A New CNN Occlusion Masking Method for IRT Imaging in Neurosurgery

Yahya Moshaei-Nezhad, Juliane Müller, C. Schnabel, M. Kirsch, R. Tetzlaff
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引用次数: 1

Abstract

In this paper, a new occlusion masking method based on Cellular Nonlinear Networks (CNN) for a 2-dimensional (2D) InfraRed Thermography (IRT) brain image is proposed. IRT imaging is one of the noteworthy technique in the medical analysis due to capturing those activities which cannot be seen with unarmed eyes. In neurosurgery, the image occlusion can be classified roughly into two fashions namely, surgery tools and reflection of surgery tools (or cover by the ice-cold saline solution) over the brain cortex surface. In the proposed method, firstly, a CNN texture segmentation is carried out to separate the image textures by the local ratio of the black and white pixels. Thereafter, a CNN dilation is employed to increase the black and white pixels separation. Next, a CNN remove-small-object and filling-holes are exerted for revamping the texture segmentation. Afterwards, the obtained mask is applied to remove the occluded area in the image. To overcome the issues related to reconstruction after masking the image, a solution is given by a 5×5 overlapping sliding window with respect to a reference image, in order to substitute the masked area (pixel values) in the target image. Our proposed method is evaluated on real IRT brain cortex images and compared with other methods. The proposed method shows promising results for IRT brain images in comparison to those other mentioned methods.
神经外科IRT成像中一种新的CNN遮挡方法
本文提出了一种基于细胞非线性网络(CNN)的二维红外热成像(IRT)脑图像遮挡方法。红外热成像是医学分析中值得注意的技术之一,因为它可以捕捉到非武装眼睛无法看到的活动。在神经外科学中,图像遮挡大致分为两种方式,即手术工具和手术工具在大脑皮层表面的反射(或用冰冷的生理盐水溶液覆盖)。该方法首先对图像进行CNN纹理分割,利用黑白像素的局部比分离图像纹理;然后,使用CNN扩张来增加黑白像素的分离。其次,利用CNN去除小目标和填充孔对纹理分割进行改进。然后,应用得到的掩模去除图像中的遮挡区域。为了克服掩蔽图像后重建的相关问题,给出了一种解决方案,即相对于参考图像的5×5重叠滑动窗口,以替代目标图像中的掩蔽区域(像素值)。我们提出的方法在真实的IRT脑皮层图像上进行了评估,并与其他方法进行了比较。与其他方法相比,所提出的方法对IRT脑图像显示出有希望的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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