Mind Your Neighbours: Image Annotation With Metadata Neighbourhood Graph Co-Attention Networks

Junjie Zhang, Qi Wu, Jian Zhang, Chunhua Shen, Jianfeng Lu
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引用次数: 17

Abstract

As the visual reflections of our daily lives, images are frequently shared on the social network, which generates the abundant 'metadata' that records user interactions with images. Due to the diverse contents and complex styles, some images can be challenging to recognise when neglecting the context. Images with the similar metadata, such as 'relevant topics and textual descriptions', 'common friends of users' and 'nearby locations', form a neighbourhood for each image, which can be used to assist the annotation. In this paper, we propose a Metadata Neighbourhood Graph Co-Attention Network (MangoNet) to model the correlations between each target image and its neighbours. To accurately capture the visual clues from the neighbourhood, a co-attention mechanism is introduced to embed the target image and its neighbours as graph nodes, while the graph edges capture the node pair correlations. By reasoning on the neighbourhood graph, we obtain the graph representation to help annotate the target image. Experimental results on three benchmark datasets indicate that our proposed model achieves the best performance compared to the state-of-the-art methods.
注意你的邻居:使用元数据邻居图共同关注网络的图像标注
图片作为我们日常生活的视觉反映,经常在社交网络上被分享,这产生了丰富的“元数据”,记录着用户与图片的互动。由于内容的多样性和复杂的风格,当忽略上下文时,一些图像可能难以识别。具有类似元数据的图像,如“相关主题和文本描述”、“用户的共同朋友”和“附近位置”,为每个图像形成一个邻域,可用于辅助注释。在本文中,我们提出了一个元数据邻域图共同关注网络(MangoNet)来建模每个目标图像与其邻域之间的相关性。为了从邻域中准确捕获视觉线索,引入了一种共同关注机制,将目标图像及其邻域嵌入为图节点,而图边缘捕获节点对的相关性。通过对邻域图进行推理,得到图的表示形式,帮助对目标图像进行标注。在三个基准数据集上的实验结果表明,与目前的方法相比,我们提出的模型取得了最好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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