The computation speed for distance transforms becomes important in a wide variety of image processing applications. Current ITK library filters do not see any benefit from a multithreading environment. We introduce an N-dimensional signed parallel implementation of the exact Euclidean distance transform algorithm developed by Maurer et al.[1] with a theoretical complexity of O(n/p) for n voxels and p threads. Through this parallelization and efficient use of data structures we obtain approximately 3 times mean speedup on standard tests on a 4-processor machine compared with the current ITK exact Euclidean distance transform filter[4].
In this paper, we propose an efficient algorithm, i.e., PBEDT, for short, to compute the exact Eucli...
Given a 2-D binary image of size n×n, Euclidean Distance Map (EDM) is a 2-D array of the same size s...
This thesis presents a comparison of three different parallel algorithms, adapted to calculate the a...
The computation speed for distance transforms becomes important in a wide variety of image processin...
The Euclidean distance transform (EDT) is used in various methods in pattern recognition, computer v...
The distance calculation in an image is a basic operation in computer vision, pattern recognition, a...
Abstract—A sequential algorithm is presented for computing the exact Euclidean distance transform (D...
This paper describes a new parallel algorithm for Euclidean Distance Transform on the Polymorphic Pr...
A new unique class of foldable distance transforms of digital images (DT) is introduced, baptized: F...
A new general algorithm for computing distance transforms of digital images is presented. The algori...
Transformada de distância euclidiana (TDE) é a operação que converte uma imagem binária composta de ...
A new general algorithm fur computing distance transforms of digital images is presented. The algori...
A fully-parallelized work-time optimal algorithm is presented for computing the exact Euclidean Dist...
A distance transform converts a binary image consisting of foreground (feature) and background (nonf...
Fast Exact Euclidean Distance (FEED) transformation is introduced, starting from the inverse of the ...
In this paper, we propose an efficient algorithm, i.e., PBEDT, for short, to compute the exact Eucli...
Given a 2-D binary image of size n×n, Euclidean Distance Map (EDM) is a 2-D array of the same size s...
This thesis presents a comparison of three different parallel algorithms, adapted to calculate the a...
The computation speed for distance transforms becomes important in a wide variety of image processin...
The Euclidean distance transform (EDT) is used in various methods in pattern recognition, computer v...
The distance calculation in an image is a basic operation in computer vision, pattern recognition, a...
Abstract—A sequential algorithm is presented for computing the exact Euclidean distance transform (D...
This paper describes a new parallel algorithm for Euclidean Distance Transform on the Polymorphic Pr...
A new unique class of foldable distance transforms of digital images (DT) is introduced, baptized: F...
A new general algorithm for computing distance transforms of digital images is presented. The algori...
Transformada de distância euclidiana (TDE) é a operação que converte uma imagem binária composta de ...
A new general algorithm fur computing distance transforms of digital images is presented. The algori...
A fully-parallelized work-time optimal algorithm is presented for computing the exact Euclidean Dist...
A distance transform converts a binary image consisting of foreground (feature) and background (nonf...
Fast Exact Euclidean Distance (FEED) transformation is introduced, starting from the inverse of the ...
In this paper, we propose an efficient algorithm, i.e., PBEDT, for short, to compute the exact Eucli...
Given a 2-D binary image of size n×n, Euclidean Distance Map (EDM) is a 2-D array of the same size s...
This thesis presents a comparison of three different parallel algorithms, adapted to calculate the a...