Supervised machine learning methods for image analysis require large amounts of labelled training data to solve computer vision problems. The recent rise of deep learning algorithms for recognising image content has led to the emergence of many ad-hoc labelling tools. With this survey, we capture and systematise the commonalities as well as the distinctions between existing image labelling software. We perform a structured literature review to compile the underlying concepts and features of image labelling software such as annotation expressiveness and degree of automation. We structure the manual labelling task by its organisation of work, user interface design options, and user support techniques to derive a systematisation schema for this survey. Applying it to available software and the body of literature, enabled us to uncover several application archetypes and key domains such as image retrieval or instance identification in healthcare or television.
翻译:用于图像分析的受监督的机器学习方法需要大量贴标签的培训数据来解决计算机视觉问题。最近,识别图像内容的深层次学习算法的崛起导致许多特殊标签工具的出现。通过这项调查,我们捕捉到现有图像标签软件的共性和区别,并将其系统化。我们进行了结构化的文献审查,以汇编图像标签软件的基本概念和特征,如说明表情和自动化程度。我们按工作组织、用户界面设计选项和用户支持技术安排人工标签任务,为这项调查制定系统化的系统化模型。将它应用到现有的软件和文献中,使我们能够发现一些应用型号和关键领域,如图象检索或医疗或电视中的例识别。