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Fusion Coding of Correlated Sources for Storage and Selective Retrieval

机译:相关源的融合编码,用于存储和选择性检索

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摘要

We focus on a new, potentially important application of source coding directed toward storage and retrieval, termed fusion coding of correlated sources. The task at hand is to efficiently store multiple correlated sources in a database so that, at any point of time in the future, data from a selective subset of sources specified by user can be efficiently retrieved. Only statistical information about future queries is available in advance. A typical application scenario would be in storage of correlated data generated by dense sensor networks, where information from specific regions is requested in the future. We propose a fusion coder (FC) for lossy storage and retrieval, wherein different queries are handled by allowing for selective (compressed) bit retrieval. We derive the properties of an optimal FC and present an iterative algorithm for its design. Since iterative design is initialization-dependent, we present initialization heuristics that help avoid poor local optima. An analysis of design complexity reveals complexity growth with query-set size. We first tackle this problem by exploiting optimality properties of FCs. We also consider quantization of the query-space with decision trees in order to adapt to new queries, unseen during FC design. Experiments conducted on real and synthetic data-sets demonstrate that the proposed FC is able to achieve significantly better tradeoffs than joint compression by vector quantization (VQ), with retrieval speedups reaching 3 $times$ and distortion gains of up to 3.5 dB possible.
机译:我们专注于针对存储和检索的源代码的新的,潜在的重要应用,称为相关源的融合编码。当前的任务是将多个相关源有效地存储在数据库中,以便在将来的任何时间点,都可以有效地检索来自用户指定的源的选择性子集的数据。事先仅提供有关将来查询的统计信息。典型的应用场景是存储由密集的传感器网络生成的相关数据,将来需要从特定区域获取信息。我们提出了一种用于有损存储和检索的融合编码器(FC),其中通过允许选择性(压缩)位检索来处理不同的查询。我们推导了最佳FC的属性,并提出了一种用于其设计的迭代算法。由于迭代设计是依赖于初始化的,因此我们提出了有助于避免不良局部最优的初始化试探法。对设计复杂度的分析表明,查询集大小会增加复杂度。我们首先通过利用FC的最优性来解决这个问题。我们还考虑使用决策树对查询空间进行量化,以适应FC设计中看不见的新查询。在真实和合成数据集上进行的实验表明,与矢量量化(VQ)联合压缩相比,拟议的FC能够实现明显更好的折衷,检索速度可提高3倍,失真增益最高可达3.5 dB。

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