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Compare More Nuanced: Pairwise Alignment Bilinear Network for Few-Shot Fine-Grained Learning

机译:比较更多的细节:成对对齐双线性网络用于几次拍摄的细粒度学习

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The recognition ability of human beings is developed in a progressive way. Usually, children learn to discriminate various objects from coarse to fine-grained with limited supervision. Inspired by this learning process, we propose a simple yet effective model for the Few-Shot Fine-Grained (FSFG) recognition, which tries to tackle the challenging fine-grained recognition task using meta-learning. The proposed method, named Pairwise Alignment Bilinear Network (PABN), is an end-to-end deep neural network. Unlike traditional deep bilinear networks for fine-grained classification, which adopt the self-bilinear pooling to capture the subtle features of images, the proposed model uses a novel pairwise bilinear pooling to compare the nuanced differences between base images and query images for learning a deep distance metric. In order to match base image features with query image features, we design feature alignment losses before the proposed pairwise bilinear pooling. Experiment results on four fine-grained classification datasets and one generic few-shot dataset demonstrate that the proposed model outperforms both the state-of-the-art few-shot fine-grained and general few-shot methods.
机译:人类的识别能力以渐进的方式发展。通常情况下,孩子学会区分不同的粗糙物体细粒度有限的监督。通过这个学习过程的启发,我们提出了为数不多的射击细粒度(FSFG)承认,它试图解决使用元学习的挑战细粒度识别任务简单而有效的模型。所提出的方法,命名为对比对双线性网络(PABN),是一个终端到终端的深神经网络。不同于传统的深双线性网络进行细粒度的分类,采用自双线性池捕捉图像的细微特征,该模型采用了新的配对双线性汇集比较基础的图像和查询图像之间的微妙的差异,学习深距离度量。为了匹配基本图像与查询图像的功能特点,我们设计提出的双线性配对前池功能定位的损失。四细粒度分类数据集和一个通用的几个次实验结果的数据集表明,该模型优于这两个国家的最先进的几拍细粒度和一般几拍的方法。

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