Multiclass histogram-based thresholding using kernel density estimation and scale-space representations

02/10/2022
by   S. Korneev, et al.
0

We present a new method for multiclass thresholding of a histogram which is based on the nonparametric Kernel Density (KD) estimation, where the unknown parameters of the KD estimate are defined using the Expectation-Maximization (EM) iterations. The method compares the number of extracted minima of the KD estimate with the number of the requested clusters minus one. If these numbers match, the algorithm returns positions of the minima as the threshold values, otherwise, the method gradually decreases/increases the kernel bandwidth until the numbers match. We verify the method using synthetic histograms with known threshold values and using the histogram of real X-ray computed tomography images. After thresholding of the real histogram, we estimated the porosity of the sample and compare it with the direct experimental measurements. The comparison shows the meaningfulness of the thresholding.

READ FULL TEXT
research
07/14/2020

A Generalization of Otsu's Method and Minimum Error Thresholding

We present Generalized Histogram Thresholding (GHT), a simple, fast, and...
research
11/19/2018

Optimal Iterative Threshold-Kernel Estimation of Jump Diffusion Processes

In this paper, we study a threshold-kernel estimation method for jump-di...
research
03/11/2017

Segmentation of skin lesions based on fuzzy classification of pixels and histogram thresholding

This paper proposes an innovative method for segmentation of skin lesion...
research
12/25/2015

Histogram Meets Topic Model: Density Estimation by Mixture of Histograms

The histogram method is a powerful non-parametric approach for estimatin...
research
12/11/2015

A New Approach of Gray Images Binarization with Threshold Methods

The paper presents some aspects of the (gray level) image binarization m...
research
01/13/2014

A parameterless scale-space approach to find meaningful modes in histograms - Application to image and spectrum segmentation

In this paper, we present an algorithm to automatically detect meaningfu...
research
06/03/2020

Plots of the cumulative differences between observed and expected values of ordered Bernoulli variates

Many predictions are probabilistic in nature; for example, a prediction ...

Please sign up or login with your details

Forgot password? Click here to reset