Empirical Monocomponent Image Decomposition

dc.contributor.authorUngsumalee Suttapakti
dc.contributor.authorKitsuchart Pasupa
dc.contributor.authorKuntpong Woraratpanya
dc.date.accessioned2025-07-21T05:59:03Z
dc.date.issued2017-12-14
dc.description.abstractMonocomponent image decomposition plays an important role in image analysis and related areas, such as image denoising, object detection, and texture segmentation. Existing image decomposition methods can extract monocomponents but their performances are insufficiently accurate because of interference and redundancy component problems caused by inaccurate spectrum segmentation. In this paper, an empirical monocomponent image decomposition (EMID) is proposed for fully recoverable monocomponents. The EMID method empirically decomposes an image into monocomponents based on energy concentration in Fourier support. This method is composed of two main processes: 1) energy concentrationbased segmentation and 2) empirical image filter bank construction. In the former process, the base of a mountain-shaped energy concentration that can perfectly represent the monocomponent spectrum boundary is detected and identified. This process provides a more accurate spectrum segmentation which helps prevent the serious problems from interference and redundancy components. In the latter process, an empirical image filter bank is constructed in accordance with the actual monocomponent boundaries by means of ellipse and Gaussian functions and used to decompose an image into monocomponent images with fewer ringing artifacts. The experimental results show that the proposed EMID method achieves a better decomposition than the state-of-the-art methods in terms of the quality of monocomponent images that are evaluated by peak signal-to-noise ratio and structural similarity index. Furthermore, in a real world dataset, the EMID method is able to clearly detect text regions, thus significantly improving the efficiency of Thai text character localization in natural scene images.
dc.identifier.doi10.1109/access.2017.2783399
dc.identifier.urihttps://dspace.kmitl.ac.th/handle/123456789/6954
dc.subject.classificationImage and Signal Denoising Methods
dc.titleEmpirical Monocomponent Image Decomposition
dc.typeArticle

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