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arxiv:2407.09686

SPIN: Hierarchical Segmentation with Subpart Granularity in Natural Images

Published on Jul 12, 2024
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Abstract

A new hierarchical semantic segmentation dataset with subpart annotations called SPIN is introduced along with novel evaluation metrics for assessing spatial and semantic relationships across different granularity levels.

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Hierarchical segmentation entails creating segmentations at varying levels of granularity. We introduce the first hierarchical semantic segmentation dataset with subpart annotations for natural images, which we call SPIN (SubPartImageNet). We also introduce two novel evaluation metrics to evaluate how well algorithms capture spatial and semantic relationships across hierarchical levels. We benchmark modern models across three different tasks and analyze their strengths and weaknesses across objects, parts, and subparts. To facilitate community-wide progress, we publicly release our dataset at https://joshmyersdean.github.io/spin/index.html.

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