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Weakly Supervised Scene Parsing with Point-Based Distance Metric Learning

机译:基于点的距离度量学习解析弱监督场景

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Semantic scene parsing is suffering from the fact that pixel-level annotations are hard to be collected. To tackle this issue, we propose a Point-based Distance Metric Learning (PDML) in this paper. PDML does not require dense annotated masks and only leverages several labeled points that are much easier to obtain to guide the training process. Concretely, we leverage semantic relationship among the annotated points by encouraging the feature representations of the intra- and inter-category points to keep consistent, i.e. points within the same category should have more similar feature representations compared to those from different categories. We formulate such a characteristic into a simple distance metric loss, which collaborates with the point-wise cross-entropy loss to optimize the deep neural networks. Furthermore, to fully exploit the limited annotations, distance metric learning is conducted across different training images instead of simply adopting an image-dependent manner. We conduct extensive experiments on two challenging scene parsing benchmarks of PASCAL-Context and ADE 20K to validate the effectiveness of our PDML, and competitive mIoU scores are achieved.
机译:语义场景解析患有像素级注释难以收集的事实。为了解决这个问题,我们在本文中提出了一种基于点的距离度量学习(PDML)。 PDML不需要密集的注释掩码,只能利用几个标记的点,这更容易获得指导培训过程。具体地,我们通过鼓励分类内部和分类点的特征表示来利用注释点之间的语义关系,以保持一致,即相同类别中的点应该具有更类似的特征表示与来自不同类别的分类。我们将这样的特征分成简单的距离度量损失,其与点亮跨熵丢失合作以优化深度神经网络。此外,为了充分利用有限的注释,在不同的训练图像上进行距离度量学习,而不是简单地采用图像相关的方式。我们对Pascal-Context的两个具有挑战性的场景进行了广泛的实验,并验证了我们PDML的有效性,并实现了竞争力的Miou分数。

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