SCI Publications
2011
E.W. Anderson, K.C. Potter, L.E. Matzen, J.F. Shepherd, G.A. Preston, C.T. Silva.
A User Study of Visualization Effectiveness Using EEG and Cognitive Load, In Computer Graphics Forum, Vol. 30, No. 3, Note: Awarded 2nd Best Paper!, Edited by H. Hauser and H. Pfister and J.J. van Wijk, pp. 791--800. June, 2011.
DOI: 10.1111/j.1467-8659.2011.01928.x
Effectively evaluating visualization techniques is a difficult task often assessed through feedback from user studies and expert evaluations. This work presents an alternative approach to visualization evaluation in which brain activity is passively recorded using electroencephalography (EEG). These measurements are used to compare different visualization techniques in terms of the burden they place on a viewer's cognitive resources. In this paper, EEG signals and response times are recorded while users interpret different representations of data distributions. This information is processed to provide insight into the cognitive load imposed on the viewer. This paper describes the design of the user study performed, the extraction of cognitive load measures from EEG data, and how those measures are used to quantitatively evaluate the effectiveness of visualizations.
N. Andrysco, P. Rosen, V. Popescu, B. Benes, K.R. Gurney.
Experiences in Disseminating Educational Visualizations, In Lecture Notes in Computer Science (7th International Symposium on Visual Computing), Vol. 2, pp. 239--248. September, 2011.
DOI: 10.1007/978-3-642-24031-7_24
J.S. Anderson, J.A. Nielsen, A.L. Froehlich, M.B. DuBray, T.J. Druzgal, A.N. Cariello, J.R. Cooperrider, B.A. Zielinski, C. Ravichandran, P.T. Fletcher, A.L. Alexander, E.D. Bigler, N. Lange, J.E. Lainhart.
Functional connectivity magnetic resonance imaging classification of autism, In Brain, pp. (published online). 2011.
DOI: 10.1093/brain/awr263
PubMed ID: 22006979
Group differences in resting state functional magnetic resonance imaging connectivity between individuals with autism and typically developing controls have been widely replicated for a small number of discrete brain regions, yet the whole-brain distribution of connectivity abnormalities in autism is not well characterized. It is also unclear whether functional connectivity is sufficiently robust to be used as a diagnostic or prognostic metric in individual patients with autism. We obtained pairwise functional connectivity measurements from a lattice of 7266 regions of interest covering the entire grey matter (26.4 million connections) in a well-characterized set of 40 male adolescents and young adults with autism and 40 age-, sex- and IQ-matched typically developing subjects. A single resting state blood oxygen level-dependent scan of 8 min was used for the classification in each subject. A leave-one-out classifier successfully distinguished autism from control subjects with 83% sensitivity and 75\% specificity for a total accuracy of 79\% (P = 1.1 x 10-7). In subjects less than 20 years of age, the classifier performed at 89\% accuracy (P = 5.4 x 10-7). In a replication dataset consisting of 21 individuals from six families with both affected and unaffected siblings, the classifier performed at 71\% accuracy (91\% accuracy for subjects less than 20 years of age). Classification scores in subjects with autism were significantly correlated with the Social Responsiveness Scale (P = 0.05), verbal IQ (P = 0.02) and the Autism Diagnostic Observation Schedule-Generic's combined social and communication subscores (P = 0.05). An analysis of informative connections demonstrated that region of interest pairs with strongest correlation values were most abnormal in autism. Negatively correlated region of interest pairs showed higher correlation in autism (less anticorrelation), possibly representing weaker inhibitory connections, particularly for long connections (Euclidean distance greater than 10 cm). Brain regions showing greatest differences included regions of the default mode network, superior parietal lobule, fusiform gyrus and anterior insula. Overall, classification accuracy was better for younger subjects, with differences between autism and control subjects diminishing after 19 years of age. Classification scores of unaffected siblings of individuals with autism were more similar to those of the control subjects than to those of the subjects with autism. These findings indicate feasibility of a functional connectivity magnetic resonance imaging diagnostic assay for autism.
J.R. Anderson, S. Mohammed, B.C. Grimm, B.W. Jones, P. Koshevoy, T. Tasdizen, R.T. Whitaker, R.E. Marc.
The Viking viewer for connectomics: scalable multi-user annotation and summarization of large volume data sets, In Journal of Microscopy, Vol. 241, No. 1, pp. 13--28. 2011.
DOI: 10.1111/j.1365-2818.2010.03402.x
Keywords: Annotation, automated electron microscopy, citizen science, computational methods, connectome, networks, visualization
G.A. Ateshian, M.B. Albro, S.A. Maas, J.A. Weiss.
