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Geometry-Driven Distributed Compression of the Plenoptic Function: Performance Bounds and Constructive Algorithms

机译:全几何函数的几何驱动分布压缩:性能界限和构造算法

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In this paper, we study the sampling and the distributed compression of the data acquired by a camera sensor network. The effective design of these sampling and compression schemes requires, however, the understanding of the structure of the acquired data. To this end, we show that the a priori knowledge of the configuration of the camera sensor network can lead to an effective estimation of such structure and to the design of effective distributed compression algorithms. For idealized scenarios, we derive the fundamental performance bounds of a camera sensor network and clarify the connection between sampling and distributed compression. We then present a distributed compression algorithm that takes advantage of the structure of the data and that outperforms independent compression algorithms on real multiview images.
机译:在本文中,我们研究了由相机传感器网络获取的数据的采样和分布式压缩。然而,这些采样和压缩方案的有效设计需要了解所获取数据的结构。为此,我们表明对照相机传感器网络的配置的先验知识可以导致对这种结构的有效估计,并导致有效的分布式压缩算法的设计。对于理想的情况,我们得出了相机传感器网络的基本性能界限,并阐明了采样和分布式压缩之间的联系。然后,我们提出了一种分布式压缩算法,该算法利用了数据的结构,并且在实际的多视图图像上优于独立的压缩算法。

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