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Improved Fundus Image Quality Assessment: Augmenting Traditional Features with Structure Preserving ScatNet Features in Multicolor Space

机译:改进的眼底图像质量评估:增强传统功能,结构保持播放在多色空间中的斯卡特网

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High quality fundus photographs (FPs) are essential for clinicians to make accurate diagnosis of various ophthalmic diseases, including diabetic retinopathy, age-related macular degeneration, and glaucoma. Thus it becomes imperative that clinicians are presented with FPs, whose high diagnostic quality is assured. In this context, significant effort has been directed at developing automated tools that distinguish between high quality and low quality FPs. For this purpose, features suited to natural image quality assessment were traditionally employed even for diagnostic quality assessment of FPs. However, structure preserving features generated by deep scattering network (ScatNet) were recently reported to outperform aforementioned traditional features. In this paper, we demonstrate further improvement in performance by combining both the traditional features and ScatNet features. Importantly, additional improvement is witnessed when ScatNet features are computed in multicolor space.
机译:高质量的眼底照片(FPS)对于临床医生至关重要,以准确诊断各种眼科疾病,包括糖尿病视网膜病变,年龄相关的黄斑变性和青光眼。 因此,临床医生仍然存在FPS,确保了其高诊断质量的FPS。 在这种情况下,旨在开发利用高质量和低质量FPS的自动化工具的大量努力。 为此目的,即使对于FPS的诊断质量评估,传统上使用适用于自然图像质量评估的特征。 然而,最近据报道了深度散射网络(ScatNet)产生的结构保护功能以优于上述传统特征。 在本文中,我们通过结合传统的特征和斯卡网特征来表现出绩效的进一步提高。 重要的是,当在多色空间中计算Scatnet特征时,目睹额外的改进。

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