| Literature DB >> 25132723 |
Ruwan Nawarathna1, JungHwan Oh1, Jayantha Muthukudage1, Wallapak Tavanapong2, Johnny Wong2, Piet C de Groen3, Shou Jiang Tang4.
Abstract
Finding mucosal abnormalities (e.g., erythema, blood, ulcer, erosion, and polyp) is one of the most essential tasks during endoscopy video review. Since these abnormalities typically appear in a small number of frames (around 5% of the total frame number), automated detection of frames with an abnormality can save physician's time significantly. In this paper, we propose a new multi-texture analysis method that effectively discerns images showing mucosal abnormalities from the ones without any abnormality since most abnormalities in endoscopy images have textures that are clearly distinguishable from normal textures using an advanced image texture analysis method. The method uses a "texton histogram" of an image block as features. The histogram captures the distribution of different "textons" representing various textures in an endoscopy image. The textons are representative response vectors of an application of a combination of Leung and Malik (LM) filter bank (i.e., a set of image filters) and a set of Local Binary Patterns on the image. Our experimental results indicate that the proposed method achieves 92% recall and 91.8% specificity on wireless capsule endoscopy (WCE) images and 91% recall and 90.8% specificity on colonoscopy images.Entities:
Keywords: Colonoscopy; Filter bank; Local binary pattern; Texton; Texton dictionary; Wireless capsule endoscopy
Year: 2014 PMID: 25132723 PMCID: PMC4131459 DOI: 10.1016/j.neucom.2014.02.064
Source DB: PubMed Journal: Neurocomputing ISSN: 0925-2312 Impact factor: 5.719