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Image retrieval with deep local feature descriptors and attention-based keypoint descriptors

机译:使用深度局部特征描述符和基于注意力的关键点描述符进行图像检索

摘要

Systems and methods of the present disclosure can use machine-learned image descriptor models for image retrieval applications and other applications. A trained image descriptor model can be used to analyze a plurality of database images to create a large-scale index of keypoint descriptors associated with the database images. An image retrieval application can provide a query image as input to the trained image descriptor model, resulting in receipt of a set of keypoint descriptors associated with the query image. Keypoint descriptors associated with the query image can be analyzed relative to the index to determine matching descriptors (e.g., by implementing a nearest neighbor search). Matching descriptors can then be geometrically verified and used to identify one or more matching images from the plurality of database images to retrieve and provide as output (e.g., by providing for display) within the image retrieval application.
机译:本公开的系统和方法可以将机器学习的图像描述符模型用于图像检索应用程序和其他应用程序。训练有素的图像描述符模型可用于分析多个数据库图像,以创建与数据库图像关联的关键点描述符的大规模索引。图像检索应用程序可以将查询图像作为已训练图像描述符模型的输入,从而导致接收到一组与查询图像关联的关键点描述符。可以相对于索引分析与查询图像相关联的关键点描述符,以确定匹配的描述符(例如,通过实现最近邻居搜索)。然后,可以对匹配描述符进行几何验证,并用于从多个数据库图像中识别一个或多个匹配图像,以在图像检索应用程序中检索并作为输出提供(例如,通过提供显示)。

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