Finite element implementation of mechanochemical phenomena in neutral deformable porous media under finite deformation, In Journal of Biomechanical Engineering, Vol. 133, No. 8, 2011.
DOI: 10.1115/1.4004810
J.C. Bennett, V. Krishnamoorthy, S. Liu, R.W. Grout, E.R. Hawkes, J.H. Chen, J. Shepherd, V. Pascucci, P.-T. Bremer.
Feature-Based Statistical Analysis of Combustion Simulation Data, In IEEE Transactions on Visualization and Computer Graphics, Proceedings of the 2011 IEEE Visualization Conference, Vol. 17, No. 12, pp. 1822--1831. 2011.
M. Berger, J.A. Levine, L.G. Nonato, G. Taubin, C.T. Silva.
An End-to-End Framework for Evaluating Surface Reconstruction, SCI Technical Report, No. UUSCI-2011-001, SCI Institute, University of Utah, 2011.
M.L. Berlanga, S. Phan, E.A. Bushong, S. Lamont, S. Wu, O. Kwon, B.S. Phung, M. Terada, T. Tasdizen, E. Martone, M.H. Ellisman.
Three-dimensional reconstruction of serial mouse brain sections using high-resolution large-scale mosaics, In Frontiers in Neuroscience Methods, Vol. 5, pp. (published online). March, 2011.
DOI: 10.3389/fnana.2011.00017
H. Bhatia, S. Jadhav, P.-T. Bremer, G. Chen, J.A. Levine, L.G. Nonato, V. Pascucci.
Edge Maps: Representing Flow with Bounded Error, In Proceedings of IEEE Pacific Visualization Symposium 2011, Hong Kong, China, Note: Won Best Paper Award!, pp. 75--82. March, 2011.
DOI: 10.1109/PACIFICVIS.2011.5742375
H. Bhatia, S. Jadhav, P.-T. Bremer, G. Chen, J.A. Levine, L.G. Nonato, V. Pascucci.
Flow Visualization with Quantified Spatial and Temporal Errors using Edge Maps, In IEEE Transactions on Visualization and Computer Graphics (TVCG), Vol. 18, No. 9, IEEE Society, pp. 1383--1396. 2011.
DOI: 10.1109/TVCG.2011.265
C. Brownlee, V. Pegoraro, S. Shankar, P.S. McCormick, C.D. Hansen.
Physically-Based Interactive Flow Visualization Based on Schlieren and Interferometry Experimental Techniques, In IEEE Transactions on Visualization and Computer Graphics, Vol. 17, No. 11, pp. 1574--1586. 2011.
Understanding fluid flow is a difficult problem and of increasing importance as computational fluid dynamics (CFD) produces an abundance of simulation data. Experimental flow analysis has employed techniques such as shadowgraph, interferometry, and schlieren imaging for centuries, which allow empirical observation of inhomogeneous flows. Shadowgraphs provide an intuitive way of looking at small changes in flow dynamics through caustic effects while schlieren cutoffs introduce an intensity gradation for observing large scale directional changes in the flow. Interferometry tracks changes in phase-shift resulting in bands appearing. The combination of these shading effects provides an informative global analysis of overall fluid flow. Computational solutions for these methods have proven too complex until recently due to the fundamental physical interaction of light refracting through the flow field. In this paper, we introduce a novel method to simulate the refraction of light to generate synthetic shadowgraph, schlieren and interferometry images of time-varying scalar fields derived from computational fluid dynamics data. Our method computes physically accurate schlieren and shadowgraph images at interactive rates by utilizing a combination of GPGPU programming, acceleration methods, and data-dependent probabilistic schlieren cutoffs. Applications of our method to multifield data and custom application-dependent color filter creation are explored. Results comparing this method to previous schlieren approximations are finally presented.
Keywords: uintah, c-safe
C. Brownlee, V. Pegoraro, S. Shankar, P.S. McCormick, C.D. Hansen.
Physically-Based Interactive Flow Visualization Based on Schlieren and Interferometry Experimental Techniques, In IEEE Transactions on Visualization and Computer Graphics, IEEE Transactions on Visualization and Computer Graphics, Vol. 17, No. 11, IEEE, pp. 1574--1586. November, 2011.
DOI: 10.1109/tvcg.2010.255
B.M. Burton, J.D. Tate, B. Erem, D.J. Swenson, D.F. Wang, D.H. Brooks, P.M. van Dam, R.S. MacLeod.
A Toolkit for Forward/Inverse Problems in Electrocardiography within the SCIRun Problem Solving Environment, In Proceedings of the 2011 IEEE Int. Conf. Engineering and Biology Society (EMBC), pp. 267--270. 2011.
