基于提议的点监督实例分割

I. Laradji, Negar Rostamzadeh, Pedro H. O. Pinheiro, David Vázquez, Mark W. Schmidt
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引用次数: 21

摘要

实例分割方法通常需要昂贵的逐像素标签。我们提出了一种叫做WISE-Net的方法,它只需要点级注释。在训练过程中,模型只能访问每个对象的单个像素标签,但任务是输出完整的分割掩码。为了解决这一挑战,我们构建了一个具有两个分支的网络:(1)一个预测每个对象位置的10-calization网络(L-Net);(2)学习同一物体像素接近的嵌入空间的嵌入网络(E-Net)。通过对具有相似嵌入的像素进行分组,获得定位对象的分割掩码。我们在PASCAL VOC、COCO、KITTI和cityscape数据集上评估了我们的方法。实验表明,与全监督方法相比,我们的方法(1)在某些场景下获得了具有竞争力的结果;(2)在固定标注预算下优于全监督和弱监督方法;(3)通过点级监督为实例分割建立第一个强基线。
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Proposal-Based Instance Segmentation With Point Supervision
Instance segmentation methods often require costly per-pixel labels. We propose a method called WISE-Net that only requires point-level annotations. During training, the model only has access to a single pixel label per object, yet the task is to output full segmentation masks. To address this challenge, we construct a network with two branches: (1) a 10-calization network (L-Net) that predicts the location of each object; and (2) an embedding network (E-Net) that learns an embedding space where pixels of the same object are close. The segmentation masks for the located objects are obtained by grouping pixels with similar embeddings. We evaluate our approach on PASCAL VOC, COCO, KITTI and CityScapes datasets. The experiments show that our method (1) obtains competitive results compared to fully-supervised methods in certain scenarios; (2) outperforms fully-and weakly-supervised methods with a fixed annotation budget; and (3) establishes a first strong baseline for instance segmentation with point-level supervision.
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