For any two point sets $A,B \subset \mathbb{R}^d$ of size up to $n$, the Chamfer distance from $A$ to $B$ is defined as $\text{CH}(A,B)=\sum_{a \in A} \min_{b \in B} d_X(a,b)$, where $d_X$ is the underlying distance measure (e.g., the Euclidean or Manhattan distance). The Chamfer distance is a popular measure of dissimilarity between point clouds, used in many machine learning, computer vision, and graphics applications, and admits a straightforward $O(d n^2)$-time brute force algorithm. Further, the Chamfer distance is often used as a proxy for the more computationally demanding Earth-Mover (Optimal Transport) Distance. However, the \emph{quadratic} dependence on $n$ in the running time makes the naive approach intractable for large datase...
Consider a set S of n data points in real d-dimensional space, R-d, where distances are measured usi...
Chamfer distances are defined in the discrete space; they rely on the definition and the application...
International audienceThis paper presents a path-based distance where local displacement costs vary ...
The distance transform has found many applications in image analysis. The Euclidean distance transfo...
Let S and T be two finite sets of points on the real line with |S| + |T| = n and |S| > |T|. We c...
Abstract. The Earth Mover Distance (EMD) between point sets A and B is the minimum cost of a biparti...
The Earth Mover Distance (EMD) between two equal-size sets of points in R d is defined to be the min...
Given two distributions $P$ and $S$ of equal total mass, the Earth Mover's Distance measures the cos...
We provide a general framework for getting expected linear time constant factor approximations (and ...
In many applications, separable algorithms have demonstrated their efficiency to perform high perfor...
An algorithm Mscan is proposed for the computation of the distance transform of a feature in an imag...
Let S denote a set of n points in d-dimensional space, Rd, and let dist(p,q) denote the distance bet...
Medial axis, also known as centres of maximal disks, is a representation of a shape, which is useful...
Abstract. This paper describes novel and fast, simple and robust algorithm with O(N) expected comple...
Consider a set S of n data points in real d-dimensional space, R d , where distances are measured ...
Consider a set S of n data points in real d-dimensional space, R-d, where distances are measured usi...
Chamfer distances are defined in the discrete space; they rely on the definition and the application...
International audienceThis paper presents a path-based distance where local displacement costs vary ...
The distance transform has found many applications in image analysis. The Euclidean distance transfo...
Let S and T be two finite sets of points on the real line with |S| + |T| = n and |S| > |T|. We c...
Abstract. The Earth Mover Distance (EMD) between point sets A and B is the minimum cost of a biparti...
The Earth Mover Distance (EMD) between two equal-size sets of points in R d is defined to be the min...
Given two distributions $P$ and $S$ of equal total mass, the Earth Mover's Distance measures the cos...
We provide a general framework for getting expected linear time constant factor approximations (and ...
In many applications, separable algorithms have demonstrated their efficiency to perform high perfor...
An algorithm Mscan is proposed for the computation of the distance transform of a feature in an imag...
Let S denote a set of n points in d-dimensional space, Rd, and let dist(p,q) denote the distance bet...
Medial axis, also known as centres of maximal disks, is a representation of a shape, which is useful...
Abstract. This paper describes novel and fast, simple and robust algorithm with O(N) expected comple...
Consider a set S of n data points in real d-dimensional space, R d , where distances are measured ...
Consider a set S of n data points in real d-dimensional space, R-d, where distances are measured usi...
Chamfer distances are defined in the discrete space; they rely on the definition and the application...
International audienceThis paper presents a path-based distance where local displacement costs vary ...