基于多特征变换层的跨域少镜头分类

Li Yalan, Wu Jijie
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引用次数: 2

摘要

few-shot分类的目的是分类新的类别,每个类别包含很少的标记样本。目前流行的跨域少拍分类采用特征变换层对特征进行变换来实现特征增强,从而在训练过程中模拟不同域的各种特征分布。然而,由于跨域特征分布差异较大,单个特征转换层无法进行多个特征转换。为了获得特征分布在不同域的变化,在原有特征变换层的基础上,提出了一种多样化的特征变换,解决了基于度量的跨域少拍分类问题,基于mini-ImageNet、CUB、Cars、Places和Plantae这5个常用的少拍分类数据集,得到了仿真结果。仿真结果表明,所提出的多样化特征转换层在基于度量的模型中能够取得较好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cross-Domain Few-Shot Classification through Diversified Feature Transformation Layers
The purpose of the few-shot classification is to classify new categories, and each category contains few labeled samples. The currently popular cross-domain few-shot classification uses a feature transformation layer to transform features to achieve the feature enhancement, so as to simulate various feature distributions in different domains during the training process. However, due to the large differences in the distribution of cross-domain features, a single feature transformation layer cannot perform multiple feature transformations. To obtain the change of the feature distribution in different domains, a diversified feature transformation is proposed based on the original feature transformation layer to solve the metric-based cross-domain few-shot classification problem Simulation results are obtained based on these five datasets commonly used in few-shot classification: mini-ImageNet, CUB, Cars, Places and Plantae. The simulation results show that the proposed diversified feature transformation layer can achieve good results in the metric-based model.
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