Data Warehousing and Mining by Information
[Khan04c] L. Khan, D. McLeod, E. Hovy, “A Framework for Effective Annotation of Information from
Closed Captions Using Ontologies” to appear in Journal of Intelligent Information Systems, Kluwer
[Khan05a] Khan L., Awad M. and Thuraisingham B. (2005), "A New Intrusion Detection System using
Support Vector Machines and Hierarchical Clustering," to appear in The VLDB Journal: The International
Journal on Very Large Databases, ACM/Springer-Verlag Publishing.
[Khan05b] L. Khan and F. Luo, “Hierarchical Clustering of Gene Expression Data,” to appear in a special
issue of the International Journal on Bio-informatics Engineering (IJBE) by Kluwer Academic Publishers.
[Kon00] Kondraske GV, & Vasta PJ. (2000). Measurement of information processing performance
capacities. In J. Bronzino (Ed.), The Biomedical Engineering Handbook 2nd Edition. (pp. 150.1 - 150.14).
Boca Raton: CRC Press.
[Kon02] Kondraske GV & Stewart RM. (2002). Neuromotor channel capacity as an outcome and tracking
measure in Parkinson's Disease. CD-ROM Proceedings of the 24th Int. Conf. IEEE Eng. in Med. Biol.
Soc., Houston, October 23-26, 2471-2472.
[Kon03] J. Kong, K. Zhang, J. Dong, and G.L. Song, A Graph Grammar Approach to Software
Architecture Verification and Transformation, Proc. 27th Annual International Computer Software and
Applications Conference (COMPSAC’03), Dallas, USA, 3-6 November 2003, IEEE CS Press, 492-499.
[Kon04a] J. Kong and K. Zhang, Parsing Spatial Graph Grammars, Proc. 2004 IEEE Symposium on Visual
Languages and Human-Centric Computing, Rome, Italy, 26-29 September 2004, IEEE CS Press, 99-101.
[Kon04b] J. Kong and K. Zhang, On a Spatial Graph Grammar Formalism, Proc. 2004 IEEE Symposium
on Visual Languages and Human-Centric Computing, Rome, Italy, 26-29 September 2004, IEEE CS Press,
[Kon05a] J. Kong, K. Zhang, J. Dong, and G.L. Song, A Generative Style-driven Framework for Software
Architecture Design, Proc. 29th Annual IEEE/NASA Software Engineering Workshop (SEW-29), Greenbelt,
MD, USA, 6-7 April 2005, IEEE CS Press.
[Kon05b] J. Kong and K. Zhang, Spatial Graph Grammars for Graphical User Interfaces, ACM
Transactions on Computer-Human Interaction, 2004 (re-submitted after revision).
[Kon83] Kondraske, G. V., Potvin, A. R., Stewart, R. M., Tourtellotte, W. W., & Syndulko, K. (1983). A
system to assess sensory and motor function in the clinic. IEEE Trans Biomed Eng, 30(8), 506-507.
[Kon84] Kondraske GV, Potvin AR, Tourtellotte WW, & Syndulko K. (1984). A computer-based system
for automated quantification of neurologic function. IEEE Trans Biomed Eng, 31(5), 401-414.
[Kon86] Kondraske GV. (1986). A non-contacting human tremor sensor and measurement system. IEEE
Trans Instr Meas, 35(2), 201-206.
[Kon87a] Kondraske GV, Carmichael T, Mayer TG, Mooney V, & Deivanayagam S. (1987). Myoelectric
spectral analysis and strategies for quantifying trunk musculature fatigue. Arch Phys Med, 68(2), 103-110.
[Kon87b] Kondraske GV. (1987). Human performance: Science or art?. Proceedings, Thirteenth
Northeast Bioengineering Conference. (pp. 44-47).
[Kon88] Kondraske GV, Behbehani K, Chwialkowski M, Richmond J, von Maltzahn WW, Smith SS, &
Mooney V. (1988). A system for human performance measurement. IEEE Eng in Med and Biol Soc Mag,
[Kon90] Kondraske GV. (1990). A PC-based performance measurement laboratory system. J of Clin Engr,
[Kon95] Kondraske GV (1995) An elemental resource model for the human-task interface. International
Journal of Technology Assessment in Health Care, 11(2), pp. 153-173.
