Departments of Electrical and Computer Engineering and Radiology, University of Iowa, Iowa City, Iowa 52242, USA.
Med Phys. 2012 Jan;39(1):514-32. doi: 10.1118/1.3668058.
Image thresholding and gradient analysis have remained popular image preprocessing tools for several decades due to the simplicity and straight-forwardness of their definitions. Also, optimum selection of threshold and gradient strength values are hidden steps in many advanced medical imaging algorithms. A reliable method for threshold optimization may be a crucial step toward automation of several medical image based applications. Most automatic thresholding and gradient selection methods reported in literature primarily focus on image histograms ignoring a significant amount of information embedded in the spatial distribution of intensity values forming visible features in an image. Here, we present a new method that simultaneously optimizes both threshold and gradient values for different object interfaces in an image that is based on unification of information from both the histogram and spatial image features; also, the method works for unknown number of object regions.
A new energy function is formulated by combining the object class uncertainty measure, a histogram-based feature, of each pixel with its image gradient measure, a spatial contextual feature in an image. The energy function is designed to measure the overall compliance of the theoretical premise that, in a probabilistic sense, image intensities with high class uncertainty are associated with high image gradients. Finally, it is expressed as a function of threshold and gradient parameters and optimum combinations of these parameters are sought by locating pits and valleys on the energy surface. A major strength of the algorithm lies in the fact that it does not require the number of object regions in an image to be predefined.
The method has been applied on several medical image datasets and it has successfully determined both threshold and gradient parameters for different object interfaces even when some of the thresholds are almost impossible to locate in the histogram. Both accuracy and reproducibility of the method have been examined on several medical image datasets including repeat scan 3D multidetector computed tomography (CT) images of cadaveric ankles specimens. Also, the new method has been qualitatively and quantitatively compared with Otsu's method along with three other algorithms based on minimum error thresholding, maximum segmented image information and minimization of homogeneity- and uncertainty-based energy and the results have demonstrated superiority of the new method.
We have developed a new automatic threshold and gradient strength selection algorithm by combining class uncertainty and spatial image gradient features. The performance of the method has been examined in terms of accuracy and reproducibility and the results found are better as compared to several popular automatic threshold selection methods.
由于其定义简单直接,图像阈值和梯度分析仍然是几十年来流行的图像预处理工具。此外,在许多先进的医学成像算法中,最佳选择阈值和梯度强度值是隐藏的步骤。可靠的阈值优化方法可能是实现基于医学图像的应用自动化的关键步骤。文献中报道的大多数自动阈值和梯度选择方法主要侧重于忽略图像中强度值的空间分布中嵌入的大量信息,这些信息形成图像中的可见特征。在这里,我们提出了一种新的方法,该方法同时优化了图像中不同目标界面的阈值和梯度值,该方法基于从直方图和空间图像特征中统一信息; 此外,该方法适用于未知数量的目标区域。
通过将每个像素的对象类不确定性度量(基于直方图的特征)与图像梯度度量(图像中的空间上下文特征)相结合,来制定新的能量函数。该能量函数旨在衡量理论前提的整体一致性,从概率意义上讲,具有高类不确定性的图像强度与高图像梯度相关。最后,它被表示为阈值和梯度参数的函数,并通过在能量表面上定位凹坑和峰值来寻找这些参数的最佳组合。该算法的主要优势在于它不需要在图像中预定义对象区域的数量。
该方法已应用于几个医学图像数据集,即使在某些阈值几乎不可能在直方图中定位的情况下,它也成功地确定了不同目标界面的阈值和梯度参数。该方法的准确性和可重复性已经在几个医学图像数据集上进行了检查,包括对尸体踝关节标本的重复扫描 3D 多探测器 CT 图像。此外,还沿着基于最小误差阈值、最大分段图像信息和最小化同质性和不确定性的能量的其他三种算法,对新方法进行了定性和定量比较,结果表明新方法具有优越性。
我们通过结合类不确定性和空间图像梯度特征,开发了一种新的自动阈值和梯度强度选择算法。该方法的性能已经在准确性和可重复性方面进行了检查,结果优于几种流行的自动阈值选择方法。