Application of Improved Homogeneity Similarity-Based Denoising in Optical Coherence Tomography Retinal Images |
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Authors: | Qiang Chen Luis de Sisternes Theodore Leng Daniel L. Rubin |
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Affiliation: | 1.Department of Radiology,Stanford University,Stanford,USA;2.School of Computer Science and Engineering,Nanjing University of Science and Technology,Nanjing,China;3.Byers Eye Institute at Stanford,Stanford University School of Medicine,Palo Alto,USA |
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Abstract: | Image denoising is a fundamental preprocessing step of image processing in many applications developed for optical coherence tomography (OCT) retinal imaging—a high-resolution modality for evaluating disease in the eye. To make a homogeneity similarity-based image denoising method more suitable for OCT image removal, we improve it by considering the noise and retinal characteristics of OCT images in two respects: (1) median filtering preprocessing is used to make the noise distribution of OCT images more suitable for patch-based methods; (2) a rectangle neighborhood and region restriction are adopted to accommodate the horizontal stretching of retinal structures when observed in OCT images. As a performance measurement of the proposed technique, we tested the method on real and synthetic noisy retinal OCT images and compared the results with other well-known spatial denoising methods, including bilateral filtering, five partial differential equation (PDE)-based methods, and three patch-based methods. Our results indicate that our proposed method seems suitable for retinal OCT imaging denoising, and that, in general, patch-based methods can achieve better visual denoising results than point-based methods in this type of imaging, because the image patch can better represent the structured information in the images than a single pixel. However, the time complexity of the patch-based methods is substantially higher than that of the others. |
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Keywords: | Image denoising Optical coherence tomography Homogeneity similarity Retina |
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