Título

Color characterization comparison for machine vision-based fruit recognition

Autor

Jair Cervantes Canales

Farid García Lamont

ASDRUBAL LOPEZ CHAU

JOSE SERGIO RUIZ CASTILLA

Nivel de Acceso

Acceso Abierto

Resumen o descripción

In this paper we present a comparison between three color characterizations methods applied for fruit recognition, two of them are selected from two related works and the third is the authors’ proposal; in the three works, color is represented in the RGB space. The related works characterize the colors considering their intensity data; but employing the intensity data of colors in the RGB space may lead to obtain imprecise models of colors, because, in this space, despite two colors with the same chromaticity if they have different intensities then they represent different colors. Hence, we introduce a method to characterize the color of objects by extracting the chromaticity of colors; so, the intensity of colors does not influence significantly the color extraction. The color characterizations of these two methods and our proposal are implemented and tested to extract the color features of different fruit classes. The color features are concatenated with the shape characteristics, obtained using Fourier descriptors, Hu moments and four basic geometric features, to form a feature vector. A feed-forward neural network is employed as classifier; the performance of each method is evaluated using an image database with 12 fruit classes.

Editor

Springer

Fecha de publicación

2015

Tipo de publicación

Capítulo de libro

Fuente

0302-9743

978-3-319-22179-3

Idioma

Inglés

Relación

10.1007/978-3-319-22180-9_26;

Audiencia

Estudiantes

Investigadores

Repositorio Orígen

REPOSITORIO INSTITUCIONAL DE LA UAEM

Descargas

3700

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