用于细粒度少镜头学习的任务感知双相似网络

Yanjun Qi, Han Sun, Ningzhong Liu, Huiyu Zhou
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引用次数: 1

摘要

细粒度的few-shot学习的目标是通过学习少量标记样本来识别同一超类别下的子类别。最近的大多数方法采用单一的相似性度量,即单独的全局或局部度量。然而,对于类内方差大、类间方差小的细粒度图像,探索全局不变特征和判别局部细节是非常必要的。在本文中,我们提出了一种任务感知的双相似网络(TDSNet),它利用全局特征和局部补丁来获得更好的性能。具体而言,采用局部特征增强模块激活具有强判别性的特征。此外,任务感知注意力利用了整个任务之间的重要补丁。最后,利用全局特征和判别局部补丁得到的类原型进行预测。在三个细粒度数据集上的大量实验表明,与其他最先进的算法相比,所提出的TDSNet具有竞争力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Task-aware Dual Similarity Network for Fine-grained Few-shot Learning
The goal of fine-grained few-shot learning is to recognize sub-categories under the same super-category by learning few labeled samples. Most of the recent approaches adopt a single similarity measure, that is, global or local measure alone. However, for fine-grained images with high intra-class variance and low inter-class variance, exploring global invariant features and discriminative local details is quite essential. In this paper, we propose a Task-aware Dual Similarity Network(TDSNet), which applies global features and local patches to achieve better performance. Specifically, a local feature enhancement module is adopted to activate the features with strong discriminability. Besides, task-aware attention exploits the important patches among the entire task. Finally, both the class prototypes obtained by global features and discriminative local patches are employed for prediction. Extensive experiments on three fine-grained datasets demonstrate that the proposed TDSNet achieves competitive performance by comparing with other state-of-the-art algorithms.
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