基于几何编码方法的多视图图像分布式压缩

N. Gehrig, P. Dragotti
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引用次数: 22

摘要

在本文中,我们提出了一种多视图图像的分布式压缩方法,其中每个摄像机有效地在本地编码其视觉信息,而无需与其他摄像机进行任何协作。这种压缩方案对于摄像机传感器网络是必要的,因为每个摄像机的功率和通信资源有限,只能将数据传输到一个中央基站。密集的多相机系统所获得的多视图数据的相关性可能非常大,因此应在每个编码器上加以利用,以减少传输到接收器的数据量。我们的分布式源编码方法基于四叉树分解方法,并使用一些关于场景和摄像机位置的几何信息来估计这种多视图相关性。我们假设不同的视图可以建模为具有ID线性边界的二维分段多项式函数,并展示我们的方法如何在这种情况下应用。仿真结果表明,该方法优于真实多视点图像的独立编码。
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Distributed Compression of Multi-View Images using a Geometrical Coding Approach
In this paper, we propose a distributed compression approach for multi-view images, where each camera efficiently encodes its visual information locally without requiring any collaboration with the other cameras. Such a compression scheme can be necessary for camera sensor networks, where each camera has limited power and communication resources and can only transmit data to a central base station. The correlation in the multi-view data acquired by a dense multi-camera system can be extremely large and should therefore be exploited at each encoder in order to reduce the amount of data transmitted to the receiver. Our distributed source coding approach is based on a quadtree decomposition method and uses some geometrical information about the scene and the position of the cameras to estimate this multi-view correlation. We assume that the different views can be modelled as 2D piecewise polynomial functions with ID linear boundaries and show how our approach applies in this context. Our simulation results show that our approach outperforms independent encoding of real multi-view images.
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