Although weakly-supervised techniques can reduce the labeling effort, it is unclear whether a saliency model trained with weakly-supervised data (e.g., point annotation) can achieve the equivalent performance of its fully-supervised version. This paper attempts to answer this unexplored question by proving a hypothesis: there is a point-labeled dataset where saliency models trained on it can achieve equivalent performance when trained on the densely annotated dataset. To prove this conjecture, we proposed a novel yet effective adversarial trajectory-ensemble active learning (ATAL). Our contributions are three-fold: 1) Our proposed adversarial attack triggering uncertainty can conquer the overconfidence of existing active learning methods and accurately locate these uncertain pixels. {2)} Our proposed trajectory-ensemble uncertainty estimation method maintains the advantages of the ensemble networks while significantly reducing the computational cost. {3)} Our proposed relationship-aware diversity sampling algorithm can conquer oversampling while boosting performance. Experimental results show that our ATAL can find such a point-labeled dataset, where a saliency model trained on it obtained $97\%$ -- $99\%$ performance of its fully-supervised version with only ten annotated points per image.
翻译:虽然监管不力的技术可以减少标签工作,但尚不清楚的是,一个受过监管不力数据的显著模型(如点注)能否达到完全监督的版本的同等性能。本文试图通过证明一个假设来回答这个未探索的问题:有一个点标签数据集,在对高注解数据集进行培训时,经过培训的显著模型能够达到同等性能。为了证明这一推测,我们提议了一个创新而有效的对抗性轨迹集成积极学习(ATAL)。我们的贡献有三重:1我们提议的引发不确定性的对抗性攻击能够克服现有积极学习方法的过度自信,并准确地定位这些不确定的像素。 {2}我们提议的轨迹-共同不确定性估计方法保持了混合网络的优势,同时大大降低了计算成本。{3}我们提议的基于关系的多样性抽样算法能够克服过度的测试,同时提升性能。实验结果表明,我们的ATAL能够找到这样一个标值$的数据集,其中只有9-9的高级模型。