用于脑肿瘤图像检测的单基因小波相位编码描述子

Deepak O. Patil, S. Hamde
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引用次数: 0

摘要

脑肿瘤生存率低,也会影响患者的社交生活。早期发现和进一步治疗肿块的异常生长是治疗过程中限制其发展的重要步骤。医学专家对磁共振图像进行筛查是一项耗时且繁琐的工作。本文介绍了计算机辅助脑肿瘤图像检测工具的发展。该算法采用单基因小波相位编码特征进行肿瘤检测。单基因小波的相位分量有效地提取了输入磁共振图像的结构信息。利用邻域分量分析特征选择进一步降维从相位分量提取的CLBP纹理描述子。最后,支持向量机对测试磁共振图像进行健康或异常分类。使用两个流行的MR成像数据库对该方法进行了评估,仿真结果表明,与其他现有算法相比,该方法的性能有所提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Monogenic Wavelet Phase Encoded Descriptors for Brain Tumor Image Detection
Brain tumor has a low survival rate and also affect a patient’s social life. Early detection and further treatment of the abnormal growth of mass is a significant step during treatment to restrict the progression. MR image screening by the medical expert is a time-consuming and tedious task. This paper presents the development of computer-aided tool to detect brain tumor images. The proposed algorithm employs monogenic wavelet phase-encoded features for tumor detection. Phase component of the monogenic wavelet efficiently extracts the structural information from the input magnetic resonance images. The dimensionality of CLBP textural descriptors extracted from the phase component is further reduced using neighborhood component analysis feature selection. Finally, the support vector machine classifies the test magnetic resonance image as healthy or abnormal. The proposed approach is evaluated using two popular MR imaging databases and simulation results show enhanced performance compared to other existing algorithms.
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