[Krz79] W. Krzanowski, “Between-groups comparison of principal components,” J. Amer. Stat. Assoc.,
vol. 74, no. 367, pp.703–707, 1979.
[Kun89] A. Kundu, Y. He, and P. Bahl, “Recognition of handwritten words: First and second order Hidden
Markov Model based approach,” Pattern Recognition, vol. 22, no. 3, pp. 283–297, 1989.
[Lal97] Mounia Lalmas, Dempster-Shafer’s Theory of Evidence applied to Structured Documents
Modeling Uncertainty. ACM SIGIR Conference on Research and Development in Information Retrieval, pp
110-118, Philadelphia, PA, July 1997.
[Len95] Lenat, D. B.(1995). Cyc: A Large-scale investment in Knowledge Infrastructure. Communications
of the ACM. (pp. 33-38). 38(11).
[Li04a] C. Li, P. Zhai, S.-Q. Zheng, and B. Prabhakaran, “Segmentation and recognition of multi-attribute
motion sequences,” in Proceedings of the ACM Multimedia Conference 2004, Oct. 2004, pp. 836–843.
[Li04b] C. Li, G. Pradhan, S. Zheng, and B. Prabhakaran, “Indexing of variable length multi-attribute
motion data,” in Proceedings of the Second ACM InternationalWorkshop on Multimedia Databases, Nov.
2004, pp. 75–84.
[Li05a] Li C., Khan L., and Prabhakaran B. (2005), “Real-time Classification of Variable length Multi-
attribute Motion Data” to appear in a special issue of International Journal of Knowledge and Information
Systems (KAIS) by Springer-Verlag.
[Li05b] C. Li, B. Prabhakaran, and S. Zheng, “Similarity measure for multi-attribute data,” in Proceedings
of the 2005 IEEE International Conference on Acoustics, Speach, and Signal Processing (ICASSP), Mar.
[Luo04a] F. Luo, L. Khan , F. Bastani, I-Ling Yen and J. Zhou, “A Dynamical Growing Self-Organizing
Tree (DGSOT) for Hierarchical Clustering Gene Expression Profiles,” the Bioinformatics Journal, 20(16):
2605-2617 (2004), Oxford University Press, UK.
[Mal85]von Maltzahn WW, & Kondraske GV. (1985). An instrument to measure range of motion.
Proceedings, Eighth Annual Conference on Rehabilitation Engineering, Memphis. (pp. 165-167).
[May85] Mayer TG, Smith SS, Kondraske GV, Gatchel R, Carmichael TW, & Mooney V. (1985).
Quantification of lumbar function III: Preliminary data on isokinetic torso rotation testing with myoelectric
spectral analysis in normal and low-back pain subjects. Spine, 10, 912-920.
[May88] Mayer TG, Barnes D, Sooby G, Gatchel RJ, Kishino N, Kondraske GV, & Mooney V. (1988).
Progressive isoinertial lifting evaluation: A standardized protocol normative database and comparison with
isokinetic lifting. Spine, 13:993-997.
[May97] Mayer T, Kondraske GV, Brady Beals S, & Gatchel RJ. (1997). Spinal range of motion: accuracy
and sources of error with inclinometric measurement. Spine, 22(17), 1976-1984.
[Mcq67] McQueen, J., Some methods for classification and analysis of multivariate observations. In Proc.
of the Fifth Berkeley Symposium on Mathematical Statistics and Probability, 1967, pp. 281-297.
[Mét98] D. L. Métayer, Describing Software Architecture Styles Using Graph Grammars, IEEE
Transactions on Software Engineering, 24(7), 1998, 521-533.
[Mill95] Miller, G. (1995) . WordNet: A Lexical Database for English, Communications of the ACM, (pp.
[MMVR] Medicine Meets Virtual Reality Conferences: http://www.nextmed.com/mmvr_archive.html
[Moh01] A. Mohan, C. Papageorgiou, and T. Poggio, “Example-based object detection in images by
components,” IEEE Transactions on Pattern Analysis and Machine Intelligence, vol. 23, no. 4, pp. 349–
[Nap03] Naphade M., and Smith J. (2003) “A Hybrid Framework for Detecting the Semantics of Concepts
and Context” CIVR 2003: 196-205.
