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Journal ArticleDOI

Shape-based interpolation of multidimensional grey-level images

TLDR
The authors have conducted several evaluation studies involving patient computed tomography and magnetic resonance data as well as mathematical phantoms indicate that the new method produces more accurate results than commonly used grey-level linear interpolation methods, although at the cost of increased computation.
Abstract
Shape-based interpolation as applied to binary images causes the interpolation process to be influenced by the shape of the object. It accomplishes this by first applying a distance transform to the data. This results in the creation of a grey-level data set in which the value at each point represents the minimum distance from that point to the surface of the object. (By convention, points inside the object are assigned positive values; points outside are assigned negative values.) This distance transformed data set is then interpolated using linear or higher-order interpolation and is then thresholded at a distance value of zero to produce the interpolated binary data set. Here, the authors describe a new method that extends shape-based interpolation to grey-level input data sets. This generalization consists of first lifting the n-dimensional (n-D) image data to represent it as a surface, or equivalently as a binary image, in an (n+1)-dimensional [(n+1)-D] space. The binary shape-based method is then applied to this image to create an (n+1)-D binary interpolated image. Finally, this image is collapsed (inverse of lifting) to create the n-D interpolated grey-level data set. The authors have conducted several evaluation studies involving patient computed tomography (CT) and magnetic resonance (MR) data as well as mathematical phantoms. They all indicate that the new method produces more accurate results than commonly used grey-level linear interpolation methods, although at the cost of increased computation.

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Citations
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Journal ArticleDOI

A linear time algorithm for computing exact Euclidean distance transforms of binary images in arbitrary dimensions

TL;DR: The algorithm, which is based on dimensionality reduction and partial Voronoi diagram construction, can be used for computing the DT for a wide class of distance functions, including the L/sub p/ and chamfer metrics.
Journal ArticleDOI

Prolog to a chronology of interpolation: from ancient astronomy to modern signal and image processing

TL;DR: A chronological overview of the developments in interpolation theory, from the earliest times to the present date, brings out the connections between the results obtained in different ages, thereby putting the techniques currently used in signal and image processing into historical perspective.
Book ChapterDOI

Image interpolation and resampling

TL;DR: This chapter presents a survey of interpolation and resampling techniques in the context of exact, separable interpolation of regularly sampled data, and explains why the approximation order inherent in the synthesis function is important to limit these interpolation artifacts.
Journal ArticleDOI

Quantitative evaluation of convolution-based methods for medical image interpolation.

TL;DR: An evaluation of convolution-based interpolation methods and rigid transformations for the specific task of applying geometrical transformations to medical images shows that spline interpolation is to be preferred over all other methods, both for its accuracy and its relatively low computational cost.
Journal ArticleDOI

SPASM: A 3D-ASM for segmentation of sparse and arbitrarily oriented cardiac MRI data

TL;DR: In this article, a 3D-ASM-based segmentation method was proposed for cardiac MRI image data sets consisting of multiple planes with arbitrary orientations, and with large undersampled regions.
References
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Journal ArticleDOI

Distance transformations in arbitrary dimensions

TL;DR: The purpose of this paper is to generalize these distance transformation families to higher dimensions and to compare the computed distances with the Euclidean distance.
Journal ArticleDOI

Shape-based interpolation of multidimensional objects

TL;DR: A shape-based interpolation scheme for multidimensional images is presented that not only minimizes user involvement in interactive segmentation, but also leads to more accurate representation and depiction of dynamic as well as static objects.
Journal ArticleDOI

Shape-based interpolation

TL;DR: In this article, a generalization of the chamfer distance calculation is proposed, which allows the simultaneous calculation of distances within the object and its background by two consecutive chamfering processes.
Journal ArticleDOI

Matching of tomographic slices for interpolation

TL;DR: An automatic method that can transform a sequence of tomographic image slices into an isotropic volume data set is described, and experimental results showing the matching and interpolation of magnetic resonance slices and computed tomography slices are presented.
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