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Towards automatic geometric algorithms for solving fundamental problems in computer graphics, medical and biological imaging applications.

机译:致力于解决计算机图形学,医学和生物成像应用中的基本问题的自动几何算法。

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An important goal of many computer vision an image processing techniques is to extract useful quantitative information contained in images in order to achieve some higher level task. For these tools to be of any practical use, common requirements are robustness and automation so bigger amounts of information can be reliably processed as increasingly demanded by computer graphics, computer vision, biological and medical applications. We develop a number of such techniques demonstrating their particular impact in non-photo realistic rendering, statistical analysis of HIV infected particles, video segmentation under severe occlusions and variability analysis of white matter structure in the brain.; Non-Photorealistic Rendering (NPR) is an important modality of computer generated stylized depiction. Virtually all state-of-the-art algorithms require manual or used assisted tasks when extracting scene and geometry features from either 2D images or full 3D models. Using multiple images as input, we propose a novel hybrid model that provides a degree of automation not achieved by any existing NPR technique.; Electron tomography allows determination of the three-dimensional architecture of subcellular assemblies and organelles at very high resolutions. Development of reliable quantitative approaches for interpretation of tomograms is a challenging problem because of the low signal-to-noise ratios that are inherent to biological images. We present methods for the automated segmentation of tomograms obtained from HIV-infected macrophages by developing a novel algorithm that finds image boundaries as global minimal surfaces.; Despite numerous efforts by researchers, successful tracking of moving objects that possibly change shape and are subject to occlusions still remains a challenging problem. We present an algorithm that handles particularly well the presence of severe and total occlusions by adopting an edge based segmentation approach that finds boundaries as a minimal surfaces in 3D space-time.; Diffusion Tensor Imaging (DTI) allows elucidation of neural paths in the white matter of the brain which is of paramount importance for understanding brain anatomy and has also implications for surgical planing. We will work on tensor based segmentation techniques for the automatic extraction of fiber bundles from DTI, using a novel statistical region based approach.
机译:许多计算机视觉图像处理技术的重要目标是提取图像中包含的有用定量信息,以实现更高级别的任务。对于这些工具的任何实际使用,共同的要求是鲁棒性和自动化程度,因此可以可靠地处理大量信息,如计算机图形学,计算机视觉,生物学和医学应用日益增长的需求。我们开发了许多这样的技术,证明了它们在非照片逼真的渲染,HIV感染颗粒的统计分析,严重遮挡下的视频分割以及大脑中白质结构变异性分析中的特殊影响。非真实感渲染(NPR)是计算机生成的风格化描绘的重要形式。从2D图像或完整3D模型中提取场景和几何特征时,几乎所有最新算法都需要手动或使用辅助任务。使用多个图像作为输入,我们提出了一种新颖的混合模型,该模型提供了任何现有NPR技术都无法实现的自动化程度。电子断层扫描可以非常高分辨率地确定亚细胞装配体和细胞器的三维结构。由于生物图像固有的低信噪比,开发可靠的定量方法以解释断层图是一个具有挑战性的问题。我们通过开发一种新颖的算法来自动分割从HIV感染的巨噬细胞获得的层析图像的方法,该算法将图像边界作为全局最小表面。尽管研究人员做出了许多努力,但是成功跟踪可能改变形状并受到遮挡的移动物体仍然是一个具有挑战性的问题。我们提出了一种算法,该算法通过采用基于边缘的分割方法来很好地处理严重遮挡和完全遮挡的存在,该方法在3D时空中将边界作为最小曲面来查找。弥散张量成像(DTI)可以阐明大脑白质中的神经路径,这对于理解脑部解剖结构至关重要,对外科手术计划也有重要意义。我们将使用基于统计量的新方法,研究基于张量的分割技术,以从DTI自动提取纤维束。

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