Horn-Schunk光流法与Lucas Kenade光流法在ct图像中肺部病变识别的比较研究

M. F. Abdullah, S. N. Sulaiman, Muhammad Khusairi Osman, N. Karim, A. I. C. Ani, D. S. A. Damit
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摘要

本研究比较了Horn-schunk光流法和Lucas Kenade光流法在计算机断层扫描(CT)图像中肺部病变识别的效果。大多数情况下,检测到的病变仅基于单个CT图像。然而,从单个图像中检测病变与放射科医生基于序列图像的实践不一致。因此,需要考虑前后图像来识别与病灶检测相对应的肺内运动物体。因此,本项目旨在使用两种光流方法来识别肺部病变。分析一对图像的方法被称为光流法,因为物体存储了从一个图像或视频帧到另一个图像或视频帧的移动物体的方向和速度。基于光流的方法使用一对帧作为数据来测量基于四种不同模式选择的光流。提出了一种基于阈值的标准差来寻找可能的肺部病变图像的方法。作为选择的图像对,本研究选择了Horn-Schunck和Lukas Kenade光流方法。基于两种光流方法,Horn-Schunk是使用模式0定位病变最有效的方法,标准差为0.99%。结果表明,基于光流矢量长度的阈值对于预测病变和非病变CT图像范围具有重要的输出。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative Study between Horn-Schunk and Lucas Kenade Optical Flow Method for Lung Lesion Identification in Computed Tomography Images
This study compares the Horn-schunk and Lucas Kenade optical flow methods for lung lesion identification in computed tomography (CT) images. Mostly, the detected lesions were based only on a single CT image. However, detecting lesions from a single image does not align with the Radiologist’s practice based on sequential images. Therefore, there is a need to consider the before-and-after images for identifying the moving object in the lung corresponding to the lesions’ detection. Hence, this project aims to identify the lung lesion using two optical flow methods. The method that analyses pair of images called the optical flow method was chosen since the object stores the direction and speed of a moving object from one image, or video frame to another. The optical flow-based approach uses a pair of frames as data to measure optical flow based on four different mode selections. A new method has been proposed to find the possible images of lung lesions based on the standard deviation from the threshold value. As the image pair selected, the Horn-Schunck and Lukas Kenade optical flow method was picked in this study. Based on two optical flow approaches, Horn-Schunk was the most efficient way of locating lesions using mode 0 with a standard deviation of 0.99%. The finding was revealed that the threshold value based on the length of the optical flow vector gives a significant output for predicting the lesions and non-lesion CT images range.
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