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Unsupervised Region of Intrest Detection Using Fast and Surf

Authors

Abass A. Olaode1, Golshah Naghdy1 and Catherine A. Todd2, 1University of Wollongong, Australia and 2University of Wollongong in Dubai, UAE

Abstract

The determination of Region-of-Interest has been recognised as an important means by which unimportant image content can be identified and excluded during image compression or image modelling, however existing Region-of-Interest detection methods are computationally expensive thus are mostly unsuitable for managing large number of images and the compression of images especially for real-time video applications. This paper therefore proposes an unsupervised algorithm that takes advantage of the high computation speed being offered by Speeded-Up Robust Features (SURF) and Features from Accelerated Segment Test (FAST) to achieve fast and efficient Region-of-Interest detection.

Keywords

Region of Interest, Image segmentation, SURF, FAST, Texture description, PLSA, BOV, K-means clustering, unsupervised image classification.

Full Text  Volume 5, Number 4