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Automated region detection based on the contrast-to-noise ratio in near-infrared tomography

机译:在近红外层析成像中基于对比度和噪声比的自动区域检测

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摘要

The contrast-to-noise ratio (CNR) was used to determine the detectability of objects within reconstructed images from diffuse near-infrared tomography. It was concluded that there was a maximal value of CNR near the location of an object within the image and that the size of the true region could be estimated from the CNR. Experimental and simulation studies led to the conclusion that objects can be automatically detected with CNR analysis and that our current system has a spatial resolution limit near 4 mm and a contrast resolution limit near 1.4. A new linear convolution method of CNR calculation was developed for automated region of interest (ROI) detection.
机译:对比噪声比(CNR)用于确定来自弥散近红外X线断层扫描的重建图像中物体的可检测性。可以得出结论,在图像中的对象位置附近存在CNR的最大值,并且可以从CNR估计真实区域的大小。实验和模拟研究得出的结论是,可以使用CNR分析自动检测对象,并且我们当前的系统的空间分辨率极限为4 mm,对比度分辨率极限为1.4。开发了一种新的CNR线性卷积方法,用于感兴趣区域(ROI)的自动检测。

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