Block Annotation: Better Image Annotation for Semantic Segmentation with Sub-Image Decomposition

02/16/2020
by   Hubert Lin, et al.
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Image datasets with high-quality pixel-level annotations are valuable for semantic segmentation: labelling every pixel in an image ensures that rare classes and small objects are annotated. However, full-image annotations are expensive, with experts spending up to 90 minutes per image. We propose block sub-image annotation as a replacement for full-image annotation. Despite the attention cost of frequent task switching, we find that block annotations can be crowdsourced at higher quality compared to full-image annotation with equal monetary cost using existing annotation tools developed for full-image annotation. Surprisingly, we find that 50 semantic segmentation to achieve equivalent performance to 100 annotated. Furthermore, as little as 12 as high as 98 settings, block annotation outperforms existing methods by 3-4 given equivalent annotation time. To recover the necessary global structure for applications such as characterizing spatial context and affordance relationships, we propose an effective method to inpaint block-annotated images with high-quality labels without additional human effort. As such, fewer annotations can also be used for these applications compared to full-image annotation.

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