FreeLabel: A Publicly Available Annotation Tool Based on Freehand Traces

P. Dias, Zhou Shen, A. Tabb, Henry Medeiros
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引用次数: 12

Abstract

Large-scale annotation of image segmentation datasets is often prohibitively expensive, as it usually requires a huge number of worker hours to obtain high-quality results. Abundant and reliable data has been, however, crucial for the advances on image understanding tasks recently achieved by deep learning models. In this paper, we introduce FreeLabel, an intuitive open-source web interface that allows users to obtain high-quality segmentation masks with just a few freehand scribbles, in a matter of seconds. The efficacy of FreeLabel is quantitatively demonstrated by experimental results on the PASCAL dataset as well as on a dataset from the agricultural domain. Designed to benefit the computer vision community, FreeLabel can be used for both crowdsourced or private annotation and has a modular structure that can be easily adapted for any image dataset.
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FreeLabel:一个基于手绘痕迹的公开标注工具
对图像分割数据集进行大规模标注往往代价高昂,因为它通常需要大量的工作时间才能获得高质量的结果。然而,丰富可靠的数据对于深度学习模型最近在图像理解任务上取得的进展至关重要。在本文中,我们介绍了FreeLabel,这是一个直观的开源web界面,允许用户在几秒钟内通过徒手涂鸦获得高质量的分割掩码。在PASCAL数据集和农业领域数据集上的实验结果定量地证明了FreeLabel的有效性。为了使计算机视觉社区受益,FreeLabel可以用于众包或私有注释,并且具有模块化结构,可以很容易地适应任何图像数据集。
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