Boundary-based instance segmentation has drawn much attention since of its attractive efficiency. However, existing methods suffer from the difficulty in long-distance regression. In this paper, we propose a coarse-to-fine module to address the problem. Approximate boundary points are generated at the coarse stage and then features of these points are sampled and fed to a refined regressor for fine prediction. It is end-to-end trainable since differential sampling operation is well supported in the module. Furthermore, we design a holistic boundary-aware branch and introduce instance-agnostic supervision to assist regression. Equipped with ResNet-101, our approach achieves 31.7\% mask AP on COCO dataset with single-scale training and testing, outperforming the baseline 1.3\% mask AP with less than 1\% additional parameters and GFLOPs. Experiments also show that our proposed method achieves competitive performance compared to existing boundary-based methods with a lightweight design and a simple pipeline.
翻译:从具有吸引力的效率来看,基于边界的分块法已引起人们的极大注意,但是,现有的方法在长距离回归方面遇到困难。在本文中,我们提出一个粗到粗的模块来解决这个问题。在粗的阶段就产生了近边界点,然后对这些点的特征进行抽样,并提供给精细的递减器,以作精确预测。它是端到端的训练,因为不同取样作业在单元中得到了很好的支持。此外,我们设计了一个全面的边界识别分支,并引入了实例学监督,以协助回归。在ResNet-101的装备下,我们的方法在COCO数据集上实现了31.7 ⁇ 的防火墙,并进行了单一规模的培训和测试,比基准1.3 ⁇ 防火墙多,增加了不到1 ⁇ 的额外参数和GFLOPs。实验还表明,我们拟议的方法与现有的边界方法相比,有了轻量设计和简单管道,取得了竞争性的性能。