In this paper, we propose an efficient algorithm, i.e., PBEDT, for short, to compute the exact Euclidean distance transform (EDT) of a binary image in arbitrary dimensions. The PBEDT is based on independent scan and implemented in a recursive way, i.e., the EDT of a d-dimensional image is able to be computed from the EDTs of its (d-1)-dimensional sub-images. In each recursion, all of the rows in the current dimensional direction are processed one by one. The points in the current processing row and their closest feature points in (d-1)-dimensional sub-images can be shown in a Euclidean plane. By using the geometric properties of the perpendicular bisector, the closest feature points of (d-1)-dimensional subimages are easily verified so as t...
A fully-parallelized work-time optimal algorithm is presented for computing the exact Euclidean Dist...
We propose a new exact Euclidean distance transformation (DT) by propagation, using bucket sorting. ...
Fast Exact Euclidean Distance (FEED) transformation is introduced, starting from the inverse of the ...
In this paper, we propose an efficient algorithm for com-puting the Euclidean distance transform of ...
Abstract—A sequential algorithm is presented for computing the exact Euclidean distance transform (D...
The distance calculation in an image is a basic operation in computer vision, pattern recognition, a...
The Euclidean distance transform of a binary image is the function that assigns to every pixel the E...
Given a binary image, Euclidean distance transform is to compute for each pixel the Euclidean distan...
A new general algorithm for computing distance transforms of digital images is presented. The algori...
A new general algorithm fur computing distance transforms of digital images is presented. The algori...
In this paper we prove an equivalence relation between the distance transform of a binary image, whe...
In this paper we prove an equivalence relation between the distance transform of a binary image, whe...
A new unique class of foldable distance transforms of digital images (DT) is introduced, baptized: F...
The Distance Transform (DT) is a general operator forming the basis of many methods in computer visi...
A distance transform converts a binary image consisting of foreground (feature) and background (nonf...
A fully-parallelized work-time optimal algorithm is presented for computing the exact Euclidean Dist...
We propose a new exact Euclidean distance transformation (DT) by propagation, using bucket sorting. ...
Fast Exact Euclidean Distance (FEED) transformation is introduced, starting from the inverse of the ...
In this paper, we propose an efficient algorithm for com-puting the Euclidean distance transform of ...
Abstract—A sequential algorithm is presented for computing the exact Euclidean distance transform (D...
The distance calculation in an image is a basic operation in computer vision, pattern recognition, a...
The Euclidean distance transform of a binary image is the function that assigns to every pixel the E...
Given a binary image, Euclidean distance transform is to compute for each pixel the Euclidean distan...
A new general algorithm for computing distance transforms of digital images is presented. The algori...
A new general algorithm fur computing distance transforms of digital images is presented. The algori...
In this paper we prove an equivalence relation between the distance transform of a binary image, whe...
In this paper we prove an equivalence relation between the distance transform of a binary image, whe...
A new unique class of foldable distance transforms of digital images (DT) is introduced, baptized: F...
The Distance Transform (DT) is a general operator forming the basis of many methods in computer visi...
A distance transform converts a binary image consisting of foreground (feature) and background (nonf...
A fully-parallelized work-time optimal algorithm is presented for computing the exact Euclidean Dist...
We propose a new exact Euclidean distance transformation (DT) by propagation, using bucket sorting. ...
Fast Exact Euclidean Distance (FEED) transformation is introduced, starting from the inverse of the ...