ESA: Annotation-Efficient Active Learning for Semantic Segmentation
Active learning enhances annotation efficiency by selecting the most revealing samples for labeling, thereby reducing reliance on extensive human input. Previous methods in semantic segmentation have centered on individual pixels or small areas, neglecting the rich patterns in natural images and the...
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Zusammenfassung: | Active learning enhances annotation efficiency by selecting the most
revealing samples for labeling, thereby reducing reliance on extensive human
input. Previous methods in semantic segmentation have centered on individual
pixels or small areas, neglecting the rich patterns in natural images and the
power of advanced pre-trained models. To address these challenges, we propose
three key contributions: Firstly, we introduce Entity-Superpixel Annotation
(ESA), an innovative and efficient active learning strategy which utilizes a
class-agnostic mask proposal network coupled with super-pixel grouping to
capture local structural cues. Additionally, our method selects a subset of
entities within each image of the target domain, prioritizing superpixels with
high entropy to ensure comprehensive representation. Simultaneously, it focuses
on a limited number of key entities, thereby optimizing for efficiency. By
utilizing an annotator-friendly design that capitalizes on the inherent
structure of images, our approach significantly outperforms existing
pixel-based methods, achieving superior results with minimal queries,
specifically reducing click cost by 98% and enhancing performance by 1.71%. For
instance, our technique requires a mere 40 clicks for annotation, a stark
contrast to the 5000 clicks demanded by conventional methods. |
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DOI: | 10.48550/arxiv.2408.13491 |