基于特征区分的少样本分类网络

Jing Chen, Guan Yang, Xiaoming Liu, Yang Liu, Weifu Chen
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引用次数: 0

摘要

针对小样本学习方法中存在的以孤立的角度对待样本,忽略样本间差异信息的问题,提出了一种基于特征区分的小样本学习分类网络。我们提出了一种新的特征自适应融合模块和特征转换模块,其中特征自适应融合模块用于融合全局信息和细节特征,特征转换模块用于标记识别度高的语义特征,从而缩小同一类别内的语义,扩大不同类别之间的语义差距。实验使用CUB数据集和mini-ImageNet数据集,5way-lshot和5way-5shot任务的准确率分别达到57.63%、76.54%和54.39%、73.19%。实验结果表明,我们的方法可以进一步学习如何通过区分特征来区分不同的类别概念,因此提出的few-shot学习模型具有更高的准确性和鲁棒性。
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Few-shot Classification Network Based on Feature Differentiation
Aiming at the existing problems in the few-shot learning methods which treat samples in an isolated perspective and ignore the difference information between samples, we propose a few-shot learning classification network based on feature differentiation. A new feature adaptive fusion module and a feature conversion module form our network, where the former is proposed to fuse global information and detailed features, and the latter one marks the semantic features which have high recognition, so as to narrow the semantics within the same category and widen the semantic gap between different categories. CUB dataset and mini-ImageNet dataset were used in the experiment, and the accuracy of 5way-lshot and 5way-5shot tasks respectively achieved 57.63%, 76.54% and 54.39%, 73.19%. Experimental results show that our method can further learn how to distinguish different category concepts through differentiated features, thus the proposed few-shot learning model has higher accuracy and robustness.
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