We propose a new exact Euclidean distance transformation (DT) by propagation, using bucket sorting. A fast but approximate DT is first computed using a coarse neighborhood. A sequence of larger neighborhoods is then used to gradually improve this approximation. Computations are kept short by restricting the use of these large neighborhoods to the tile borders in the Voronoi diagram of the image. We assess the computational cost of this new algorithm and show that it is both smaller and less image-dependent than all other DTs recently proposed. Contrary to all other propagation DTs, it appears to remain o(n2) even in the worst-case scenario
A new general algorithm for computing distance transforms of digital images is presented. The algori...
The Distance Transform (DT) is a general operator forming the basis of many methods in computer visi...
In this paper, we propose an efficient algorithm for com-puting the Euclidean distance transform of ...
We propose a new exact Euclidean distance transformation (DT) by propagation, using bucket sorting. ...
A new unique class of foldable distance transforms of digital images (DT) is introduced, baptized: F...
The k-distance transformation (k-DT) computes the k nearest patterns from each location on a discret...
Abstract—A sequential algorithm is presented for computing the exact Euclidean distance transform (D...
In this paper, we propose an efficient algorithm, i.e., PBEDT, for short, to compute the exact Eucli...
Fast Exact Euclidean Distance (FEED) transformation is introduced, starting from the inverse of the ...
We describe an algorithm that computes a “translated” 2D Neighborhood-Sequence Distance Transform (D...
International audienceIn many applications, separable algorithms have demonstrated their efficiency ...
In many applications, separable algorithms have demonstrated their efficiency to perform high perfor...
The Fast Exact Euclidean Distance transform (FEED) algorithm is extended beyond two dimensions. 3D-F...
The distance calculation in an image is a basic operation in computer vision, pattern recognition, a...
International audienceThis paper presents a path-based distance where local displacement costs vary ...
A new general algorithm for computing distance transforms of digital images is presented. The algori...
The Distance Transform (DT) is a general operator forming the basis of many methods in computer visi...
In this paper, we propose an efficient algorithm for com-puting the Euclidean distance transform of ...
We propose a new exact Euclidean distance transformation (DT) by propagation, using bucket sorting. ...
A new unique class of foldable distance transforms of digital images (DT) is introduced, baptized: F...
The k-distance transformation (k-DT) computes the k nearest patterns from each location on a discret...
Abstract—A sequential algorithm is presented for computing the exact Euclidean distance transform (D...
In this paper, we propose an efficient algorithm, i.e., PBEDT, for short, to compute the exact Eucli...
Fast Exact Euclidean Distance (FEED) transformation is introduced, starting from the inverse of the ...
We describe an algorithm that computes a “translated” 2D Neighborhood-Sequence Distance Transform (D...
International audienceIn many applications, separable algorithms have demonstrated their efficiency ...
In many applications, separable algorithms have demonstrated their efficiency to perform high perfor...
The Fast Exact Euclidean Distance transform (FEED) algorithm is extended beyond two dimensions. 3D-F...
The distance calculation in an image is a basic operation in computer vision, pattern recognition, a...
International audienceThis paper presents a path-based distance where local displacement costs vary ...
A new general algorithm for computing distance transforms of digital images is presented. The algori...
The Distance Transform (DT) is a general operator forming the basis of many methods in computer visi...
In this paper, we propose an efficient algorithm for com-puting the Euclidean distance transform of ...