Optimized Smartphone-based Implementation of B-COSFIRE Filter for Retinal Blood Vessel Segmentation

Mubdiul Hossain, W. M. Isa, Aziah Ali, W. Zaki, N. Hashim, A. Hussain
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Abstract

Medical professionals widely perform retinal blood vessel analysis from fundus images to detect and diagnose various ocular and systemic diseases. Many studies have proposed methods for automatic blood vessel extraction from fundus images which are mostly desktop-based implementations for analysing images from table-top fundus cameras. In resource-limited settings such as clinics in rural or remote areas, desktop fundus cameras are rarely available and workstations for automatic retinal analysis can be difficult to obtain and set up. In these recent years, handheld fundus cameras have been developed to offer a mobile solution for retinal screening at a cheaper cost. However, research on mobile processing for retinal analysis of these handheld fundus images is still limited. We propose an optimized retinal blood vessel segmentation method for an Android-based smartphone platform using the Bar-Combination of Shifted Filter Response (B-COSFIRE) filter. Since there is no public database for handheld fundus images to date, the developed mobile retinal blood vessel segmentation application was evaluated using two publicly available table-top fundus images databases, DRIVE and STARE, with achieved segmentation accuracy of 94.87% and 95.96% respectively. The results showed that the method not only achieved comparable performance to published methods but is also faster, making it a possible cost-effective and efficient option for retinal diagnosis in rural areas.
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基于智能手机的B-COSFIRE滤波器视网膜血管分割优化实现
医学专业人员广泛地从眼底图像进行视网膜血管分析,以检测和诊断各种眼部和全身疾病。许多研究提出了从眼底图像中自动提取血管的方法,这些方法大多是基于桌面的实现,用于分析桌面眼底相机的图像。在资源有限的环境中,如农村或偏远地区的诊所,桌面眼底相机很少可用,自动视网膜分析工作站也很难获得和设置。近年来,手持式眼底相机已被开发出来,以较低的成本提供视网膜筛查的移动解决方案。然而,对这些手持眼底图像的移动处理进行视网膜分析的研究仍然有限。我们提出了一种优化的基于android智能手机平台的视网膜血管分割方法,该方法使用移位滤波器响应的条形组合(B-COSFIRE)滤波器。由于目前还没有手持式眼底图像的公共数据库,我们使用两个公开的桌面眼底图像数据库DRIVE和STARE对开发的移动视网膜血管分割应用程序进行了评估,分割准确率分别为94.87%和95.96%。结果表明,该方法不仅达到了与已发表方法相当的性能,而且速度更快,使其成为农村地区视网膜诊断的一种经济有效的选择。
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