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Structure-aware viewpoint selection for volume visualization

机译:用于体积可视化的结构感知视点选择

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Viewpoint selection is becoming a useful part in the volume visualization pipeline, as it further improves the efficiency of data understanding by providing representative viewpoints. We present two structure-aware view descriptors, which are the shape view descriptor and the detail view descriptor, to select the optimal viewpoint with the maximum amount of the structural information. These two proposed structure-aware view descriptors are both based on the gradient direction, as the gradient is a well-defined measurement of boundary structures, which have been proved as features of interest in many applications. The shape view descriptor is designed to evaluate the overall orientation of features of interest. For estimating local details, we employ the bilateral filter to construct the shape volume. The bilateral filter is very effective in smoothing local details and preserving strong boundary structures at the same time. Therefore, large-scale global structures are in the shape volume, while small-scale local details still remain in the original volume. The detail view descriptor measures the amount of visible details on boundary structures in terms of variances in the local structure between the shape volume and the original volume. These two view descriptors can be integrated into a viewpoint selection framework, and this framework can emphasize global structures or local details with flexibility tailored to the user's specific situations. We performed experiments on various types of volume datasets. These experiments verify the effectiveness of our proposed view descriptors, and the proposed viewpoint selection framework actually locates the optimal viewpoints that show the maximum amount of the structural information.
机译:视点选择正在成为体积可视化管道中的有用部分,因为它通过提供代表性的视点进一步提高了数据理解的效率。我们提出了两个结构感知视图描述符,即形状视图描述符和细节视图描述符,以选择结构信息量最大的最佳视点。提出的这两个结构感知视图描述符都基于梯度方向,因为梯度是边界结构的明确定义的量度,已被证明是许多应用中感兴趣的特征。形状视图描述符用于评估感兴趣特征的总体方向。为了估计局部细节,我们使用双边滤波器来构造形状体积。双边过滤器在平滑局部细节和同时保留强大的边界结构方面非常有效。因此,大规模的全局结构在形状体积中,而小规模的局部细节仍保留在原始体积中。细节视图描述符根据形状体积和原始体积之间局部结构的差异来度量边界结构上可见的细节量。这两个视图描述符可以集成到视点选择框架中,并且该框架可以根据用户的特定情况灵活地强调全局结构或局部细节。我们对各种类型的体积数据集进行了实验。这些实验验证了我们提出的视图描述符的有效性,并且提出的观点选择框架实际上找到了显示最大结构信息量的最佳观点。

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