Filtering of Corneal Images using Hybrid Wavelet Transform in the Cases of Keratoconus

K. Aswini, S. Raghavan
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引用次数: 0

Abstract

One of the most prevalent, bilateral, asymmetric, and progressive corneal diseases, keratoconus can have a slight to severe impact on vision. Early on, the condition is frequently misdiagnosed as irregular astigmatism, delaying diagnosis. Although we have cutting-edge diagnostic techniques, the results are insufficient to fully assess the corneal health at different areas, making it challenging to plan additional treatment programmes. Here, image pre-processing techniques using a Hybrid Wavelet Transform of Discrete Wavelet Transform (DWT) and Stationary Wavelet Transform (SWT), followed by soft and/or hard thresholding and Inverse Wavelet Transform, are proposed in order to achieve early and accurate diagnosis and assess the health of the cornea. The qualitative and quantitative metrics are reached by taking into account the several Electronic Corneal Topography picture modes, which would be useful to an ophthalmologist in moving on with therapy. This approach has been proven to have greater promise than the ones currently in use, particularly in relation to corneal diseases like keratoconus. Additionally, this approach aids in more accurate keratoconus stage determination.
混合小波变换在圆锥角膜图像滤波中的应用
圆锥角膜是最常见的双侧、不对称和进行性角膜疾病之一,对视力有轻微到严重的影响。早期,该病常被误诊为不规则散光,延误了诊断。虽然我们拥有尖端的诊断技术,但结果不足以全面评估不同区域的角膜健康状况,这使得计划额外的治疗方案具有挑战性。本文提出了一种基于离散小波变换(DWT)和平稳小波变换(SWT)的混合小波变换的图像预处理技术,然后是软阈值和/或硬阈值和逆小波变换,以实现早期准确诊断和评估角膜健康状况。定性和定量指标是通过考虑几种电子角膜地形图图像模式来达到的,这将有助于眼科医生继续进行治疗。这种方法已被证明比目前使用的方法有更大的前景,特别是在角膜圆锥角膜等角膜疾病方面。此外,这种方法有助于更准确地确定圆锥角膜的分期。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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