Statistical Shape and Appearance Models for Segmentation and Classification
نویسنده
چکیده
In this dissertation we develop and apply models of shape and models of image intensities (appearance models) in object-based image processing tasks. We make contributions in three areas of interest: constructing novel flexible models of shape and of image intensities, using these models to extract object boundaries from images, and analyzing differences between groups of shapes from given, extracted object boundaries. In the shape and appearance model construction and application areas of focus we are motivated by the task of extracting the object boundaries from images by an evolving closed curve technique named curve-evolution. We develop and apply novel models of shape and models of appearance for incorporation in such curve-evolution-based object boundary extraction. In our first major contribution, we start with the statistical shape model based on maximum entropy principle and designed to capture perceptual shape similarity of training shape samples. In sampling experiments, this statistical shape model has been shown to generate new shape samples with prominent visual features of the original training shapes used to construct the model. For the first time, we develop methods to incorporate this maximum entropy model into object boundary extraction tasks. We show that indeed incorporation of such a prior can have a dramatic effect in object boundary extraction
منابع مشابه
A supervised learning framework of statistical shape and probability priors for automatic prostate segmentation in ultrasound images
Prostate segmentation aids in prostate volume estimation, multi-modal image registration, and to create patient specific anatomical models for surgical planning and image guided biopsies. However, manual segmentation is time consuming and suffers from inter-and intra-observer variabilities. Low contrast images of trans rectal ultrasound and presence of imaging artifacts like speckle, micro-calc...
متن کاملPartitioned Shape Modeling with On-the-Fly Sparse Appearance Learning for Anterior Visual Pathway Segmentation
MRI quantification of cranial nerves such as anterior visual pathway (AVP) in MRI is challenging due to their thin small size, structural variation along its path, and adjacent anatomic structures. Segmentation of pathologically abnormal optic nerve (e.g. optic nerve glioma) poses additional challenges due to changes in its shape at unpredictable locations. In this work, we propose a partitione...
متن کاملA Supervised Learning Framework for Automatic Prostate Segmentation in Trans Rectal Ultrasound Images
Heterogeneous intensity distribution inside the prostate gland, significant variations in prostate shape, size, inter dataset contrast variations, and imaging artifacts like shadow regions and speckle in Trans Rectal Ultrasound (TRUS) images challenge computer aided automatic or semi-automatic segmentation of the prostate. In this paper, we propose a supervised learning schema based on random f...
متن کاملStatistical shape models for 3D medical image segmentation: A review
Statistical shape models (SSMs) have by now been firmly established as a robust tool for segmentation of medical images. While 2D models have been in use since the early 1990 s, wide-spread utilization of three-dimensional models appeared only in recent years, primarily made possible by breakthroughs in automatic detection of shape correspondences. In this article, we review the techniques requ...
متن کاملEfficient and generalizable statistical models of shape and appearance for analysis of cardiac MRI
We present a framework for the analysis of short axis cardiac MRI, using statistical models of shape and appearance. The framework integrates temporal and structural constraints and avoids common optimization problems inherent in such high dimensional models. The first contribution is the introduction of an algorithm for fitting 3D active appearance models (AAMs) on short axis cardiac MRI. We o...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
دوره شماره
صفحات -
تاریخ انتشار 2006