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Automated endoscopic navigation and advisory system from medical image

机译:来自医学图像的自动内窥镜导航和咨询系统

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Abstract: In this paper, we present a review of the research conducted by our group to design an automatic endoscope navigation and advisory system. The whole system can be viewed as a two-layer system. The first layer is at the signal level, which consists of the processing that will be performed on a series of images to extract all the identifiable features. The information is purely dependent on what can be extracted from the 'raw' images. At the signal level, the first task is performed by detecting a single dominant feature, lumen. Few methods of identifying the lumen are proposed. The first method used contour extraction. Contours are extracted by edge detection, thresholding and linking. This method required images to be divided into overlapping squares (8 by 8 or 4 by 4) where line segments are extracted by using a Hough transform. Perceptual criteria such as proximity, connectivity, similarity in orientation, contrast and edge pixel intensity, are used to group edges both strong and weak. This approach is called perceptual grouping. The second method is based on a region extraction using split and merge approach using spatial domain data. An n-level (for a 2' by 2' image) quadtree based pyramid structure is constructed to find the most homogenous large dark region, which in most cases corresponds to the lumen. The algorithm constructs the quadtree from the bottom (pixel) level upward, recursively and computes the mean and variance of image regions corresponding to quadtree nodes. On reaching the root, the largest uniform seed region, whose mean corresponds to a lumen is selected that is grown by merging with its neighboring regions. In addition to the use of two- dimensional information in the form of regions and contours, three-dimensional shape can provide additional information that will enhance the system capabilities. Shape or depth information from an image is estimated by various methods. A particular technique suitable for endoscopy is the shape from shading, which is developed to obtain the relative depth of the colon surface in the image by assuming a point light source very close to the camera. If we assume the colon has a shape similar to a tube, then a reasonable approximation of the position of the center of the colon (lumen) will be a function of the direction in which the majority of the normal vectors of shape are pointing. The second layer is the control layer and at this level, a decision model must be built for endoscope navigation and advisory system. The system that we built is the models of probabilistic networks that create a basic, artificial intelligence system for navigation in the colon. We have constructed the probabilistic networks from correlated objective data using the maximum weighted spanning tree algorithm. In the construction of a probabilistic network, it is always assumed that the variables starting from the same parent are conditionally independent. However, this may not hold and will give rise to incorrect inferences. In these cases, we proposed the creation of a hidden node to modify the network topology, which in effect models the dependency of correlated variables, to solve the problem. The conditional probability matrices linking the hidden node to its neighbors are determined using a gradient descent method which minimizing the objective cost function. The error gradients can be treated as updating messages
机译:摘要:在本文中,我们对我们小组为设计自动内窥镜导航和咨询系统而进行的研究进行了回顾。整个系统可以看作是一个两层系统。第一层处于信号级别,其中包括将在一系列图像上执行的处理,以提取所有可识别的特征。信息完全取决于可以从“原始”图像中提取的内容。在信号级别,通过检测单个主要特征流明来执行第一个任务。提出了几种识别内腔的方法。第一种方法使用轮廓提取。通过边缘检测,阈值化和链接来提取轮廓。此方法要求将图像划分为重叠的正方形(8 x 8或4 x 4),在其中使用霍夫变换提取线段。诸如接近度,连通性,方向相似度,对比度和边缘像素强度之类的感知标准用于对强边缘和弱边缘进行分组。这种方法称为感知分组。第二种方法基于使用空间域数据的拆分和合并方法进行区域提取。构建基于n级(对于2'x 2'图像)的四叉树金字塔结构,以找到最均匀的大暗区,该暗区在大多数情况下对应于管腔。该算法递归地从底部(像素)水平向上构建四叉树,并计算与四叉树节点相对应的图像区域的均值和方差。到达根部时,选择最大的均匀种子区域,该区域的均值对应于内腔,该区域通过与其相邻区域合并而生长。除了使用区域和轮廓形式的二维信息之外,三维形状还可以提供其他信息,这些信息将增强系统功能。来自图像的形状或深度信息通过各种方法来估计。适用于内窥镜检查的一种特殊技术是来自阴影的形状,通过假设点光源非常靠近摄像头,可将其形成为获得图像中结肠表面的相对深度。如果我们假设结肠的形状类似于管状,那么结肠中心(内腔)位置的合理近似值将取决于大多数法线向量指向的方向。第二层是控制层,在此级别上,必须为内窥镜导航和咨询系统构建决策模型。我们构建的系统是概率网络模型,这些模型创建了用于在结肠中导航的基本人工智能系统。我们使用最大加权生成树算法,根据相关目标数据构建了概率网络。在概率网络的构造中,始终假定从同一父代开始的变量是有条件独立的。但是,这可能不成立,并且会导致错误的推断。在这些情况下,我们建议创建一个隐藏节点以修改网络拓扑,从而有效地建模相关变量的依存关系以解决该问题。使用最小化目标成本函数的梯度下降方法来确定将隐藏节点链接到其相邻节点的条件概率矩阵。误差梯度可以视为更新消息

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