SVM BASED INDOOR/MIXED/OUTDOOR CLASSIFICATION FOR DIGITAL PHOTO ANNOTATION IN A UBIQUITOUS COMPUTING ENVIRONMENT

Authors
Song, Chull HwanYoo, Seong JoonWon, Chee SunKim, Hyoung Gon
Issue Date
2008-11
Publisher
SLOVAK ACAD SCIENCES INST INFORMATICS
Citation
COMPUTING AND INFORMATICS, v.27, no.5, pp.757 - 767
Abstract
This paper extends our previous framework for digital photo annotation by adding noble approach of indoor/mixed/outdoor image classification. We propose the best feature vectors for a support vector machine based indoor/mixed/outdoor image classification. While previous research classifies photographs into indoor and outdoor, this study extends into three types, including indoor, mixed, and outdoor classes. This three-class method improves the performance of outdoor classification. This classification scheme showed 5-10% higher performance than previous research. This method is one of the components for digital image annotation. A digital camera or an annotation server connected to a ubiquitous computing network can automatically annotate captured photos using the proposed method.
Keywords
Image classification; support vector machine; low-level feature extraction
ISSN
1335-9150
URI
https://pubs.kist.re.kr/handle/201004/133001
Appears in Collections:
KIST Article > 2008
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