3.8 Proceedings Paper

FASA: Feature Augmentation and Sampling Adaptation for Long-Tailed Instance Segmentation

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IEEE
DOI: 10.1109/ICCV48922.2021.00344

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  1. RIE2020 Industry Alignment Fund - Industry Collaboration Projects (IAF-ICP) Funding Initiative

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The Feature Augmentation and Sampling Adaptation (FASA) method addresses the data scarcity issue for rare classes in long-tailed instance segmentation. FASA is a fast, generic method that can be easily applied to standard or long-tailed segmentation frameworks, showing consistent performance gains.
Recent methods for long-tailed instance segmentation still struggle on rare object classes with few training data. We propose a simple yet effective method, Feature Augmentation and Sampling Adaptation (FASA), that addresses the data scarcity issue by augmenting the feature space especially for rare classes. Both the Feature Augmentation (FA) and feature sampling components are adaptive to the actual training status - FA is informed by the feature mean and variance of observed real samples from past iterations, and we sample the generated virtual features in a loss-adapted manner to avoid over-fitting. FASA does not require any elaborate loss design, and removes the need for inter-class transfer learning that often involves large cost and manually-defined head/tail class groups. We show FASA is a fast, generic method that can be easily plugged into standard or long-tailed segmentation frameworks, with consistent performance gains and little added cost. FASA is also applicable to other tasks like long-tailed classification with state-of-the-art performance.(1) (2)

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