鼻窦图像的计算机分割

I. Lila Iznita, S. Vijanth, P. Venkatachalam, S. N. Lee
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引用次数: 3

摘要

鼻窦炎的诊断技术包括内窥镜、超声、x射线、计算机断层扫描(CT)和磁共振成像(MRI)。在这些技术中,成像技术侵入性较小,同时能够显示窦腔阻塞。然而,这些技术的潜力还没有完全实现,因为获得的图像仍然必然会被误解。本项目试图通过开发一种用于鼻窦炎检测的计算机鼻窦图像分割算法来解决这个问题。使用的图像增强技术是中值滤波和对比度有限自适应直方图均衡化(CLAHE)方法。这些技术在输入图像上的应用成功地降低了噪声,平滑了图像直方图。多水平阈值算法被开发分割图像到有意义的区域检测和诊断鼻窦炎。这些算法能够从图像中提取出重要的特征。仿真软件为MATLAB。对健康鼻窦和患有鼻窦炎的鼻窦图像进行了模拟。该算法能够区分健康的鼻窦和患有鼻窦炎的鼻窦。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computerized segmentation of sinus images
Sinusitis is diagnosed with techniques such as endoscopy, ultrasound, X-ray, Computed Tomography (CT) scan and Magnetic Resonance Imaging (MRI). Out of these techniques, imaging techniques are less invasive while being able to show blockage of sinus cavities. However, the potential of these techniques have not been fully realised as the images obtained are still bound to misinterpretations. This project attempts to solve this problem by developing an algorithm for the computerized segmentation of sinus images for the detection of sinusitis. The image enhancement techniques used were median filtering and the Contrast Limited Adapted Histogram Equalisation (CLAHE) method. These techniques applied on input images managed to reduce noise and smoothen the image histogram. Multilevel thresholding algorithms were developed to segment the images into meaningful regions for the detection and diagnosis of sinusitis. These algorithms were able to extract important features from the images. The software used for simulations is MATLAB. Simulations were performed on images of healthy sinuses and sinuses with sinusitis. The algorithms were able to differentiate between healthy sinuses and sinuses with sinusitis.
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