1 May 1996 Combined detection of intensity and chromatic contours in color images
Andrea Baraldi, Flavio Parmiggiani
Author Affiliations +
In the literature on computer vision, very few contour detection algorithms are designed to deal with color images. In this paper, we present the multispectral contour detection algorithm (MSCDA) which is designed to process multispectral digital images as well as monochromatic ones. The MSCDA employs a bidimensional matrix of processing modules. The structure of a processing module is biologically plausible in that it consists of a bank of oriented filters. Each filter is a multispectral processing element (MSPE). A MSPE computes a contrast strength value locally from a receptive field characterized by specific orientation, shape, and size. The contrast strength value is a combination of an intensity contrast value with a chromatic contrast value, which are computed separately. Intensity contrast assesses the contrast due to local change in light energy, while chromatic contrast measures the contrast generated by local change in chromatic components. Even- and oddsymmetric MSPE pairs cooperate to extract a combined contrast strength value locally. Each processing module extracts one maximum combined contrast strength response from its bank of MSPEs. The maximum values of the combined contrast strength, provided by the grid of processing modules, form the contrast image. The contour candidate and the contour pixels can be extracted from the contrast image according to a strategy which is developed through simulations on 1-D and 2-D data sets. The MSCDA is compared with existing contour detection algorithms theoretically, and experimental results are shown. The MSCDA accounts for several psychophysical effects which are related to the mammalian visual system and may provide new insights into the understanding of the operational schemes employed by the visual cortex in combining energy, color and texture information for shape detection.
Andrea Baraldi and Flavio Parmiggiani "Combined detection of intensity and chromatic contours in color images," Optical Engineering 35(5), (1 May 1996). https://doi.org/10.1117/1.600699
Published: 1 May 1996
Lens.org Logo
CITATIONS
Cited by 16 scholarly publications.
Advertisement
Advertisement
RIGHTS & PERMISSIONS
Get copyright permission  Get copyright permission on Copyright Marketplace
KEYWORDS
Colorimetry

Image filtering

Image processing

Optical engineering

Visualization

Visual system

Detection and tracking algorithms

Back to Top