Artigo
Pearson's correlation coefficient: a more realistic threshold for applications on autonomous robotics
Carregando...
Notas
Data
Autores
Orientadores
Editores
Coorientadores
Membros de banca
Título da Revista
ISSN da Revista
Título de Volume
Editor
David Publishing Company
Faculdade, Instituto ou Escola
Departamento
Programa de Pós-Graduação
Agência de fomento
Tipo de impacto
Áreas Temáticas da Extenção
Objetivos de Desenvolvimento Sustentável
Dados abertos
Resumo
Abstract
Many applications for control of autonomous platform are being developed and one important aspect is the excess of
information, frequently redundant, that imposes a great computational cost in data processing. Taking into account the temporal
coherence between consecutive frames, the PCC (Pearson’s Correlation Coefficient) was proposed and applied as: discarding criteria
methodology, dynamic power management solution, environment observer method which selects automatically only the
regions-of-interest; and taking place in the obstacle avoidance context, as a method for collision risk estimation for vehicles in
dynamic and unknown environments. Even if the PCC is a great tool to help the autonomous or semi-autonomous navigation,
distortions in the imaging system, pixel noise, slight variations in the object’s position relative to the camera, and other factors
produce a false PCC threshold. Whereas there are homogeneous regions in the image, in order to obtain a more realistic Pearson’s correlation, we propose to use some prior known environment information.
Descrição
Área de concentração
Agência de desenvolvimento
Palavra chave
Marca
Objetivo
Procedência
Impacto da pesquisa
Resumen
ISBN
DOI
Citação
MIRANDA NETO, A. de. Pearson's correlation coefficient: a more realistic threshold for applications on autonomous robotics. Computer Technology and Application, [S. l.], v. 5, p. 69-72, 2014.
