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Gábor Székely
Computer Vision Laboratory
Department of Information Technology and Electrical Engineering, ETH Zurich
Zurich, Switzerland
Homepage
Statistical models for supporting medical diagnosis, therapy and training 
Statistical shape and appearance models have been oroginally proposed
for supporting image segmentation based on prior knowledge, gained from
manually segmented training examples. While these techniques are still
very powerful tools for the segmentation of anatomical structures from
two and three dimensional radiological images, a wide range of new
possible directions for their clinical application have been identified
during the past 15 years. The talk will present several examples,
illustrating the potential of statistical models for supporting diagnosis,
therapy planning, image guided navigation and medical education. Special
emphasis will be given to their extension to describe spatio-temporal
processes like organ motion and the investigation of their predictive
power, allowing to predict information (like organ shape or appearance)
from sparse and incomplete observations.
Biography:
Gábor Székely studied chemical engineering and applied mathematics in
Budapest, Hungary. He got his PhD in 1985 in analytical chemistry from
the Technical University of Budapest. Between 1986 and 1990 he worked as
a software specialist in a company producing NMR-equipment (Spectrospin,
Fällenden, CH). In 1991 he joined the Computer Vision Laboratory of the
ETH Zurich, where he got the venia legendi at the Department of Electrical
Engineering in 1997. He has become Associate Professor in 2002 and full
Professor in 2008 for Medical Image Analysis and Visualization. Since 2001
he is director of the Swiss National Center of Competence in Research on
Computer Aided and Image Guided Medical Interventions (NCCR Co-Me,
http://co-me.ch). His research concentrates on the development of
information technology support tools for clinical diagnosis, therapy and
training, as well as the application of simulation techniques for better
understanding of complex biomedical processes.
Gabriela Csurka
Textual and Visual Pattern Analysis
Xerox Research Center Europe
Meylan, France
Homepage
Multi-modal Fusion Strategies for Image Auto-annotation and Retrieval 
Information, especially digital information, is no longer mono-modal:
web pages can contain text, images, animations, sound and video; the
valuable content within a photo sharing site can be found in tags and
comments as much as in the actual visual content it contains. Nowadays,
it is difficult to visit a page within a popular social network without
finding a large variety of content modes surrounded by a rich structure
of social information such as profiles, interest groups, consumer
behaviors or simple conversations. The same situation holds for
corporate documents and document collections. This major shift in the
way we access content and what type of content we access poses a strong
need for tools that enable interaction with multi-modal information.
The scientific challenge is therefore to understand the nature of the
interaction between these modalities, and in particular how can we
bridge the semantic gap between low-level features (extracted from
images) and high-level concepts (in which users are interested on).
Therefore, in the first part of the talk I will first present the Bag of
Visual Words and Fisher Vectors image representations. These
representations have shown state-of-the-art performance both in
supervised (categorization) and unsupervised (retrieval) tasks. Then,
after a brief introduction on text representation with Language Models,
I will present different information fusion techniques (early and late
fusion, cross-media similarity measures). I will show that if these
image features are appropriately combined with textual information, the
multi-modal system generally outperforms the mono-modal systems. I will
finish the talk showing some of the applications of these multi-modal
fusion strategies, such as image-auto annotation, multi-modal retrieval
and content creation.
Biography:
Gabriela Csurka is a research scientist in the Textual and Visual Pattern Analysis
team at Xerox Research Centre Europe (XRCE). She obtained her Ph.D. degree (1996) in
Computer Science from University of Nice Sophia - Antipolis. Before joining XRCE in
2002, she worked in fields such as stereo vision and projective reconstruction at
INRIA (Sophia Antipolis, Rhone Alpes and IRISA) and image and video watermarking at
University of Geneva and Institute Eurécom, Sophia Antipolis. Author of several
publications in main journals and international conferences, she is also an active
reviewer both for international journals (IJCV, TPAMI, TIP, PATREC, etc) and main
computer vision conferences. Her current research interest concerns the exploration
of new technologies for image content and aesthetic analysis, mono and cross-modal
image categorization, semantic segmentation and retrieval.
Lilla Zöllei
A.A.Martinos Center for Biomedical Imaging
Massachusetts General Hospital
Charlestown, MA, USA
Homepage
Robust and Accurate Registration of Structural MRI Images, Ex-vivo to
In-vivo Acquisitions and Diffusion Tractography 
I will provide a concise introduction to the problem of spatial
normalization of medical images and introduce algorithms that have been
widely used in the literature. In particular, I will focus on brain
imaging and achieving highly accurate and robust results in both cortical
and subcortical areas. As functional and diffusion imaging is gaining
great momentum in neuroscience, it is essential to establish techniques
and frameworks that maintain and describe correspondence between them,
both in the intra- and inter-subject scenarios. Following a general
description of both the related mathematical and clinical problems, I will
introduce a specific framework that proposes a robust and highly accurate
solution for structural MRI images, ex-vivo and in-vivo MRI acquisitions
and of diffusion tractography. The lecture will incorporate findings from
the following papers:
- G.M. Postelnicu, L. Zöllei, B. Fischl: "Combined Volumetric and Surface
Registration", IEEE Transactions on Medical Imaging (TMI), Vol 28 (4),
April 2009, p. 508-522
- L. Zöllei, A. Stevens, K. Huber, S. Kakunoori, B. Fischl: "Improved
Tractography Alignment Using Combined Volumetric and Surface
Registration", NeuroImage 51 (2010), 206-213
- L. Zöllei, A. Stevens, K. Huber, S. Kakunoori, B. Fischl: "Non-linear
registration of intra-subject ex-vivo and in-vivo brain acquisitions" Human Brain
Mapping, June 2010
Biography:
Lilla Zollei is currently an Instructor at the Martinos Center for
Biomedical Imaging, MAssachusetts General Hospital. Her research interests
include pair-wise and group-wise image registration, information
theoretical solutions in signal and image processing, diffusion imaging
and the construction of digital brain atlases. She was born in Szeged,
Hungary. She obtained her BA in Mathematics and Computer Science at Mount
Holyoke College, South Hadley, MA and her MS and PhD in Electrical
Engineering and Computer Science from the Massachusetts Institute of
Technology, Cambridge, MA in 2002 and 2006, respectively. After finishing,
she was awarded the Chateaubriand Fellowship and spent a year as a postdoc
in the Applied Mathematics Department of Ecole Centrale de Paris, Paris,
France with Prof Nikos Paragios. She then returned to Boston and started
working with Bruce Fischl at the Laboratory of Computational
Neuroscience, MGH first as a Research Fellow and then as
an Instructor.
* The participation of the invited speakers is supported by:
European Union and the European Regional Development Fund, project TÁMOP-4.2.1/B-09/1/KONV-2010-0005.
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