Adopting Run Length Features to Detect and Recognize Brain Tumor in Magnetic Resonance Images

Aya S Derea, H. K. Abbas, H. Mohamad, A. Al-Zuky
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引用次数: 6

Abstract

Early detection of brain cancer considered vital and attracted attention. In this study, a designed software presented to detect and recognise brain tumours. The segmentation based threshold used to detect the region of interest in Magnetic Resonance Imaging (MRI) images. Texture features were extracted using grey level run length matrix (GRLM), then detect tumours in MRI image and features image using a segmentation-based threshold technique. Location of the tumour in MRI and its features determined using the histogram as well as behaviour complement images for each feature. The geometrical characteristics determined of the tumour image as well as the complement image such as size, location, area and dimensions. The detection results depending on the segmentation technique were very effective in the separation of the entire tumour area. The quality of the texture features using GRLM has high accuracy by means separation of the tumour area from the complement area.
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基于跑程特征的磁共振图像脑肿瘤检测与识别
早期发现脑癌被认为是至关重要的,并引起了人们的注意。在这项研究中,设计了一个软件来检测和识别脑肿瘤。基于分割的阈值用于检测磁共振成像(MRI)图像中感兴趣的区域。利用灰度运行长度矩阵(GRLM)提取纹理特征,然后利用基于分割的阈值技术检测MRI图像和特征图像中的肿瘤。肿瘤在MRI中的位置及其特征使用直方图以及每个特征的行为互补图像确定。确定了肿瘤图像和补体图像的几何特征,如大小、位置、面积和尺寸。基于分割技术的检测结果对整个肿瘤区域的分离非常有效。GRLM通过将肿瘤区域与补体区域分离,使纹理特征的质量具有较高的准确性。
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