基于机器视觉的无线胶囊内窥镜视频分析综述。

Diagnostic and Therapeutic Endoscopy Pub Date : 2012-01-01 Epub Date: 2012-11-13 DOI:10.1155/2012/418037
Yingju Chen, Jeongkyu Lee
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引用次数: 35

摘要

无线胶囊内窥镜(WCE)使医生能够在不进行外科手术的情况下诊断患者的消化系统。然而,胃肠病学家需要1-2小时来检查视频。为了加快审查过程,计算机科学研究人员提出了一些基于机器视觉的分析技术。为了训练机器理解图像的语义,首先需要将图像内容转换为数字形式。图像的数值形式称为图像抽象。选择相关图像特征的过程通常由医学图像的模态和诊断的性质决定。例如,有基于放射学投影的图像(例如,x射线和PET扫描),基于断层扫描的图像(例如,MRT和CT扫描)和基于摄影的图像(例如,内窥镜,皮肤病学和显微组织学)。每种模式对自动和医学上有意义的图像抽象过程施加独特的图像依赖限制。在本文中,我们回顾了目前基于机器视觉的WCE视频分析的发展,重点介绍了识别特定胃肠道病理和镜头边界检测方法的研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A review of machine-vision-based analysis of wireless capsule endoscopy video.

A review of machine-vision-based analysis of wireless capsule endoscopy video.

A review of machine-vision-based analysis of wireless capsule endoscopy video.

A review of machine-vision-based analysis of wireless capsule endoscopy video.

Wireless capsule endoscopy (WCE) enables a physician to diagnose a patient's digestive system without surgical procedures. However, it takes 1-2 hours for a gastroenterologist to examine the video. To speed up the review process, a number of analysis techniques based on machine vision have been proposed by computer science researchers. In order to train a machine to understand the semantics of an image, the image contents need to be translated into numerical form first. The numerical form of the image is known as image abstraction. The process of selecting relevant image features is often determined by the modality of medical images and the nature of the diagnoses. For example, there are radiographic projection-based images (e.g., X-rays and PET scans), tomography-based images (e.g., MRT and CT scans), and photography-based images (e.g., endoscopy, dermatology, and microscopic histology). Each modality imposes unique image-dependent restrictions for automatic and medically meaningful image abstraction processes. In this paper, we review the current development of machine-vision-based analysis of WCE video, focusing on the research that identifies specific gastrointestinal (GI) pathology and methods of shot boundary detection.

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