Abstract: We quantitatively analyze the performance of exact and approximate nearest-neighbors algorithms on increasingly high-dimensional problems in the con-text of sampling-based motion planning. We study the impact of the dimension, number of samples, distance metrics, and sampling schemes on the efficiency and accuracy of nearest-neighbors algorithms. Efficiency measures computation time and accuracy indicates similarity between exact and approximate nearest neighbors. Our analysis indicates that after a critical dimension, which varies between 15 and 30, exact nearest-neighbors algorithms examine almost all the samples. As a result, exact nearest-neighbors algorithms become impractical for sampling-based motion planners when a conside...
There are many nearest neighbor algorithms tailormade for ICP, but most of them require special inpu...
In many computer vision problems, answering the nearest neighbor queries efficiently, especially in ...
Consider a set S of n data points in real d-dimensional space, R-d, where distances are measured usi...
The motion planning problem consists of finding a valid path for a robot (movable object) from a sta...
In its original formulation, the motion planning problem considers the search of a robot path from a...
In this paper, we discuss the field of sampling-based motion planning. In contrast to methods that c...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Aeronautics and Astronautics, 2...
In the last fifteen years, sampling-based planners like the Probabilistic Roadmap Method (PRM) have ...
Given n data points in d-dimensional space, nearest-neighbor searching involves determining the near...
Abstract. Nearest neighbor searching is a fundamental building block of most sampling-based motion p...
Abstract. Given n data points in d-dimensional space, nearest-neighbor searching involves determinin...
Nearest-neighbor finding is a major bottleneck for sampling-based motion planning algorithms. The co...
Consider a set S of n data points in real d-dimensional space, R d , where distances are measured ...
We describe a recursive algorithm to quickly compute the N nearest neighbors according to a similari...
There are two main philosophies for addressing the motion planning problem, in Formulation 4.1 from ...
There are many nearest neighbor algorithms tailormade for ICP, but most of them require special inpu...
In many computer vision problems, answering the nearest neighbor queries efficiently, especially in ...
Consider a set S of n data points in real d-dimensional space, R-d, where distances are measured usi...
The motion planning problem consists of finding a valid path for a robot (movable object) from a sta...
In its original formulation, the motion planning problem considers the search of a robot path from a...
In this paper, we discuss the field of sampling-based motion planning. In contrast to methods that c...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Aeronautics and Astronautics, 2...
In the last fifteen years, sampling-based planners like the Probabilistic Roadmap Method (PRM) have ...
Given n data points in d-dimensional space, nearest-neighbor searching involves determining the near...
Abstract. Nearest neighbor searching is a fundamental building block of most sampling-based motion p...
Abstract. Given n data points in d-dimensional space, nearest-neighbor searching involves determinin...
Nearest-neighbor finding is a major bottleneck for sampling-based motion planning algorithms. The co...
Consider a set S of n data points in real d-dimensional space, R d , where distances are measured ...
We describe a recursive algorithm to quickly compute the N nearest neighbors according to a similari...
There are two main philosophies for addressing the motion planning problem, in Formulation 4.1 from ...
There are many nearest neighbor algorithms tailormade for ICP, but most of them require special inpu...
In many computer vision problems, answering the nearest neighbor queries efficiently, especially in ...
Consider a set S of n data points in real d-dimensional space, R-d, where distances are measured usi...