Density-based nonparametric clustering techniques, such as the mean shift algorithm, are well known for their flexibility and effectiveness in real-world vision-based problems. The underlying kernel density estimation process can be very expensive on large datasets. In this paper, the divide-and-conquer method is proposed to reduce these computational requirements. The dataset is first partitioned into a number of small, compact clusters. Components of the kernel estimator in each local cluster are then fit to a single, representative density function. The key novelty presented here is the efficient derivation of the representative density function using concepts from function approximation, such that the expensive kernel density estimator ...
The mean-shift algorithm is a robust and easy method of finding local extrema in the density distrib...
Numerous facets of scientific research implicitly or explicitly call for the estimation of probabili...
The mean-shift algorithm is an iterative method of mode seeking and data clustering based on the ker...
Nearest neighborhood consistency is an important concept in statistical pattern recognition, which u...
The mean shift algorithm is a nonparametric clustering technique that does not make assumptions on t...
We revisit Gaussian blurring mean-shift (GBMS), a procedure that iteratively sharpens a dataset by m...
The log-likelihood energy term in popular model-fitting segmentation methods, e.g. [39, 8, 28, 10], ...
International audienceThis paper investigates multivariate kernel density estimation for hyperspectr...
The Denclue algorithm employs a cluster model based on kernel density estimation. A cluster is defin...
We present a novel framework for tree-structure embed-ded density estimation and its fast approximat...
We present a novel framework for tree-structure embedded density estimation and its fast approximati...
Abstract. Mean shift clustering nds the modes of the data probability density by identifying the zer...
The Time Dependent Kernel Density Estimation (TDKDE) developed by Harvey & Oryshchenko (2012) is a k...
Abstract—Many vision algorithms depend on the estimation of a probability density function from obse...
Mean shift is a popular approach for data clustering, however, the high computational complexity of ...
The mean-shift algorithm is a robust and easy method of finding local extrema in the density distrib...
Numerous facets of scientific research implicitly or explicitly call for the estimation of probabili...
The mean-shift algorithm is an iterative method of mode seeking and data clustering based on the ker...
Nearest neighborhood consistency is an important concept in statistical pattern recognition, which u...
The mean shift algorithm is a nonparametric clustering technique that does not make assumptions on t...
We revisit Gaussian blurring mean-shift (GBMS), a procedure that iteratively sharpens a dataset by m...
The log-likelihood energy term in popular model-fitting segmentation methods, e.g. [39, 8, 28, 10], ...
International audienceThis paper investigates multivariate kernel density estimation for hyperspectr...
The Denclue algorithm employs a cluster model based on kernel density estimation. A cluster is defin...
We present a novel framework for tree-structure embed-ded density estimation and its fast approximat...
We present a novel framework for tree-structure embedded density estimation and its fast approximati...
Abstract. Mean shift clustering nds the modes of the data probability density by identifying the zer...
The Time Dependent Kernel Density Estimation (TDKDE) developed by Harvey & Oryshchenko (2012) is a k...
Abstract—Many vision algorithms depend on the estimation of a probability density function from obse...
Mean shift is a popular approach for data clustering, however, the high computational complexity of ...
The mean-shift algorithm is a robust and easy method of finding local extrema in the density distrib...
Numerous facets of scientific research implicitly or explicitly call for the estimation of probabili...
The mean-shift algorithm is an iterative method of mode seeking and data clustering based on the ker...