Robust image registration for analysis of multisource eye fundus images

Edgar López-Jasso, E. Felipe-Riverón, José E. Valdez-Rodríguez
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Abstract

 This study underscores the crucial role of image preprocessing in enhancing the outcomes of multimodal image registration tasks using scale-invariant feature selection. The primary focus is on registering two types of retinal images, assessing a methodology’s performance on a set of retinal image pairs, including those with and without microaneurysms. Each pair comprises a color optical image and a gray-level fluorescein image, presenting distinct characteristics and captured under varying conditions. The SIFT methodology, encompassing five stages, with preprocessing as the initial and pivotal stage, is employed for image registration. Out of 35 test retina image pairs, 33 (94.28%) were successfully registered, with the inability to extract features hindering automatic registration in the remaining pairs. Among the registered pairs, 42.42% were retinal images without microaneurysms, and 57.57% had microaneurysms. Instead of simultaneous registration of all channels, independent registration of preprocessed images in each channel proved more effective. The study concludes with an analysis of the fifth registration’s resulting image to detect abnormalities or pathologies, highlighting the challenges encountered in registering blue channel images due to high intrinsic noise.
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用于分析多源眼底图像的稳健图像配准技术
这项研究强调了图像预处理在利用尺度不变特征选择提高多模态图像配准任务结果方面的关键作用。研究的主要重点是两种视网膜图像的配准,评估一种方法在一组视网膜图像对(包括有微动脉瘤和无微动脉瘤的图像对)上的性能。每对图像由彩色光学图像和灰度荧光素图像组成,呈现出不同的特征,并在不同的条件下拍摄。图像配准采用 SIFT 方法,包括五个阶段,其中预处理是初始和关键阶段。在 35 对测试视网膜图像中,33 对(94.28%)成功配准,其余图像因无法提取特征而无法自动配准。在登记的图像对中,42.42% 是没有微动脉瘤的视网膜图像,57.57% 有微动脉瘤。事实证明,对每个通道的预处理图像进行独立配准比同时配准所有通道的图像更有效。研究最后分析了第五次配准所产生的图像,以检测异常或病变,并强调了在配准蓝色通道图像时由于高固有噪声而遇到的挑战。
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