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基于图像的数字眼底照相自动对焦算法。

An image based auto-focusing algorithm for digital fundus photography.

机构信息

Wilmer Eye Institute, Johns Hopkins UniversitySchool of Medicine, Baltimore, MD 21287, USA.

出版信息

IEEE Trans Med Imaging. 2009 Nov;28(11):1703-7. doi: 10.1109/TMI.2009.2019755. Epub 2009 Apr 10.

Abstract

In fundus photography, the task of fine focusing the image is demanding and lack of focus is quite often the cause of suboptimal photographs. The introduction of digital cameras has provided an opportunity to automate the task of focusing. We have developed a software algorithm capable of identifying best focus. The auto-focus (AF) method is based on an algorithm we developed to assess the sharpness of an image. The AF algorithm was tested in the prototype of a semi-automated nonmydriatic fundus camera designed to screen in the primary care environment for major eye diseases. A series of images was acquired in volunteers while focusing the camera on the fundus. The image with the best focus was determined by the AF algorithm and compared to the assessment of two masked readers. A set of fundus images was obtained in 26 eyes of 20 normal subjects and 42 eyes of 28 glaucoma patients. The 95% limits of agreement between the readers and the AF algorithm were -2.56 to 2.93 and -3.7 to 3.84 diopter and the bias was 0.09 and 0.71 diopter, for the two readers respectively. On average, the readers agreed with the AF algorithm on the best correction within less than 3/4 diopter. The intraobserver repeatability was 0.94 and 1.87 diopter, for the two readers respectively, indicating that the limit of agreement with the AF algorithm was determined predominantly by the repeatability of each reader. An auto-focus algorithm for digital fundus photography can identify the best focus reliably and objectively. It may improve the quality of fundus images by easing the task of the photographer.

摘要

在眼底摄影中,精细对焦图像的任务要求很高,而失焦是导致照片质量不佳的常见原因。数码相机的引入为自动对焦任务提供了机会。我们开发了一种能够识别最佳焦点的软件算法。自动对焦 (AF) 方法基于我们开发的一种算法,用于评估图像的清晰度。该 AF 算法在我们设计的用于初级保健环境中筛查主要眼部疾病的半自动非散瞳眼底相机原型中进行了测试。在志愿者中拍摄一系列图像,同时将相机聚焦在眼底。通过 AF 算法确定具有最佳焦点的图像,并与两位掩蔽读者的评估进行比较。在 20 名正常受试者的 26 只眼和 28 名青光眼患者的 42 只眼中获得了一组眼底图像。两位读者和 AF 算法之间的 95%一致性界限分别为-2.56 至 2.93 和-3.7 至 3.84 屈光度,偏差分别为 0.09 和 0.71 屈光度。平均而言,读者与 AF 算法在最佳校正范围内的差异小于 3/4 屈光度。两位读者的观察者内重复性分别为 0.94 和 1.87 屈光度,表明与 AF 算法的一致性界限主要由每位读者的重复性决定。用于数字眼底摄影的自动对焦算法可以可靠且客观地识别最佳焦点。它可以通过减轻摄影师的任务来提高眼底图像的质量。

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