[Nat04] Natsev A., Naphade M., Smith J. (2004), “Semantic Representation: Search and Mining of
Multimedia Content,” KDD 2004: 641-646.
[Pap86] Pape ES, Richmond JR, & Kondraske GV. (1986). Age and gender effects on measures of
sensorimotor function. Proceedings, Eighth Annual IEEE Engineering in Medicine and Biology Society
Conference. (pp. 1883-1885).
[Par04] Jaehong Park and Ravi Sandhu. “The UCONABC Usage Control Model.” ACM Transactions on
Information and System Security, Volume 7, Number 1, February 2004.
[Pat85] Patlak, CS, and Blasberg, RG. (1985) Graphical evaluation of blood-to-brain transfer constants
from multiple-time uptake data: generalizations. J Cereb Blood Flow Metab 5:584-590.
[Pla00] J. Platt. Probabilistic outputs for SVMs and comparisons to regularized likelihood methods. In
Advances in Large Margin Classifiers. MIT Press, 2000.
[Pop02] I. Popivanov and R. J. Miller, “Similarity search over time series data using wavelets,” in
Proceedings of The 18th International Conference on Data Engineering, Feb 2002, pp. 212–221.
[Pot85] Potvin AR, Tourtellotte WW, Potvin JH, Kondraske GV, & Syndulko K. (1985). The Quantitative
Examination of Neurologic Function. Boca Raton, FL: CRC Press. Boca Raton, FL: CRC Press.
[Pul01] Pulliam, C.B., Gatchel, R.J. and Gardea, MJ. (2001) Psychosocial Differences in High Risk Versus
Low Risk Acute Low-Back Pain Patients. J. of Occupational Rehabilitation, Vol. 11, No. 1: 43-52.
[Qia04a] G. Qian, F. Guo, T. Ingalls, L. Olson, J. James, and T. Rikakis, “A gesture-driven multimodal
interactive dance system,” in Proceedings of IEEE International Conference on Multimedia and Expo, June
[Qia04b] Qian, Y., Zhang, G., and Zhang, K. (2004). FACADE: A Fast and Effective Approach to the
Discovery of Dense Clusters in Noisy Spatial Data (Demo Abstract), In Proc. ACM SIGMOD 2004
Conference, Paris, France, 13-18 June 2004, ACM Press, pp. 921-922.
[Qia04c] Y. Qian and K. Zhang, FAÇADE: A Fast and Effective Approach to the Discovery of Dense
Clusters in Noisy Spatial Data, Proc. ACM SIGMOD 2004 Conference, Paris, France, 13-18 June 2004,
ACM Press, 921-922.
[Qia04d] Y. Qian and K. Zhang, Discovering Spatial Patterns Accurately with Effective Noise Removal,
Proc. 9th ACM SIGMOD Workshop on Research Issues in Data Mining and Knowledge Discovery
(DMKD’04), Paris, France, 13 June 2004, ACM Press, 43-50.
[Qia04e] Qian, Y. and Zhang, K. (2004) GraphZip: A Fast and Automatic Compression Method for Spatial
Data Clustering, Proc. 19th Annual ACM Symposium on Applied Computing (SAC'04), Nicosia, Cyprus,
14-17 March 2004, ACM Press, pp. 571-575.
[Qia05a] Y. Qian, K. Zhang, and F. Qiu, Spatial Contextual Noise Removal for Post-classification
Smoothing of GIS Images, Proc. 20th Annual ACM Symposium on Applied Computing, Santa Fe, USA,
13-17 March 2005, ACM Press, 524-528.
[Qia05b] Qian, Y. and Zhang, K. (2005). The Role of Visualization in Effective Data Cleaning, Proc. 20th
Annual ACM Symposium on Applied Computing (SAC'05), Santa Fe, New Mexico, 13-17 March 2004,
ACM Press, pp. 1239-1243.
[Qia05c] Qian, Y., Zhang, K., and Huynh, D. T. (2005). PatZip: Pattern-Preserved Spatial Data
Compression, Prof. of 9th Pacific-Asia Conference on Knowledge Discovery and Data Mining
(PAKDD'05), pp. 726-736.
