ACMM: Aligned Cross-Modal Memory for Few-Shot Image and Sentence Matching

Yan Huang, Liang Wang
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引用次数: 53

Abstract

Image and sentence matching has drawn much attention recently, but due to the lack of sufficient pairwise data for training, most previous methods still cannot well associate those challenging pairs of images and sentences containing rarely appeared regions and words, i.e., few-shot content. In this work, we study this challenging scenario as few-shot image and sentence matching, and accordingly propose an Aligned Cross-Modal Memory (ACMM) model to memorize the rarely appeared content. Given a pair of image and sentence, the model first includes an aligned memory controller network to produce two sets of semantically-comparable interface vectors through cross-modal alignment. Then the interface vectors are used by modality-specific read and update operations to alternatively interact with shared memory items. The memory items persistently memorize cross-modal shared semantic representations, which can be addressed out to better enhance the representation of few-shot content. We apply the proposed model to both conventional and few-shot image and sentence matching tasks, and demonstrate its effectiveness by achieving the state-of-the-art performance on two benchmark datasets.
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面向少镜头图像和句子匹配的对齐跨模态记忆
近年来,图像与句子的匹配备受关注,但由于缺乏足够的成对训练数据,以往的大多数方法仍然不能很好地将那些包含很少出现的区域和单词的具有挑战性的图像和句子对进行关联,即很少拍摄的内容。在这项工作中,我们将这一具有挑战性的场景研究为少镜头图像和句子匹配,并相应地提出了对齐跨模态记忆(ACMM)模型来记忆很少出现的内容。给定一对图像和句子,该模型首先包含对齐的内存控制器网络,通过跨模态对齐产生两组语义可比较的接口向量。然后,特定于模式的读取和更新操作使用接口向量来替代地与共享内存项交互。记忆项持久地记忆跨模态的共享语义表征,可以对其进行寻址,以更好地增强对少镜头内容的表征。我们将所提出的模型应用于传统和少数镜头图像和句子匹配任务,并通过在两个基准数据集上实现最先进的性能来证明其有效性。
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