Instance Segmentation with Mask-supervised Polygonal Boundary Transformers

Justin Lazarow, Weijian Xu, Z. Tu
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引用次数: 18

Abstract

In this paper, we present an end-to-end instance segmentation method that regresses a polygonal boundary for each object instance. This sparse, vectorized boundary representation for objects, while attractive in many downstream computer vision tasks, quickly runs into issues of parity that need to be addressed: parity in supervision and parity in performance when compared to existing pixel-based methods. This is due in part to object instances being annotated with ground-truth in the form of polygonal boundaries or segmentation masks, yet being evaluated in a convenient manner using only segmentation masks. Our method, BoundaryFormer, is a Transformer based architecture that directly predicts polygons yet uses instance mask segmentations as the ground-truth supervision for computing the loss. We achieve this by developing an end-to-end differentiable model that solely relies on supervision within the mask space through differentiable rasterization. Boundary-Former matches or surpasses the Mask R-CNN method in terms of instance segmentation quality on both COCO and Cityscapes while exhibiting significantly better transferability across datasets.
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基于掩码监督多边形边界变换的实例分割
在本文中,我们提出了一种端到端实例分割方法,该方法为每个对象实例回归多边形边界。这种稀疏的、矢量化的对象边界表示,虽然在许多下游计算机视觉任务中很有吸引力,但很快就会遇到需要解决的奇偶性问题:与现有的基于像素的方法相比,监督和性能上的奇偶性。这部分是由于对象实例以多边形边界或分割蒙版的形式用ground-truth进行注释,但仅使用分割蒙版以方便的方式进行评估。我们的方法,BoundaryFormer,是一个基于Transformer的架构,它直接预测多边形,但使用实例掩码分割作为计算损失的真值监督。我们通过开发端到端可微模型来实现这一点,该模型仅依赖于通过可微光栅化在掩模空间内的监督。在COCO和cityscape的实例分割质量方面,Boundary-Former匹配或超过Mask R-CNN方法,同时在数据集之间表现出更好的可移植性。
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