视网膜图像分类综述——技术与挑战

Akanksha Bali, V. Mansotra
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引用次数: 0

摘要

视网膜图像分类已经存在了几十年。然而,生物医学行业在基准准确性数据集方面受到了影响。高质量数据点的可用性是视网膜图像处理缺乏完全自动化的主要原因之一。在本文中,我们试图描述在视网膜图像处理中使用的不同架构。变压器在数据创建和分类的移植技术中的应用已得到广泛认可。最后,对不同的模型进行了比较,分析了各自的优缺点。本文不仅对所有不同的机制进行了文献综述,而且提出了未来有希望的领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Overview of Retinal Image Classification-Techniques and Challenges
Retinal image classification has been into existence since decades. However, the biomedical industry has suffered over benchmark accuracy datasets. The availability of good quality data points is one of the main reasons for the absence of complete automation in retinal image processing. In this paper we try to delineate the different architectures utilised in retinal image processing. The utility of transformer in transplant techniques for data creation and classification is widely recognized. Finally, we compare different models and analyse their merits and demerits. The paper aims to not only provide a literature survey for all the different mechanisms available, but also put forth the promising areas for tomorrow.
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