论文标题

联合分布事项:深布朗距离协方差,用于几次分类

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

论文作者

Xie, Jiangtao, Long, Fei, Lv, Jiaming, Wang, Qilong, Li, Peihua

论文摘要

很少有射击分类是一个具有挑战性的问题,因为每个新任务只给出了很少的培训示例。解决这一挑战的有效研究界之一的重点是学习以查询图像和一些类别的支持图像之间的相似性度量驱动的深度表示。从统计上讲,这量量衡量图像特征的依赖性,被视为高维嵌入空间中的随机向量。以前的方法要么仅使用边缘分布而不考虑关节分布,具有有限表示能力的情况,要么在利用关节分布的情况下计算昂贵。在本文中,我们提出了一种深布朗距离协方差(DEEPBDC)方法,用于几个射击分类。 DEEPBDC的核心思想是通过测量嵌入式特征的关节特征功能与边际乘积之间的差异来学习图像表示。随着BDC度量的解耦,我们将其作为高度模块化和有效的层进行配合。此外,我们将DEEPBDC实例化,以两个不同的少量分类框架。我们对六个标准的少量图像基准进行实验,涵盖一般对象识别,细粒度分类和跨域分类。广泛的评估表明,我们的DEEPBDC在建立新的最先进的结果的同时,大大优于同行。源代码可从http://www.peihuali.org/deepbdc获得

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 Covariance (DeepBDC) method for few-shot classification. The central idea of DeepBDC is to learn image representations by measuring the discrepancy between joint characteristic functions of embedded features and product of the marginals. As the BDC metric is decoupled, we formulate it as a highly modular and efficient layer. Furthermore, we instantiate DeepBDC in two different few-shot classification frameworks. We make experiments on six standard few-shot image benchmarks, covering general object recognition, fine-grained categorization and cross-domain classification. Extensive evaluations show our DeepBDC significantly outperforms the counterparts, while establishing new state-of-the-art results. The source code is available at http://www.peihuali.org/DeepBDC

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