Image Segmentation Techniques in Bone Structure Psychiatry

A. Adedoyin, Olamide Timothy Tawose, O. S. Adetolaju
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Abstract

Today, a large number of x-ray images are interpreted in hospitals and computer-aided system that can perform some intelligent task and analysis is needed in order to raise the accuracy and bring down the miss rate in hospitals, particularly when it comes to diagnosis of hairline fractures and fissures in bone joints. This research considered some segmentation techniques that have been used in the processing and analysis of medical images and a system design was proposed to efficiently compare these techniques. The designed system was tested successfully on a hand X-ray image which led to the proposal of simple techniques to eliminate intrinsic properties of x-ray imaging systems such as noise. The performance and accuracy of image segmentation techniques in bone structures were compared and these eliminated time wasting on the choice of image segmentation algorithms. Although there are several practical applications of image segmentation such as content-based image retrieval, machine vision, medical imaging, object detection, recognition tasks, etc., this study focuses on the performance comparison of several image segmentation techniques for medical X-ray images.
骨结构精神病学中的图像分割技术
目前,医院需要对大量的x射线图像进行解析,需要计算机辅助系统进行一些智能任务和分析,以提高准确性,降低漏诊率,特别是在诊断发际骨折和骨关节裂缝时。本研究考虑了医学图像处理和分析中常用的一些分割技术,并提出了一种系统设计来有效地比较这些技术。设计的系统在手x射线图像上进行了成功的测试,从而提出了消除x射线成像系统固有特性(如噪声)的简单技术。比较了骨结构图像分割技术的性能和精度,消除了在图像分割算法选择上的浪费时间。虽然图像分割的实际应用有基于内容的图像检索、机器视觉、医学成像、物体检测、识别任务等,但本研究的重点是几种医学x射线图像分割技术的性能比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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