关联多个视觉转换层以实现细粒度图像表示

Fayou Sun , Hea Choon Ngo , Yong Wee Sek , Zuqiang Meng
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引用次数: 0

摘要

-准确的判别区域建议对于细粒度图像识别具有重要作用。视觉转换器(ViT)由于其固有的多头自注意机制,在计算机视觉中产生了引人注目的效果。然而,在某些层之后,注意力图逐渐相似,并且由于ViT使用分类令牌来实现分类,因此无法有效地选择有判别力的图像块进行细粒度图像分类。为了准确检测判别区域,我们提出了一种新的网络AMTrans,它有效地增加了层来学习不同的特征,并利用集成的原始注意力图来捕捉更显著的特征。具体来说,我们使用DeepViT作为主干来解决注意力崩溃问题。然后,我们融合每一层中的每个头部注意力权重,以生成注意力权重图。然后,我们交替地使用递归残差细化块来提升显著特征,然后使用语义分组方法来提出判别特征区域。大量实验证明,AMTrans在相同设置下,在四个广泛使用的细粒度数据集上获得了SOTA性能,这些数据集包括Stanford Cars、Stanford Dogs、CUB200-2011和ImageNet。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Associating multiple vision transformer layers for fine-grained image representation

- Accurate discriminative region proposal has an important effect for fine-grained image recognition. The vision transformer (ViT) brings about a striking effect in computer vision due to its innate multi-head self-attention mechanism. However, the attention maps are gradually similar after certain layers, and since ViT used a classification token to achieve classification, it is unable to effectively select discriminative image patches for fine-grained image classification. To accurately detect discriminative regions, we propose a novel network AMTrans, which efficiently increases layers to learn diverse features and utilizes integrated raw attention maps to capture more salient features. Specifically, we employ DeepViT as backbone to solve the attention collapse issue. Then, we fuse each head attention weight within each layer to produce an attention weight map. After that, we alternatively use recurrent residual refinement blocks to promote salient feature and then utilize the semantic grouping method to propose the discriminative feature region. A lot of experiments prove that AMTrans acquires the SOTA performance on four widely used fine-grained datasets under the same settings, involving Stanford-Cars, Stanford-Dogs, CUB-200-2011, and ImageNet.

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