CVApr 13, 2021

Pointly-Supervised Instance Segmentation

arXiv:2104.06404v2144 citations
Originality Incremental advance
AI Analysis

This work addresses the high annotation cost for instance segmentation, making it more accessible in practice, though it is incremental as it builds on existing models like Mask R-CNN and PointRend.

The authors tackled the problem of reducing annotation cost for instance segmentation by proposing a point-based weak supervision scheme, achieving 94%--98% of fully-supervised performance with only 10 annotated points per object and making annotation approximately 5 times faster.

We propose an embarrassingly simple point annotation scheme to collect weak supervision for instance segmentation. In addition to bounding boxes, we collect binary labels for a set of points uniformly sampled inside each bounding box. We show that the existing instance segmentation models developed for full mask supervision can be seamlessly trained with point-based supervision collected via our scheme. Remarkably, Mask R-CNN trained on COCO, PASCAL VOC, Cityscapes, and LVIS with only 10 annotated random points per object achieves 94%--98% of its fully-supervised performance, setting a strong baseline for weakly-supervised instance segmentation. The new point annotation scheme is approximately 5 times faster than annotating full object masks, making high-quality instance segmentation more accessible in practice. Inspired by the point-based annotation form, we propose a modification to PointRend instance segmentation module. For each object, the new architecture, called Implicit PointRend, generates parameters for a function that makes the final point-level mask prediction. Implicit PointRend is more straightforward and uses a single point-level mask loss. Our experiments show that the new module is more suitable for the point-based supervision.

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