[Qiu04] M.K. Qiu, K. Zhang, and M.L. Huang, An Empirical Study of Web Interface Design on Small
Display Devices, Proc. 2004 IEEE/WIC/ACM International Conference on Web Intelligence, Beijing,
China, 20-24 September 2004, IEEE CS Press, 29-35.
[Rek97] J. Rekers and A. Schürr, Defining and Parsing Visual Languages with Layered Graph Grammars,
Journal of Visual Languages and Computing, 8(1), pp.27-55, Feb. 1997.
[Roz97] G. Rozenberg (Ed.), Handbook on Graph Grammars and Computing by Graph Transformation:
Foundations, Vol.1, World Scientific, 1997.
[Sai98] Saini M, Kerrigan DC, Thirunarayan MA and Duff-Raffaele M. The vertical displacement of the
center of mass during Walking: A comparison of four measurement methods. Journal of Biomechanical
Engineering; 1998. 120:133-139
[San96] Ravi Sandhu, Edward Coyne, Hal Feinstein and Charles Youman, “Role-Based Access Control
Models.” IEEE Computer, Volume 29, Number 2, February 1996.
[Sch01] Th. Schreiber, B. Dubbeldam, J. Wielemaker, and B. J. Wielinga. Ontology-based photo
annotation. IEEE Intelligent Systems, May/June 2001.
[Sch01] Schenkman M, Wei Zui C, Cutson TM, Whetten-Goldstein K. (2001) Longitudinal evaluation of
economic and physical impact of Parkinson’s disease. Parkinsonism and Related Disorders, 8:41-50.
[Sei83] Seidman, S. B. (1983). Network structure and minimum degree. Social Networks, 5, pp. 269-287.
[Sha01] C. Shahabi, L. Kaghazian, S. Mehta, A. Ghoting, G. Shanbhag, and M. McLaughlin, “Analysis of
haptic data for sign language recognition,” in Proceedings of the 9th International Conference on Human
Computer Interaction, Aug. 2001, pp. 441 – 445.
[Sha03] C. Shahabi and D. Yan, “Real-time pattern isolation and recognition over immersive sensor data
streams,” in Proceedings of the 9th International Conference on Multi-Media Modeling, Jan 2003, pp. 93–
[Shi04a] Shiyong Lu, Rong Huang, Artem Chebotko, Yu Deng, and Farshad Fotouhi, “ImageSpace: An
Environment for Image Ontology Management”, Volume 11, Number 1, International Journal of
Information Theories and Applications. Also appeared in Proc. of ICTP’2004, Bulgaria, Macedonia,
Greece, June 2004. Download.
[Shi04b] Shiyong Lu, Rong Huang, Artem Chebotko, Yu Deng, and Farshad Fotouhi, “ImageSpace: An
Environment for Image Ontology Management”, in Proc. of the Second Special Workshop on Multimedia
Semantics of the 29th International Conference on Information and Communication Technologies and
Programming, Bulgaria, Macedonia, Greece, June 2004.
[Sim02] Simoneau G.G., 2002. “Kinesiology of Walking”. In: Neumann, D.A. (ed). Kinesiology of the
Musculoskeletal System: Foundations for Physical Rehabilitation. St. Louis, Missouri: Mosby. pp.
[Sin01] S.W. Sin, MPhil; Daniel H.K. Chow, PhD; Jack C.Y. Cheng, MD, “Significance of non-level
walking on transtibial prosthesis fitting with particular reference to the effects of anterior-posterior
alignment”, Journal of Rehabilitation Research and Development Vol. 38 No. 1, January/ February 2001.
[Smi87] Smith SS & Kondraske GV. (1987). A computerized system for quantitative measurement of
sensorimotor aspects of human performance. Physical Therapy, 67(12), 1860-1867.
[Sof98] A. Soffer and H. Samet, “Pictorial Query Specification for Browsing Through Spatially-
Referenced Image Databases”, Journal of Visual Languages and Computing, 9(6), pp.567-596, 1998.
[Son04] G.L. Song, K. Zhang, R.K. Wong, and J. Kong, Management of Web Data Models Based on
Graph Transformation, Proc. 2004 IEEE/WIC/ACM International Conference on Web Intelligence, Beijing,
China, 20-24 September 2004, IEEE CS Press, 398-404.
