基于改进距离正则化水平集分割的肾结石检测分析

K. Viswanath, R. Gunasundari
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引用次数: 33

摘要

肾脏的异常可以通过超声显像来鉴别。肾脏可能有结构异常,如肾脏肿胀、位置和外观改变。肾结石、囊肿、癌细胞、先天性异常、尿阻塞等也可能导致肾脏异常。对于外科手术来说,确定肾结石的准确位置是非常重要的。超声图像对比度低,含有斑点噪声。这使得肾脏异常的检测相当具有挑战性。从而对超声图像进行预处理,去除散斑噪声。在预处理中,首先对图像进行恢复以降低斑点噪声,然后将其应用于Gabor滤波器进行平滑处理。接下来,使用直方图均衡化增强生成的图像。采用距离正则化水平集分割DR-LSS对预处理后的超声图像进行分割,效果较好。采用两步法迭代求解DR-LSS方程,第一步迭代LSS方程,然后求解Sign距离方程。第二步是对第一步得到的水平集函数进行正则化,以获得更好的稳定性。为了消除图像边界上的反泄漏,在LSS中加入了DR。DR-LSS不需要任何昂贵的重新初始化,并且具有非常高的操作速度。将RD-LSS结果与距离正则化水平集进化DRLSE1、DRLSE2和DRLSE3进行了比较。将分割后的肾脏提取区域分别应用到Symlets Sym12、Biorthogonal bio3.7、bio3.9和bio4.4以及Daubechies Db12提升方案小波子带中提取能量水平。这些能量水平表明,在那个特定的地方存在着与正常能量水平显著不同的石头。这些能级由多层感知器MLP和反向传播BP神经网络训练,以98.6%的准确率识别石头的类型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modified Distance Regularized Level Set Segmentation Based Analysis for Kidney Stone Detection
The abnormalities of the kidney can be identified by ultrasound imaging. The kidney may have structural abnormalities like kidney swelling, change in its position and appearance. Kidney abnormality may also arise due to the formation of stones, cysts, cancerous cells, congenital anomalies, blockage of urine etc. For surgical operations it is very important to identify the exact and accurate location of stone in the kidney. The ultrasound images are of low contrast and contain speckle noise. This makes the detection of kidney abnormalities rather challenging task. Thus preprocessing of ultrasound images is carried out to remove speckle noise. In preprocessing, first image restoration is done to reduce speckle noise then it is applied to Gabor filter for smoothening. Next the resultant image is enhanced using histogram equalization. The preprocessed ultrasound image is segmented using distance regularized level set segmentation DR-LSS, since it yields better results. It uses a two-step splitting methods to iteratively solve the DR-LSS equation, first step is iterating LSS equation, and then solving the Sign distance equation. The second step is to regularize the level set function which is the obtained from first step for better stability. The DR is included for LSS for eliminating of anti-leakages on image boundary. The DR-LSS does not require any expensive re-initialization and it is very high speed of operation. The RD-LSS results are compared with distance regularized level set evolution DRLSE1, DRLSE2 and DRLSE3. Extracted region of the kidney after segmentation is applied to Symlets Sym12, Biorthogonal bio3.7, bio3.9 & bio4.4 and Daubechies Db12 lifting scheme wavelet subbands to extract energy levels. These energy level gives an indication about presence of stone in that particular location which significantly vary from that of normal energy level. These energy levels are trained by Multilayer Perceptron MLP and Back Propagation BP ANN to identify the type of stone with an accuracy of 98.6%.
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