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Animated Depth Images for Interactive Remote Visualization of Time-Varying Data Sets

机译:动画深度图像,用于时变数据集的交互式远程可视化

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Remote visualization has become both a necessity, as data set sizes have grown faster than computer network performance, and an opportunity, as laptop, tablet, and smartphone mobile computing platforms have become ubiquitous. However, the conventional remote visualization (CRV) approach of sending a new image from the server to the client for every view parameter change suffers from reduced interactivity. One problem is high latency, as the network has to be traversed twice, once to communicate the view parameters to the server and once to transmit the new image to the client. A second problem is reduced image quality due to aggressive compression or low resolution. We address these problems by constructing and transmitting enhanced images that are sufficient for quality output frame reconstruction at the client for a range of view parameter values. The client reconstructs thousands of frames locally, without any additional data from the server, which avoids latency and aggressive compression. We introduce animated depth images, which not only store a color and depth sample at every pixel, but also store the trajectory of the samples for a given time interval. Sample trajectories are stored compactly by partitioning the image into semi-rigid sample clusters and by storing one sequence of rigid body transformations per cluster. Animated depth images leverage sample trajectory coherence to achieve a good compression of animation data, with a small and user-controllable approximation error. We demonstrate animated depth images in the context of finite element analysis and SPH data sets.
机译:远程可视化已成为一种必要,因为数据集的大小增长速度超过了计算机网络性能,并且随着便携式计算机,平板电脑和智能手机移动计算平台的普及而带来了机遇。但是,对于每个视图参数更改,从服务器向客户端发送新图像的常规远程可视化(CRV)方法都会降低交互性。一个问题是高延迟,因为必须遍历网络两次,一次遍历将视图参数传递给服务器,一次遍历将新图像传递给客户端。第二个问题是由于主动压缩或低分辨率而降低了图像质量。我们通过构造和传输增强的图像来解决这些问题,这些图像足以在客户端针对一系列视图参数值进行高质量的输出帧重构。客户端在本地重建了数千个帧,而没有来自服务器的任何其他数据,从而避免了延迟和积极的压缩。我们引入动画深度图像,该图像不仅在每个像素处存储颜色和深度样本,而且还存储给定时间间隔内样本的轨迹。通过将图像划分为半刚性的样本簇并通过每个簇存储一个序列的刚体变换,可以紧凑地存储样本轨迹。动画深度图像利用样本轨迹的连贯性来实现动画数据的良好压缩,并且具有小的和用户可控制的近似误差。我们在有限元分析和SPH数据集的背景下演示了动画深度图像。

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