Joint Distribution Matters: Deep Brownian Distance Covariance for Few-Shot Classification

Dalian University of Technology · Tianjin University

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Abstract

Few-shot classification is a challenging problem as only very few training examples are given for each new task. One of the effective research lines to address this challenge focuses on learning deep representations driven by a similarity measure between a query image and few support images of some class. Statistically, this amounts to measure the dependency of image features, viewed as random vectors in a high-dimensional embedding space. Previous methods either only use marginal distributions without considering joint distributions, suffering from limited representation capability, or are computationally expensive though harnessing joint distributions. In this paper, we propose a deep Brownian Distance…

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272
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Authors

5

Topics & keywords

Keywords
  • Computer science
  • Artificial intelligence
  • Pattern recognition (psychology)
  • Contextual image classification
  • Embedding
  • Covariance
  • Statistical distance
  • Metric (unit)
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