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Large-Scale Endoscopic Image and Video Linking with Gradient-Based Signatures

机译:具有基于梯度的签名的大型内窥镜图像和视频链接

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Given a large-scale video archive of surgical interventions and a medical image showing a specific moment of an operation, how to find the most image-related videos efficiently without the utilization of additional semantic characteristics? In this paper, we investigate a novel content-based approach of linking medical images with relevant video segments arising from endoscopic procedures. We propose to approximate the video segments' content-based features by gradient-based signatures and to index these signatures with the Minkowski distance in order to determine the most query-like video segments efficiently. We benchmark our approach on a large endoscopic image and video archive and show that our approach achieves a significant improvement in efficiency in comparison to the state-of-the-art while maintaining high accuracy.
机译:给定大规模的外科手术视频档案和显示特定手术时刻的医学图像,如何在不利用其他语义特征的情况下有效地找到与图像相关的视频最多?在本文中,我们研究了一种新颖的基于内容的方法,该方法将医学图像与内窥镜检查程序产生的相关视频片段链接起来。我们建议通过基于梯度的签名来近似视频片段的基于内容的特征,并用Minkowski距离对这些签名进行索引,以便有效地确定最类似于查询的视频片段。我们在大型内窥镜图像和视频档案中对我们的方法进行了基准测试,结果表明,与最新技术相比,我们的方法在保持高精度的同时,效率得到了显着提高。

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