Zhang Yixin, Zhao Shen, Gu Hanxue, Mazurowski Maciej A
Department of Electrical and Computer Engineering, Duke University, Durham, NC, USA.
Department of Radiology, Duke University, Durham, NC, USA.
J Imaging Inform Med. 2025 Jan 22. doi: 10.1007/s10278-025-01408-7.
Deep neural networks (DNNs) have demonstrated exceptional performance across various image segmentation tasks. However, the process of preparing datasets for training segmentation DNNs is both labor-intensive and costly, as it typically requires pixel-level annotations for each object of interest. To mitigate this challenge, alternative approaches such as using weak labels (e.g., bounding boxes or scribbles) or less precise (noisy) annotations can be employed. Noisy and weak labels are significantly quicker to generate, allowing for more annotated images within the same time frame. However, the potential decrease in annotation quality may adversely impact the segmentation performance of the resulting model. In this study, we conducted a comprehensive cost-effectiveness evaluation on six variants of annotation strategies (9 10 sub-variants in total) across 4 datasets and conclude that the common practice of precisely outlining objects of interest is virtually never the optimal approach when annotation budget is limited. Both noisy and weak annotations showed usage cases that yield similar performance to the perfectly annotated counterpart, yet had significantly better cost-effectiveness. We hope our findings will help researchers be aware of the different available options and use their annotation budgets more efficiently, especially in cases where accurately acquiring labels for target objects is particularly costly. Our code will be made available on https://github.com/yzluka/AnnotationEfficiency2D .
深度神经网络(DNN)在各种图像分割任务中都展现出了卓越的性能。然而,为训练分割DNN准备数据集的过程既耗费人力又成本高昂,因为这通常需要对每个感兴趣的对象进行像素级注释。为了应对这一挑战,可以采用诸如使用弱标签(例如边界框或涂鸦)或不太精确(有噪声)的注释等替代方法。有噪声和弱标签的生成速度要快得多,从而可以在相同时间内标注更多图像。然而,注释质量的潜在下降可能会对最终模型的分割性能产生不利影响。在本研究中,我们对4个数据集上的6种注释策略变体(总共9至10个子变体)进行了全面的成本效益评估,并得出结论:当注释预算有限时,精确勾勒感兴趣对象的常见做法几乎从来都不是最优方法。有噪声和弱注释都显示出与完美注释版本具有相似性能的使用案例,但成本效益明显更好。我们希望我们的研究结果将帮助研究人员了解不同的可用选项,并更有效地使用他们的注释预算,特别是在准确获取目标对象标签成本特别高的情况下。我们的代码将在https://github.com/yzluka/AnnotationEfficiency2D上提供。