论文标题
半监督主动学习,例如通过评分预测进行分割
Semi-supervised Active Learning for Instance Segmentation via Scoring Predictions
论文作者
论文摘要
主动学习通常涉及查询人类标记的最具代表性样本,该样本在许多领域进行了广泛研究,例如图像分类和对象检测。但是,在更复杂的实例细分任务中尚未探索其潜力,该任务通常具有相对较高的注释成本。在本文中,我们提出了一个新颖的,有原则的半监督主动学习框架,例如分割。具体而言,我们提出了一个名为Triplet评分预测(TSP)的不确定性采样策略,以明确地合并样品排名线索,从类,边界框和掩码中排名线索。此外,我们使用上述TSP以半监督的方式设计了一个渐进的伪标记制度,它可以利用标记和未标记的数据来最大程度地减少标签努力,同时最大程度地提高实例分割的性能。医学图像数据集上的结果表明,所提出的方法以有意义的方式从可用数据中得出知识的实现。广泛的定量和定性实验表明,与最先进的方法相比,我们的方法可以产生最佳的注释成本模型。
Active learning generally involves querying the most representative samples for human labeling, which has been widely studied in many fields such as image classification and object detection. However, its potential has not been explored in the more complex instance segmentation task that usually has relatively higher annotation cost. In this paper, we propose a novel and principled semi-supervised active learning framework for instance segmentation. Specifically, we present an uncertainty sampling strategy named Triplet Scoring Predictions (TSP) to explicitly incorporate samples ranking clues from classes, bounding boxes and masks. Moreover, we devise a progressive pseudo labeling regime using the above TSP in semi-supervised manner, it can leverage both the labeled and unlabeled data to minimize labeling effort while maximize performance of instance segmentation. Results on medical images datasets demonstrate that the proposed method results in the embodiment of knowledge from available data in a meaningful way. The extensive quantitatively and qualitatively experiments show that, our method can yield the best-performing model with notable less annotation costs, compared with state-of-the-arts.