Tuning of Adaptive Weight Depth Map Generation Algorithms Exploratory Data Analysis and Design of Computer Experiments (DOCE)

In depth map generation algorithms, parameters settings to yield an accurate disparity map estimation are usually chosen empirically or based on un planned experiments -- Algorithms' performance is measured based on the distance of the algorithm results vs. the Ground Truth by Middlebury's...

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Autores:
Acosta, Diego
Congote, John
Barandiaran, Iñigo
Ruíz, Óscar
Hoyos, Alejandro
Graña, Manuel
Tipo de recurso:
Fecha de publicación:
2013
Institución:
Universidad EAFIT
Repositorio:
Repositorio EAFIT
Idioma:
eng
OAI Identifier:
oai:repository.eafit.edu.co:10784/9678
Acceso en línea:
http://hdl.handle.net/10784/9678
Palabra clave:
ESTIMACIÓN DE PARÁMETROS
ALGORITMOS
PROCESAMIENTO DE IMÁGENES
DISEÑO EXPERIMENTAL
Parameter estimation
Algorithms
Image processing
Experimental design
Parameter estimation
Algorithms
Image processing
Experimental design
Mapas de profundidad
Visión estéreo
Rights
License
Acceso abierto
Description
Summary:In depth map generation algorithms, parameters settings to yield an accurate disparity map estimation are usually chosen empirically or based on un planned experiments -- Algorithms' performance is measured based on the distance of the algorithm results vs. the Ground Truth by Middlebury's standards -- This work shows a systematic statistical approach including exploratory data analyses on over 14000 images and designs of experiments using 31 depth maps to measure the relative inf uence of the parameters and to fine-tune them based on the number of bad pixels -- The implemented methodology improves the performance of adaptive weight based dense depth map algorithms -- As a result, the algorithm improves from 16.78% to 14.48% bad pixels using a classical exploratory data analysis of over 14000 existing images, while using designs of computer experiments with 31 runs yielded an even better performance by lowering bad pixels from 16.78% to 13%