Litcius/Paper detail

Variational Feature Disentangling for Fine-Grained Few-Shot Classification

Jingyi Xu, Hieu Lê, Mingzhen Huang, ShahRukh Athar, Dimitris Samaras

20212021 IEEE/CVF International Conference on Computer Vision (ICCV)71 citationsDOI

Abstract

Data augmentation is an intuitive step towards solving the problem of few-shot classification. However, ensuring both discriminability and diversity in the augmented samples is challenging. To address this, we propose a feature disentanglement framework that allows us to augment features with randomly sampled intra-class variations while preserving their class-discriminative features. Specifically, we disentangle a feature representation into two components: one represents the intra-class variance and the other encodes the class-discriminative information. We assume that the intra-class variance induced by variations in poses, backgrounds, or illumination conditions is shared across all classes and can be modelled via a common distribution. Then we sample features repeatedly from the learned intra-class variability distribution and add them to the class-discriminative features to get the augmented features. Such a data augmentation scheme ensures that the augmented features inherit crucial class-discriminative features while exhibiting large intra-class variance. Our method significantly outperforms the state-of-the-art methods on multiple challenging fine-grained few-shot image classification benchmarks. Code is available at: https://github.com/cvlab-stonybrook/vfd-iccv21

Topics & Concepts

Discriminative modelFeature (linguistics)Computer sciencePattern recognition (psychology)Class (philosophy)Artificial intelligenceVariance (accounting)Representation (politics)Code (set theory)Feature extractionPoliticsBusinessPolitical scienceSet (abstract data type)LinguisticsPhilosophyProgramming languageLawAccountingDomain Adaptation and Few-Shot LearningAnomaly Detection Techniques and ApplicationsMultimodal Machine Learning Applications