Effective combining of color and texture descriptors for indoor-outdoor image classification

Author:

Cvetkovic Stevica1,Nikolic Sasa1ORCID,Ilic Slobodan2

Affiliation:

1. Faculty of Electronic Engineering, Niš

2. Technische Universitat München (TUM), Munich, Germany

Abstract

Although many indoor-outdoor image classification methods have been proposed in the literature, most of them have omitted comparison with basic methods to justify the need for complex feature extraction and classification procedures. In this paper we propose a relatively simple but highly accurate method for indoor-outdoor image classification, based on combination of carefully engineered MPEG-7 color and texture descriptors. In order to determine the optimal combination of descriptors in terms of fast extraction, compact representation and high accuracy, we conducted comprehensive empirical tests over several color and texture descriptors. The descriptors combination was used for training and testing of a binary SVM classifier. We have shown that the proper descriptors preprocessing before SVM classification has significant impact on the final result. Comprehensive experimental evaluation shows that the proposed method outperforms several more complex indoor-outdoor image classification techniques on a couple of public datasets.

Publisher

National Library of Serbia

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2. Enhancing the Performance of Image Classification Through Features Automatically Learned from Depth-Maps;Lecture Notes in Computer Science;2021

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4. Illumination Estimation Is Sufficient for Indoor-Outdoor Image Classification;Lecture Notes in Computer Science;2019

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