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Scalable multi-resolution color image segmentation

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conference contribution
posted on 2024-11-14, 08:27 authored by Fardin Akhlaghian Tab, Golshah NaghdyGolshah Naghdy, Alfred Mertins
This paper presents a novel multiresolution image segmentation method based on the discrete wavelet transform and Markov Random Field (MRF) modelling. A major contribution of this work is to add spatial scalability to the segmentation algorithm producing the same segmentation pattern at different resolutions. This property makes it applicable for scalable object-based wavelet coding. To optimize segmentation at all resolutions of the wavelet pyramid, with scalability constraint, a multiresolution analysis is incorporated into the objective function of the MRF segmentation algorithm. Examining the corresponding pixels at different resolutions simultaneously enables the algorithm to directly segment the images in the YUV or similar color spaces where luminance is in full resolution and chrominance components are at half resolution. In addition to spatial scalability, the proposed algorithm outperforms the standard single and multiresolution segmentation algorithms, in both objective and subjective tests, yielding an effective segmentation that particularly supports scalable object-based wavelet coding.

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Citation

Akhlaghian, F., Naghdy, G. & Mertins, A. (2005). Scalable multi-resolution color image segmentation. SPIE International Conference on Visual Communications and Image Processing (pp. 1674-1685). Bellingham, Washington, USA: SPIE.

Parent title

Proceedings of SPIE - The International Society for Optical Engineering

Volume

5960

Issue

3

Pagination

1674-1685

Language

English

RIS ID

22361

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