Repositório do Conhecimento Institucional do Centro Universitário FEI
 

A study of a multi-thresholding segmentation algorithm based on bio-inspired metaheuristic and non-extensive tsallis statistics

Imagem de Miniatura

Tipo de produção

Artigo

Data de publicação

2019

Periódico

Journal of Multidisciplinary Engineering Science and Technology

Editor

Texto completo na Scopus

Citações na Scopus

Autores

RODRIGUES, Paulo
BOUZON, M. F.
HORVATH, M.
VARELA, V. P.
LOPES, Guilherme

Orientadores

Resumo

An image segmentation process is one of the most important steps in an image recognition or analysis application pipeline. It is a step that splits each image into disjointed regions of interest. It is also a task that is usually performed by biological processes, such as human visual system. Due to the low processing and ease of implementation, one of the most used techniques is the thresholding method, which consists in finding the best cutting thresholds of a probability distribution histogram. However, the higher the number of thresholds, the greater the computational complexity. And there is no consensus on the number of thresholds and the partitioning position as well. This paper presents a study of the number of thresholds for segmenting an image into their regions of interest. For this purpose, the proposed method uses a bio-inspired algorithm based on meta-heuristics, called firefly with a non-extensive Tsallis statistics kernel. Also, the images are pre-filtered with a low-pass filter based on a q-gaussian function. Using a manually segmented database, the results show that there is an inverse correlation between the Fourier spectrum of an image and the number of thresholds which most approximates the image from the used ground truth. This suggests an automatic method for calculating the required number of thresholds.

Citação

RODRIGUES, Paulo; BOUZON, M. F.; HORVATH, M.; VARELA, V. P.; LOPES, Guilherme. A study of a multi-thresholding segmentation algorithm based on bio-inspired metaheuristic and non-extensive tsallis statistics. Journal of Multidisciplinary Engineering Science and Technology, v. 6, n.1, p. 9411-9420, Jan. 2019.

Palavras-chave

Keywords

SIFT; Tsallis statistics; Multi-thresholding image segmentation; Fire-fly segmentation

Assuntos Scopus

Coleções

Avaliação

Revisão

Suplementado Por

Referenciado Por