Litcius/Paper detail

Frozen Feature Augmentation for Few-Shot Image Classification

Andreas Bär, Neil Houlsby, Mostafa Dehghani, M. Kumar

202415 citationsDOI

Abstract

Training a linear classifier or lightweight model on top of pretrained vision model outputs, socalled ‘frozen features’, leads to impressive performance on a number of downstream few-shot tasks. Currently, frozen features are not modified during training. On the other hand, when networks are trained directly on images, data augmentation is a standard recipe that improves performance with no substantial overhead. In this paper, we conduct an extensive pilot study on few-shot image classification that explores applying data augmentations in the frozen feature space, dubbed 'frozen feature augmentation (FroFA)‘, cov-ering twenty augmentations in total. Our study demonstrates that adopting a deceptively simple pointwise FroFA, such as brightness, can improve few-shot performance consistently across three network architectures, three large pre-training datasets, and eight transfer datasets.

Topics & Concepts

Shot (pellet)Computer scienceFeature (linguistics)Artificial intelligenceContextual image classificationImage (mathematics)Computer visionPattern recognition (psychology)Feature extractionMaterials scienceLinguisticsMetallurgyPhilosophyAdvanced Neural Network ApplicationsAdvanced Image and Video Retrieval TechniquesDomain Adaptation and Few-Shot Learning