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What's the Point: Semantic Segmentation with Point Supervision

机译:点了什么:用点监督语义分割

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The semantic image segmentation task presents a trade-off between test time accuracy and training time annotation cost. Detailed per-pixel annotations enable training accurate models but are very time-consuming to obtain; image-level class labels are an order of magnitude cheaper but result in less accurate models. We take a natural step from image-level annotation towards stronger supervision: we ask annotators to point to an object if one exists. We incorporate this point supervision along with a novel objectness potential in the training loss function of a CNN model. Experimental results on the PASCAL VOC 2012 benchmark reveal that the combined effect of point-level supervision and object-ness potential yields an improvement of 12.9% mIOU over image-level supervision. Further, we demonstrate that models trained with point-level supervision are more accurate than models trained with image-level, squiggle-level or full supervision given a fixed annotation budget.
机译:语义图像分割任务在测试时间准确度和训练时间注释成本之间提供权衡。详细的每个像素注释能够培训准确的模型,但获得耗时非常耗时;图像级别类标签是一个更便宜的阶数,但导致模型不太准确。我们从图像级注释迈出了一个自然的步骤,更强大的监督:如果存在,我们会要求注释器指向一个对象。我们将此点监督纳入CNN模型的培训损失功能中的新颖对象潜力。 Pascal VOC 2012年基准测试结果表明,点级监管和对象潜力的综合影响产生了12.9%的MIOU在图像级监管的提高。此外,我们展示了用点级监管训练的模型比具有图像级别,Squiggle级别或完整监督训练的模型更准确,给出固定的注释预算。

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