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Robust Image Descriptors for Real-Time Inter-Examination Retargeting in Gastrointestinal Endoscopy

机译:胃肠内镜内镜检查中实时间隙次疗中的鲁棒图像描述符

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For early diagnosis of malignancies in the gastrointestinal tract, surveillance endoscopy is increasingly used to monitor abnormal tissue changes in serial examinations of the same patient. Despite successes with optical biopsy for in vivo and in situ tissue characterisation, biopsy retargeting for serial examinations is challenging because tissue may change in appearance between examinations. In this paper, we propose an inter-examination retargeting framework for optical biopsy, based on an image descriptor designed for matching between endoscopic scenes over significant time intervals. Each scene is described by a hierarchy of regional intensity comparisons at various scales, offering tolerance to long-term change in tissue appearance whilst remaining discriminative. Binary coding is then used to compress the descriptor via a novel random forests approach, providing fast comparisons in Hamming space and real-time retargeting. Extensive validation conducted on 13 in vivo gastrointestinal videos, collected from six patients, show that our approach outperforms state-of-the-art methods.
机译:对于胃肠道恶性肿瘤的早期诊断,监测内窥镜检查越来越多地用于监测同一患者的连续检查中的异常组织变化。尽管在体内和原位组织表征中取得了光学活检,但是用于连续检查的活检次数是具有挑战性的,因为组织可能在检查之间的外观变化。在本文中,我们提出了一种基于设计用于在内窥镜场景之间匹配的图像描述符以在显着的时间间隔内匹配的图像描述符。每个场景被各种尺度的区域强度比较的层次描述,在剩余识别的同时向组织外观中的长期变化提供公差。然后使用二进制编码来通过新颖的随机森林方法来压缩描述符,在汉明空间和实时复零中提供快速比较。从六名患者中收集的13个中的13个中进行的广泛验证,表明我们的方法优于最先进的方法。

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