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2016 29th SIBGRAPI Conference on Graphics, Patterns and Images Tutorials (SIBGRAPI-T)最新文献

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An Overview of Max-Tree Principles, Algorithms and Applications 最大树原理、算法及应用综述
Pub Date : 2016-10-01 DOI: 10.1109/SIBGRAPI-T.2016.011
R. Souza, Luis A. Tavares, L. Rittner, R. Lotufo
The max-tree is a mathematical morphology data structure that represents an image through the hierarchical relationship of connected components resulting from different thresholds. It was proposed in 1998 by Salembier et al., since then,many efficient algorithms to build and process it were proposed.There are also efficient algorithms to extract size, shape and contrast attributes of the max-tree nodes. These algorithms al-lowed efficient implementation of connected filters like attribute-openings and development of automatic and semi-automatic applications that compete with the state-of-the-art. This paper reviews the max-tree principles, algorithms, applications and its current trends.
最大树是一种数学形态学数据结构,它通过不同阈值产生的连接组件的层次关系来表示图像。1998年,Salembier等人提出了它,此后,人们提出了许多高效的算法来构建和处理它。还有一些有效的算法可以提取最大树节点的大小、形状和对比度属性。这些算法允许有效地实现连接过滤器,如属性打开和开发与最先进的技术竞争的自动和半自动应用程序。本文综述了极大树的原理、算法、应用及其发展趋势。
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引用次数: 8
Image Operator Learning and Applications 图像操作员学习与应用
Pub Date : 2016-10-01 DOI: 10.1109/SIBGRAPI-T.2016.013
Igor dos Santos Montagner, N. Hirata, R. Hirata
High-level understanding of image contents has been receiving much attention in the last decade. Low level processing figures as abuilding block in this framework and it also continues to play an important role in several specific tasks such as in image filtering and colorization, medical imaging, and document image processing. The design of image operators for these tasks is usually done manually by exploiting characteristics specific to the domain of application. An alternative design approach is to use machine learning techniques to estimate the transformations. Given pairs of images consisting of atypical input and respective desired output, the goal is to estimate an operator that transforms the inputs into the desired outputs. In this tutorial we present a rigorous mathematical formulation to the framework of learning locally defined and translation invariant transformations, practical procedures and strategies to address typical machine learning related issues, application examples, and current challenges. We alsoinclude information about the code used to generate the applicationexamples.
近十年来,对图像内容的高水平理解受到了广泛关注。低层处理图形是该框架的基石,并且在图像过滤和着色、医学成像和文档图像处理等几个特定任务中继续发挥重要作用。这些任务的图像操作符的设计通常是通过利用特定于应用领域的特征来手动完成的。另一种设计方法是使用机器学习技术来估计转换。给定由非典型输入和各自期望输出组成的图像对,目标是估计将输入转换为期望输出的算子。在本教程中,我们提出了一个严格的数学公式来学习局部定义和平移不变变换的框架,解决典型机器学习相关问题的实际过程和策略,应用实例,以及当前的挑战。我们还包括关于用于生成应用程序示例的代码的信息。
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引用次数: 2
Tensor Fields for Multilinear Image Representation and Statistical Learning Models Applications 张量场用于多线性图像表示和统计学习模型的应用
Pub Date : 2016-10-01 DOI: 10.1109/SIBGRAPI-T.2016.012
T. Filisbino, C. Thomaz
Nowadays, higher order tensors have been applied to model multi-dimensional image data for subsequent tensor decomposition, dimensionality reduction and classification tasks. In this paper, we survey recent results with the goal of highlighting the power of tensor methods as a general technique for data representation, their advantage if compared with vector counterparts and some research challenges. Hence, we firstly review the geometric theory behind tensor fields and their algebraic representation. Afterwards, subspace learning, dimensionality reduction, discriminant analysis and reconstruction problems are considered following the traditional viewpoint for tensor fields in image processing, based on generalized matrices.We show several experimental results to point out the effectiveness of multi-linear algorithms for dimensionality reduction combined with discriminant techniques for selecting tensor components for face image analysis, considering gender classification as well as reconstruction problems. Then, we return to the geometric approach for tensors and discuss opened issues in this area related to manifold learning and tensor fields, incorporation of prior information and high performance computational requirements. Finally, we offer conclusions and final remarks.
目前,高阶张量已被应用于多维图像数据的建模,用于后续的张量分解、降维和分类任务。在本文中,我们调查了最近的结果,目的是突出张量方法作为数据表示的一般技术的力量,它们与向量方法相比的优势以及一些研究挑战。因此,我们首先回顾张量场及其代数表示背后的几何理论。然后,在广义矩阵的基础上,按照传统的图像处理中张量场的观点,考虑了子空间学习、降维、判别分析和重构问题。我们展示了几个实验结果,指出了多线性降维算法结合判别技术选择张量分量用于人脸图像分析的有效性,考虑了性别分类和重建问题。然后,我们回到张量的几何方法,并讨论与流形学习和张量场相关的开放问题,结合先验信息和高性能计算要求。最后,给出结论和结束语。
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引用次数: 0
Introduction to Research in Magnetic Resonance Imaging 磁共振成像研究导论
Pub Date : 2016-10-01 DOI: 10.1109/SIBGRAPI-T.2016.010
F. Cappabianco, C. S. Shida, J. Ide
The advent of magnetic resonance imaging (MRI) and functional magnetic resonance imaging (fMRI) of the brain has changed forever conventional patient diagnosis and treatment in medicine. Instead of employing invasive procedures, now physicians can not just literally see internal body structures but also understand and map more clearly brain functions related to specific tasks, feelings, and behaviors. This paper aims at introducing the acquisition process, image processing, analysis and evaluation, and the most popular tools for both structural MRI and fMRI. It is an opportunity for students and researchers who are interested in getting started in the area, understanding what are the challenges and unexplored fields, and how to avoid the most common traps and pitfalls.
脑磁共振成像(MRI)和功能磁共振成像(fMRI)的出现永远地改变了医学上传统的病人诊断和治疗。现在,医生们不再采用侵入性手术,他们不仅可以看到身体内部结构,还可以更清楚地了解和描绘与特定任务、感觉和行为相关的大脑功能。本文旨在介绍结构MRI和功能MRI的采集过程、图像处理、分析和评估以及最流行的工具。对于有兴趣进入该领域的学生和研究人员来说,这是一个机会,了解什么是挑战和未开发的领域,以及如何避免最常见的陷阱和陷阱。
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引用次数: 5
期刊
2016 29th SIBGRAPI Conference on Graphics, Patterns and Images Tutorials (SIBGRAPI-T)
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