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Papers/A Deep Local and Global Scene-Graph Matching for Image-Tex...

A Deep Local and Global Scene-Graph Matching for Image-Text Retrieval

Manh-Duy Nguyen, Binh T. Nguyen, Cathal Gurrin

2021-06-04Image-text RetrievalImage-text matchingText MatchingText RetrievalImage-to-Text RetrievalRetrievalGraph MatchingImage Retrieval
PaperPDFCode(official)

Abstract

Conventional approaches to image-text retrieval mainly focus on indexing visual objects appearing in pictures but ignore the interactions between these objects. Such objects occurrences and interactions are equivalently useful and important in this field as they are usually mentioned in the text. Scene graph presentation is a suitable method for the image-text matching challenge and obtained good results due to its ability to capture the inter-relationship information. Both images and text are represented in scene graph levels and formulate the retrieval challenge as a scene graph matching challenge. In this paper, we introduce the Local and Global Scene Graph Matching (LGSGM) model that enhances the state-of-the-art method by integrating an extra graph convolution network to capture the general information of a graph. Specifically, for a pair of scene graphs of an image and its caption, two separate models are used to learn the features of each graph's nodes and edges. Then a Siamese-structure graph convolution model is employed to embed graphs into vector forms. We finally combine the graph-level and the vector-level to calculate the similarity of this image-text pair. The empirical experiments show that our enhancement with the combination of levels can improve the performance of the baseline method by increasing the recall by more than 10% on the Flickr30k dataset.

Results

TaskDatasetMetricValueModel
Image RetrievalFlickr30K 1K testR@157.4LGSGM
Image RetrievalFlickr30K 1K testR@1090.2LGSGM
Image RetrievalFlickr30K 1K testR@584.1LGSGM
Image RetrievalFlickr30kRecall@157.4LGSGM
Image RetrievalFlickr30kRecall@1090.2LGSGM
Image RetrievalFlickr30kRecall@584.1LGSGM
Image RetrievalFlickr30kRecall@Sum231.7LGSGM
Image RetrievalFlickr30kRecall@Sum228.7GSMN
Image Retrieval with Multi-Modal QueryFlickr30kImage-to-text R@176.4GSMN
Image Retrieval with Multi-Modal QueryFlickr30kImage-to-text R@1097.3GSMN
Image Retrieval with Multi-Modal QueryFlickr30kImage-to-text R@594.3GSMN
Cross-Modal Information RetrievalFlickr30kImage-to-text R@176.4GSMN
Cross-Modal Information RetrievalFlickr30kImage-to-text R@1097.3GSMN
Cross-Modal Information RetrievalFlickr30kImage-to-text R@594.3GSMN
Cross-Modal RetrievalFlickr30kImage-to-text R@176.4GSMN
Cross-Modal RetrievalFlickr30kImage-to-text R@1097.3GSMN
Cross-Modal RetrievalFlickr30kImage-to-text R@594.3GSMN
Image-to-Text RetrievalFlickr30kRecall@176.4GSMN
Image-to-Text RetrievalFlickr30kRecall@1097.3GSMN
Image-to-Text RetrievalFlickr30kRecall@594.3GSMN
Image-to-Text RetrievalFlickr30kRecall@Sum268GSMN
Image-to-Text RetrievalFlickr30kRecall@171LGSGM
Image-to-Text RetrievalFlickr30kRecall@1096.1LGSGM
Image-to-Text RetrievalFlickr30kRecall@591.9LGSGM
Image-to-Text RetrievalFlickr30kRecall@Sum259LGSGM

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