Cross-modal Retrieval based on Big Transfer and Regional Maximum Activation of Convolutions with Generalized Attention

Wenwen Yang, Yan Hua
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Abstract

Image-text retrieval is a challenge topic since image features are still not good enough to represent the high-level semantic information, though the representation ability is improved thanks to advances in deep learning. This paper proposes a cross-modal image-text retrieval framework (BiTGRMAC) based on big transfer and region maximum activation convolution with generalized attention, where big transfer (BiT) trained with large amount data is utilized to extract image features and fine-tuned on the cross-modal image datasets. At the same time, a new generalized attention region maximum activation convolution (GRMAC) descriptor is introduced into BiT, which can generate image features through attention mechanism, then reduce the influence of background clustering and highlight the target. For texts, the widely used Sentence CNN is adopted to extract text features. The parameters of image and text deep models are learned by minimizing a cross-modal loss function in an end-to-end framework. Experimental results show that this method can effectively improve the accuracy of retrieval on three widely used datasets.
基于大迁移和广义注意卷积区域最大激活的跨模态检索
图像文本检索是一个具有挑战性的话题,因为图像特征仍然不足以表示高级语义信息,尽管由于深度学习的进步,表示能力得到了提高。本文提出了一种基于广义注意力的大迁移和区域最大激活卷积的跨模态图像文本检索框架(BiTGRMAC),利用经过大量数据训练的大迁移(BiT)提取图像特征并对跨模态图像数据集进行微调。同时,引入广义注意区域最大激活卷积(GRMAC)描述子,通过注意机制生成图像特征,减少背景聚类的影响,突出目标。对于文本,采用广泛使用的句子CNN提取文本特征。通过最小化端到端框架中的跨模态损失函数来学习图像和文本深度模型的参数。实验结果表明,该方法可以有效地提高三个广泛使用的数据集的检索精度。
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