Image Annotation Software for Artificial Intelligence Applications

Ayman Musleh, S. A. Alryalat, Ahmad Qasem
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Abstract

Introduction: The growing trend in artificial intelligence has recently highlighted the demand for user-friendly and effective annotation tools for researchers. Therefore, we conducted a review to assess existing annotation software that has been used in ophthalmology projects and/or available on the web.   Methods: We systematically searched for AI ophthalmology studies using annotation software on PubMed on 8th July 2022 with specific criteria. Only original English articles related to ophthalmic AI were considered. From these, we identified annotation software used and conducted a subsequent Google search for additional software. Each software was evaluated based on factors like development year, accessibility, and citations of its original paper. Practicality criteria for the software included independence from external libraries, size under 100 MB, cost, and versatility in image input and output formats.   Results: We identified 131 image annotation software, of which 10 met our criteria. Among the software tools utilized for image annotation in ophthalmology papers, only CVAT and ImageJ were freely accessible. This paper provides a concise overview of the 10 image annotation software. Conclusions We systematically analyzed annotation software for fundus image annotation, highlighting 10 primary tools with varied functionalities. However, this study is limited to AI-related software, underscoring the need for continual updates due to the evolving nature of image annotation tools.
人工智能应用图像注释软件
导读:人工智能的发展趋势凸显了对用户友好和有效的标注工具的需求。因此,我们进行了一项综述,以评估已用于眼科项目和/或在网络上可用的现有注释软件。方法:采用标注软件系统检索PubMed于2022年7月8日发布的人工智能眼科相关研究,检索标准明确。仅考虑与眼科人工智能相关的原创英文文章。从这些中,我们确定了使用的注释软件,并进行了随后的谷歌搜索以获取其他软件。每个软件都是根据开发年份、可访问性和原始论文的引用等因素进行评估的。该软件的实用性标准包括独立于外部库、大小在100 MB以下、成本以及图像输入和输出格式的通用性。结果:我们鉴定出131个图像标注软件,其中10个符合我们的标准。在眼科论文图像标注使用的软件工具中,只有CVAT和ImageJ是免费获取的。本文简要介绍了10种图像标注软件。我们系统地分析了眼底图像标注软件,突出了10种功能各异的主要工具。然而,这项研究仅限于与人工智能相关的软件,强调由于图像注释工具的不断发展,需要不断更新。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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