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Detection and generalization of spatio-temporal trajectories for motion imagery.

机译:运动图像的时空轨迹的检测和概括。

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In today's world of vast information availability users often confront large unorganized amounts of data with limited tools for managing them. Motion imagery datasets have become increasingly popular means for exposing and disseminating information. Commonly, moving objects are of primary interest in modeling such datasets. Users may require different levels of detail mainly for visualization and further processing purposes according to the application at hand.; In this thesis we exploit the geometric attributes of objects for dataset summarization by using a series of image processing and neural network tools. In order to form data summaries we select representative time instances through the segmentation of an object's spatio-temporal trajectory lines. High movement variation instances are selected through a new hybrid self-organizing map (SOM) technique to describe a single spatio-temporal trajectory. Multiple objects move in diverse yet classifiable patterns. In order to group corresponding moving relevance between the data in space and time. Thus, we introduce the spatio-temporal neighborhood unit as a variable generalization surface. By altering the unit's dimensions, scaled generalization is accomplished.; Common complications in tracking applications that include occlusion, noise, information gaps and unconnected segments of data sequences are addressed through the hybrid-SOM analysis. Nevertheless, entangled data sequences where no information on which data entry belongs to each corresponding trajectory are frequently evident. A multidimensional classification technique that combines geometric and backpropagation neural network implementation is used to distinguish between trajectory data.; Further more, modeling and summarization of two-dimensional phenomena evolving in time brings forward the novel concept of spatio-temporal helixes as compact event representations. The phenomena models are comprised of SOM movement nodes (spines) and cardinality shape-change descriptors (prongs).; While we focus on the analysis of MI datasets, the framework can be generalized to function with other types of spatio-temporal datasets. Multiple scale generalization is allowed in a dynamic significance-based scale rather than a constant one. The constructed summaries are not just a visualization product but they support further processing for metadata creation, indexing, and querying. Experimentation, comparisons and error estimations for each technique support the analyses discussed.
机译:在当今拥有大量信息的世界中,用户通常会使用有限的工具来管理大量无序的数据。运动图像数据集已成为越来越流行的用于公开和传播信息的手段。通常,移动对象是对此类数据集建模的主要兴趣。用户可能需要不同级别的详细信息,主要是根据手头的应用程序的可视化和进一步处理的目的。本文利用一系列图像处理和神经网络工具,利用对象的几何属性进行数据集汇总。为了形成数据摘要,我们通过对对象的时空轨迹线进行分段来选择代表性的时间实例。通过新的混合自组织映射(SOM)技术选择高运动变化实例,以描述单个时空轨迹。多个对象以不同但可分类的模式移动。为了将数据在空间和时间上的对应移动关联性分组。因此,我们引入时空邻域单元作为变量泛化表面。通过改变单元的尺寸,可以实现规模化的概括。通过混合SOM分析解决了跟踪应用中的常见并发症,包括遮挡,噪声,信息缺口和未连接的数据序列段。然而,通常没有明显的纠缠数据序列,在该数据序列中没有数据条目所属的信息属于每个相应的轨迹。结合几何和反向传播神经网络实现的多维分类技术用于区分轨迹数据。此外,随着时间变化的二维现象的建模和总结提出了时空螺旋作为紧凑事件表示的新概念。现象模型由SOM运动节点(脊柱)和基数形状变化描述符(分支)组成。虽然我们专注于MI数据集的分析,但可以将该框架推广为与其他类型的时空数据集一起使用。可以在基于动态重要性的量表而不是恒定的量表中进行多尺度综合。构造的摘要不仅是可视化产品,而且还支持对元数据创建,索引和查询的进一步处理。每种技术的实验,比较和误差估计均支持所讨论的分析。

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