DOI: 10.1109/IEMBS.2011.6090052
PubMed ID: 22254301
PubMed Central ID: PMC3337752
C.R. Butson, S.E. Cooper, J.M. Henderson, B. Wolgamuth, C.C. McIntyre.
Probabilistic Analysis of Activation Volumes Generated During Deep Brain Stimulation, In NeuroImage, Vol. 54, pp. 2096--2104. 2011.
ISSN: 1095-9572
DOI: 10.1016/j.neuroimage.2010.10.059
PubMed ID: 20974269
C.R. Butson, I.O. Miller, R.A. Normann, G.A. Clark.
Selective neural activation in a histologically derived model of peripheral nerve, In Journal of Neural Engineering, Vol. 8, No. 3, pp. 036009. June, 2011.
ISSN: 1741-2552
DOI: 10.1088/1741-2560/8/3/036009
PubMed ID: 21478574
G.T. Buzzard, D. Xiu.
Variance-based Global Sensitivity Analysis via Sparse-grid Interpolation and Cubature, In Communications in Computational Physics, Vol. 9, No. 3, pp. 542--567. 2011.
DOI: 10.4208/cicp.230909.160310s
The stochastic collocation method using sparse grids has become a popular choice for performing stochastic computations in high dimensional (random) parameter space. In addition to providing highly accurate stochastic solutions, the sparse grid collocation results naturally contain sensitivity information with respect to the input random parameters. In this paper, we use the sparse grid interpolation and cubature methods of Smolyak together with combinatorial analysis to give a computationally efficient method for computing the global sensitivity values of Sobol'. This method allows for approximation of all main effect and total effect values from evaluation of f on a single set of sparse grids. We discuss convergence of this method, apply it to several test cases and compare to existing methods. As a result which may be of independent interest, we recover an explicit formula for evaluating a Lagrange basis interpolating polynomial associated with the Chebyshev extrema. This allows one to manipulate the sparse grid collocation results in a highly efficient manner.
Keywords: Stochastic collocation, sparse grids, sensitivity analysis, Smolyak, Sobol
C.D. Cantwell, S.J. Sherwin, R.M. Kirby, P.H.J. Kelly.
From h to p Efficiently: Strategy Selection for Operator Evaluation on Hexahedral and Tetrahedral Elements, In Computers and Fluids, Vol. 43, No. 1, pp. 23--28. 2011.
DOI: 10.1016/j.compfluid.2010.08.012
C.D. Cantwell, S.J. Sherwin, R.M. Kirby, P.H.J. Kelly.
From h to p Efficiently: Selecting the Optimal Spectral/hp Discretisation in Three Dimensions, In Mathematical Modelling of Natural Phenomena, Vol. 6, No. 3, pp. 84--96. 2011.
G. Chen, D. Palke, Z. Lin, H. Yeh, P. Vincent, R.S. Laramee, E. Zhang.
Asymmetric Tensor Field Visualization for Surfaces, In IEEE Transactions on Visualization and Computer Graphics, Vol. 17, No. 12, IEEE, pp. 1979-1988. Dec, 2011.
DOI: 10.1109/tvcg.2011.170
Guoning Chen, Qingqing Deng, Andrzej Szymczak, Robert S. Laramee, and Eugene Zhang.
Morse Set Classification and Hierarchical Refinement using Conley Index, In IEEE Transactions on Visualization and Computer Graphics (TVCG), Vol. 18, No. 5, pp. 767--782. June, 2011.
DOI: 10.1109/TVCG.2011.107
PubMed ID: 21690641
Morse decomposition provides a numerically stable topological representation of vector fields that is crucial for their rigorous interpretation. However, Morse decomposition is not unique, and its granularity directly impacts its computational cost. In this paper, we propose an automatic refinement scheme to construct the Morse Connection Graph (MCG) of a given vector field in a hierarchical fashion. Our framework allows a Morse set to be refined through a local update of the flow combinatorialization graph, as well as the connection regions between Morse sets. The computation is fast because the most expensive computation is concentrated on a small portion of the domain. Furthermore, the present work allows the generation of a topologically consistent hierarchy of MCGs, which cannot be obtained using a global method. The classification of the extracted Morse sets is a crucial step for the construction of the MCG, for which the Poincaré index is inadequate. We make use of an upper bound for the Conley index, provided by the Betti numbers of an index pair for a translation along the flow, to classify the Morse sets. This upper bound is sufficiently accurate for Morse set classification and provides supportive information for the automatic refinement process. An improved visualization technique for MCG is developed to incorporate the Conley indices. Finally, we apply the proposed techniques to a number of synthetic and real-world simulation data to demonstrate their utility.
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