Maximal similarity based region classification method through local image region descriptors and Bhattacharyya coefficient-based distance: Application to horizon line detection using wide-angle camera
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Titre | Maximal similarity based region classification method through local image region descriptors and Bhattacharyya coefficient-based distance: Application to horizon line detection using wide-angle camera |
Type de publication | Journal Article |
Year of Publication | 2017 |
Auteurs | Y. Merabet E, Ruichek Y., Ghaffarian S., Samir Z., Boujiha T., Messoussi R., Touahni R., Sbihi A. |
Journal | NEUROCOMPUTING |
Volume | 265 |
Pagination | 28-41 |
Date Published | NOV 22 |
Type of Article | Article |
ISSN | 0925-2312 |
Mots-clés | Color Invariance, Color texture feature, GNSS, Hybrid descriptor, Image Segmentation, Maximal similarity, Region Classification |
Résumé | In recent years, many approaches have been proposed to compensate the lack of performance of GNSS (Global Navigation Satellites Systems) occurring when operating in constrained environments. One of these approaches consists in characterizing the environment of reception of GNSS signals using a wide-angle (fisheye) camera oriented to the sky. The content of acquired images is classified into two regions (sky and not-sky) in order to determine LOS (Line-Of-Sight) satellites and NLOS (Nonline-Of-Sight) satellites. This paper is aimed at proposing an image-content classification method to make this approach more effective. The proposed method is composed of four major steps. The first one consists of simplifying the acquired image with an appropriate couple of colorimetric invariant and exponential transform. In the second step, the simplified image is segmented using Statistical Region Merging method. The third step consists of characterizing the segmented regions with a number of local image region descriptors providing more statistically meaningful and discriminatory features. In order to classify the characterized regions into sky and non sky regions, we propose the supervised MSRC (Maximal Similarity Based Region Classification) method by using Bhattacharyya coefficient-based distance. Comparative and extensive experiments have been conducted to investigate the effectiveness of the proposed MSRC method according to the proposed groups of local image region descriptors. Furthermore, we clearly validate the feasibility of MSRC method by comparing its results with those presented in the state of the art. (C) 2017 Elsevier B.V. All rights reserved. |
DOI | 10.1016/j.neucom.2017.03.084 |