A large-scale image retrieval system for everyday scenes

Arun Zachariah, Mohamed Gharibi, P. Rao
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引用次数: 1

Abstract

We present a system for large-scale image retrieval on everyday scenes with common objects. Our system leverages advances in deep learning and natural language processing (NLP) for improved understanding of images by capturing the relationships between the objects within an image. As a result, a user can retrieve highly relevant images and obtain suggestions for similar image queries to further explore the repository. Each image in the repository is processed (using deep learning) to obtain the most probable captions and objects in it. The captions are parsed into tree structures using NLP techniques, and stored and indexed in a database system. When a query image is posed, an optimized tree-pattern query is executed by the database system to obtain candidate matches, which are then ranked using tree-edit distance of the tree structures to output the top-k matches. Word embeddings and Bloom filters are used to obtain similar image queries. By clicking the suggested similar image queries, a user can intuitively explore the repository.
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用于日常场景的大规模图像检索系统
提出了一种基于日常场景中常见物体的大规模图像检索系统。我们的系统利用深度学习和自然语言处理(NLP)的进步,通过捕捉图像中对象之间的关系来提高对图像的理解。因此,用户可以检索高度相关的图像,并获得类似图像查询的建议,以进一步探索存储库。存储库中的每个图像都经过处理(使用深度学习),以获得其中最可能的标题和对象。使用NLP技术将标题解析为树结构,并在数据库系统中存储和索引。当查询图像被提出时,数据库系统执行优化的树模式查询以获得候选匹配,然后使用树结构的树编辑距离对候选匹配进行排序,输出top-k匹配。单词嵌入和布隆过滤器用于获得类似的图像查询。通过单击建议的类似图像查询,用户可以直观地浏览存储库。
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