[Sri02] Sriwatanapongse W. (2002) Human performance multimeter: Investigation of a third generation
prototype. M.S. Thesis, Univeristy of Texas at Arlington, Arlington, TX.
[Sri96] R. Srikant, R. Agrawal, "Mining Quantitative Association Rules in Large Relational Tables", Proc.
of the ACM-SIGMOD 1996 Conference on Management of Data, Montreal, Canada, June 1996.
[Sta02] N. Stankovic and K. Zhang, A Distributed Parallel Programming Framework, IEEE Trans. on
Software Engineering, 28(5), May 2002, 478-493.
[Sta88] Standridge R, Kondraske GV, Mooney M, Carmichael T, & Mayer T. (1988). Temporal
characterization of myoelectric spectral moment changes: Analysis of common parameters. IEEE Trans
Biomed Eng, 35(10), 789-797.
[Sta90] P. Stachour and B. Thuraisingham, Design of LDV: A Multilevel Secure Relational Database
System, IEEE Transactions on Knowledge and Data Engineering, June 1990.
[Star98] T. Starner, J. Weaver, and A. Pentland, “Real-time American sign language recognition using desk
and wearable computer based video,” IEEE Transactions on Pattern Analysis and Machine Intelligence,
vol. 20, no. 12, pp. 1371–1375, 1998.
[Ste04] Stewart, RM, Kondraske, GV, and Sanghera, MK. (2004), Performance theory and formation of
composite outcome measures: Implications for clinical trials. Mov Dis, 19(Suppl. 9): S157-S158.
[Ste05] Stewart, RM, Kondraske, GV, and Sanghera, MK. (2005), Application of Systems Performance
Theory to the UPDRS: Preliminary Exploration. Movement Disorders, 20, Suppl.10:S82-83.
[Ste83] Stewart RM, Levy F, Kondraske GV, & Sink M. (1983). Computer-based quantitative assessment
of sensory and motor functions in Huntington's disease (HD). Neurology, 33, 243.
[Swa96] Swartout, B. , Patil, R. , Knight, K. , and Ross, T. (1996) Toward Distributed Use of Large-Scale
Ontologies. Proc. of the Tenth Workshop on Knowledge Acquisition for Knowledge-Based Systems,
[Syn87] Syndulko K, Tourtellotte WW, & Kondraske GV. (1987). Functional profiles of progressive
neurologic disease: The use of human performance measurements (HPM) to characterize and monitor
multiple sclerosis (MS) and parkinson disease (PD). Neurology, 37(3)
[Syn93] Syndulko K, Tourtellotte WW, Baumhefner RW, Ellison GW, Myers LW, Belendiuk G, &
Kondraske GV. (1993). Neuroperformance evaluation of Multiple Sclerosis disease progression in a
clinical trial: Implications for neurological outcomes. J Neuro Rehab, 7(3/4), 153-174.
[Thir96] Thirunarayan MA, Kerrigan DC, Rabuffetti M, Della Croce U and Saini M. Comparison of three
methods for estimating vertical displacement of COM during level walking in patients. Journal of Gait &
Posture; 1996. 4:306-314
[Thu04] Thuraisingham, B., Security and Privacy for Sensor Database Systems, Sensor Letters, May 2004.
[Thu05a] Thuraisingham, B., Security Standards for Secure Semantic Web, Computer Standards and
Interface Journal (North Holland), March 2005
[Thu05b] Thuraisingham, B. Privacy Constraints Processing in a Privacy Enhanced Database System,
Accepted in Data and Knowledge Engineering Journal.
[Thu05c] Thuraisingham, B., Database and Applications Security, Integrating Information Security and
Data Management, CRC Press, 2005.
[Thu05d] (Thuraisingham 2005c) Thuraisingham, B., Security and Privacy for Multimedia Database
Systems, Accepted in Multimedia Tools Journal.
[Thu90] Thuraisingham, B., Multilevel Security for Multimedia Database Systems, Proceedings of IFIP
Database Security Conference, Halifax, UK, September 1990.
[Thu91] B. Thuraisingham, NTML: A Nonmonotonic Typed Multilevel Logic for Secure Data and
Knowledge Base Systems, Proceedings of the IEEE Computer Security Foundations Workshop, Franconia,
NH, June 1991.
