Please use this identifier to cite or link to this item: https://hdl.handle.net/20.500.14279/29349
Title: Model-based interpretation of complex and variable images
Authors: Taylor, Chris J. 
Cootes, Timothy F. 
Lanitis, Andreas 
Edwards, Gareth J. 
Smyth, P. 
Kotcheff, A.C.W. 
Major Field of Science: Engineering and Technology;Social Sciences
Field Category: Computer and Information Sciences;Design
Keywords: Geometric shapes;Spatial models;Parametric models;Statistical models;Illustration;Landmarks;Principal components analysis;Images;Three dimensional modeling;Two dimensional modeling
Issue Date: 29-Aug-1997
Source: Philosophical Transactions of the Royal Society B: Biological Sciences, 1997, vol.352, no.1358, pp.1267–1274
Volume: 352
Issue: 1358
Start page: 1267
End page: 1274
Journal: Philosophical Transactions of the Royal Society B: Biological Sciences 
Abstract: The ultimate goal of machine vision is image understanding-the ability not only to recover image structure but also to know what it represents. By definition, this involves the use of models which describe and label the expected structure of the world. Over the past decade, model-based vision has been applied successfully to images of man-made objects. It has proved much more difficult to develop model-based approaches to the interpretation of images of complex and variable structures such as faces or the internal organs of the human body (as visualized in medical images). In such cases it has been problematic even to recover image structure reliably, without a model to organize the often noisy and incomplete image evidence. The key problem is that of variability. To be useful, a model needs to be specific-that is, to be capable of representing only 'legal' examples of the modelled object(s). It has proved difficult to achieve this whilst allowing for natural variability. Recent developments have overcome this problem; it has been shown that specific patterns of variability in shape and grey-level appearance can be captured by statistical models that can be used directly in image interpretation. The details of the approach are outlined and practical examples from medical image interpretation and face recognition are used to illustrate how previously intractable problems can now be tackled successfully. It is also interesting to ask whether these results provide any possible insights into natural vision; for example, we show that the apparent changes in shape which result from viewing three-dimensional objects from different viewpoints can be modelled quite well in two dimensions; this may lend some support to the 'characteristic views' model of natural vision.
URI: https://hdl.handle.net/20.500.14279/29349
ISSN: 09628436
DOI: 10.1098/rstb.1997.0109
Rights: The Royal Society
Type: Article
Affiliation : The University of Manchester 
Publication Type: Peer Reviewed
Appears in Collections:Άρθρα/Articles

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