[图书][B] Cluster analysis and applications

For several years, parts of the content of this textbook have been used in undergraduate
courses in the Department of Mathematics and in the Faculty of Economics at the University …

DBSCAN-like clustering method for various data densities

R Scitovski, K Sabo - Pattern Analysis and Applications, 2020 - Springer
In this paper, we propose a modification of the well-known DBSCAN algorithm, which
recognizes clusters with various data densities in a given set of data points A={a^ i ∈ R^ n …

[HTML][HTML] Space–time series clustering: Algorithms, taxonomy, and case study on urban smart cities

A Belhadi, Y Djenouri, K Nørvåg, H Ramampiaro… - … Applications of Artificial …, 2020 - Elsevier
This paper provides a short overview of space–time series clustering, which can be
generally grouped into three main categories such as: hierarchical, partitioning-based, and …

Ellipse detection using the edges extracted by deep learning

C Liu, R Chen, K Chen, J Xu - Machine Vision and Applications, 2022 - Springer
Existing edge detection methods are based on fixed logics, which are not intelligent enough
to distinguish useful edges and useless/noise edges. Recent ellipse detection methods …

A sensitivity study of seismicity indicators in supervised learning to improve earthquake prediction

G Asencio-Cortés, F Martínez-Álvarez… - Knowledge-Based …, 2016 - Elsevier
The use of different seismicity indicators as input for systems to predict earthquakes is
becoming increasingly popular. Nevertheless, the values of these indicators have not been …

A density-based clustering algorithm for earthquake zoning

S Scitovski - Computers & Geosciences, 2018 - Elsevier
A possibility of applying the density-based clustering algorithm Rough-DBSCAN for
earthquake zoning is considered in the paper. By using density-based clustering for …

Detecting precursory patterns to enhance earthquake prediction in Chile

E Florido, F Martínez-Álvarez, A Morales-Esteban… - Computers & …, 2015 - Elsevier
The prediction of earthquakes is a task of utmost difficulty that has been widely addressed by
using many different strategies, with no particular good results thus far. Seismic time series …

An improved K-means clustering algorithm for global earthquake catalogs and earthquake magnitude prediction

R Yuan - Journal of Seismology, 2021 - Springer
The occurrences of earthquakes have no any explicit warning, and earthquake magnitude
prediction is still extremely challenging now. Therefore, this study proposes a seismic …

A method for solving the multiple ellipses detection problem

R Grbić, D Grahovac, R Scitovski - Pattern Recognition, 2016 - Elsevier
In this paper, the multiple ellipses detection problem on the basis of a data points set coming
from a number of ellipses in the plane not known in advance is considered. An ellipse is …

Comparing seismic parameters for different source zone models in the Iberian Peninsula

JL Amaro-Mellado, A Morales-Esteban… - Tectonophysics, 2017 - Elsevier
Seismical parameters of five seismogenic zonings for the Iberian Peninsula have been
determined in this work. For that purpose, this research has two key goals. The first is to …