[Thu93] Thuraisingham B., W. Ford and M. Collins, Design and Implementation of a Database Inference
Controller, Data and Knowledge Engineering Journal, December 1993.
[Thu95] Thuraisingham B. and W. Ford, Security for Distributed Database Management System, IEEE
Transactions on Knowledge and Data Engineering, April 1995.
[Thu99] Thuraisingham, B. and Maurer J., Information Survivability for Real-time Command and Cont6rol
Systems, IEEE Transactions on Knowledge and Data Engineering, January 1999.
[Tou88]Tourtellotte WW, Syndulko K, Ellison G, Myers L, Mickey R, Frane M, & Kondraske GV. (1988).
Human performance measurements (HPM) show that Azathiporine (Aza) combined with corticosteroids is
a type of treatment of chronic progressive multiple sclerosis (MS). Neurology, 38(3).
[Van03]Van Den Eeden SK, Tanner CM, Bernstein AL, et. al., (2003) Incidence of Parkinson’s Disease:
Variation by Age, Gender, and Race/Ethnicity, American J. of Epidemiology. 157 (11): 1015-1022.
[Vap98] V. Vapnik. Statistical Learning Theory. Wiley, New York, 1998. forthcoming.
[Vla03] M. Vlachos, M. Hadjieleftheriou, D. Gunopulos, and E. Keogh, “Indexing multi-dimensional time-
series with support for multiple distance measures,” in SIGMOD, Aug 2003, pp. 216–225.
[Vla04] M. Vlachos, D. Gunopulos, and G. Das, “Rotation invariant distance measures for trajectories,” in
Proceedings of the Tenth ACM SIGKDD International Conference on Knowledge discovery and Data
Mining, Aug. 2004, pp. 707–712.
[Who04] Whone, AL, Bailey, DL, Remy, P, Pavese, N, and Brooks, DJ. (2004) A Technique for
Standardized Central Analysis of 6-18F-Fluoro-L-DOPA PET Data from a Multicenter Study, J Nucl Med,
[Wis85] Wise M & Kondraske GV. (1985). Quantitative functional assessment and characterization of head
injured patients. Proceedings, Eighth Annual Conference on Rehabilitation Engineering, Memphis. (pp.
[Wu04] T.-F. Wu, C.-J. Liu, and R. C. Weng, “Probability estimates for multi-class classification by
pairwise coupling,” Journal of Machine Learning Research, no. 5, pp. 975–1005, 2004.
[Xie03] B. Xie, D. Comaniciu, V. Ramesh, M. Simon, and T. Boult, “Component fusion for face detection
in the presence of heteroscedastic noise,” in The 2003 Annual Conference of the German Society for
Pattern Recognition, 2003, pp.434–441.
[Yan04] K. Yang and C. Shahabi, “A PCA-based similarity measure for multivariate time series,” in
Proceedings of the Second ACM InternationalWorkshop on Multimedia Databases, Nov. 2004, pp. 65–74.
[Zha01a] K. Zhang, D.Q. Zhang, and J. Cao, Design, Construction and Application of a Generic Visual
Language Generation Environment, IEEE Trans. on Software Engineering, 27(4), April 2001, 289-307.
[Zha01b] K. Zhang, D-Q. Zhang, and Y. Deng, Graphical Transformation of Multimedia XML Documents,
Annals of Software Engineering, Vol.12, No.1, December 2001, 119-137.
[Zha01c] D-Q. Zhang and K. Zhang, and J. Cao, A Context-Sensitive Graph Grammar Formalism for the
Specification of Visual Languages, The Computer Journal, Oxford University Press, Vol.44, No.3, 2001,
[Zha01d] K. Zhang, D-Q. Zhang, and Y. Deng, Graphical Transformation of Multimedia XML Documents,
Annals of Software Engineering, Vol.12, No.1, December 2001, 119-137.
[Zha05] K. Zhang, J. Kong, M.K. Qiu, and G.L. Song, Multimedia Layout Adaptation Through
Grammatical Specifications, ACM/Springer Multimedia Systems, Vol.10, No.3, March 2005
[Zha96] Zhang, T., Ramakrishnan, R., and Linvy, M. (1996). BIRCH: an efficient data clustering method
for very large databases