Learning Shape: Optimal Models for Analysing Natural Variability
نویسنده
چکیده
Statistical shape models have wide application in biomedical image analysis – both for image segmentation and morphometry. This thesis addresses an important issue in shape modelling, that of establishing correspondence between a set of shapes. Current methods involve either manual annotation of the data (the current ‘gold standard’) or establishing correspondences in an essentially arbitrary manner. The thesis establishes a principled framework for establishing correspondences completely automatically by treating this as part of the learning process. Ideas from information theory are used to develop an objective function that measures the utility of a model, based on the minimum description length principle. Model-building can then be posed as the problem of finding the set of correspondences that optimise the objective function. Efficientmethods are presented for manipulating correspondences via re-parameterisation and for optimising the objective function. Practical results are presented for both 2D and 3D training sets of shapes from medical images. A quantitative evaluation shows that the resulting models have better compactness, generalisation ability and specificity than those obtained using existing methods. A 3D model is used in a practical application to explore the possibility of using 3Dmagnetic resonance images to detect differences in shape between the hippocampi of schizophrenic patients and normal controls. A more significant effect is demonstrated using the newmethod than that obtained using the best previous approach.
منابع مشابه
Investigating and Analysing Instructional Design and Workplace Learning Models and Selection of Adaptive Model to Optimize Organizational Training in Petrochemical Industry
The present research aimed to analyze instructional design,workplace learning, and selecting the optimum model of learning for human resources training in petrochemical industry.The previous roles have become faint and new opportunities have appeared in petrochemical industry by starting the process of privatization and changing the nature of the company from holding to a governance and develop...
متن کاملآشکارسازی تغییرات بارشهای حدی و نسبت دهی به تغییر اقلیم با استفاده از روش استاندارد انگشت نگاشت بهینه (مطالعه موردی : جنوب غرب ایران)
Understanding the changes in extreme precipitation over a region is very important for adaptation strategies to climate change. One of the most important topics in this field is detection and attribution of climate change. Over the past two decades, there has been an increasing interest for scientists, engineers and policy makers to study about the effects of external forcing to the climatic va...
متن کاملAutomatic Construction of 3D Statistical Deformation Models Using Non-rigid Registration
In this paper we introduce the concept of statistical deformation models (SDM) which allow the construction of average models of the anatomy and their variability. SDMs are build by performing a statistical analysis of the deformations required to map anatomical features in one subject into the corresponding features in another subject. The concept of SDMs is similar to active shape models (ASM...
متن کاملCross-Sectional Relative Price Variability and Inflation in Turkey: Time Varying Estimation
Abstract This study investigates the empirical validity of the variability hypothesis in Turkey for the period of February 2005-November 2015, by using cross-sectional relative price data and by focusing on the assumptions of linearity and stability. The linearity assumption between the two variables is ensured by estimating quadratic regression equation. The assumption of stability is secur...
متن کاملLearning Three-Dimensional Shape Models for Sketch Recognition
Artifacts made by humans, such as items of furniture and houses, exhibit an enormous amount of variability in shape. In this paper, we concentrate on models of the shapes of objects that are made up of fixed collections of sub-parts whose dimensions and spatial arrangement exhibit variation. Our goals are: to learn these models from data and to use them for recognition. Our emphasis is on learn...
متن کامل