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Lossy computing of correlated sources with fractional sampling

机译:用分数采样对相关源进行有损计算

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This paper considers the problem of lossy compression for the computation of a function of two correlated sources, both of which are observed at the encoder. Due to presence of observation costs, the encoder is allowed to observe only subsets of the samples from both sources, with a fraction of such sample pairs possibly overlapping. For both Gaussian and binary sources, the distortion-rate function, or rate-distortion function, is characterized for selected functions and with quadratic and Hamming distortion metrics, respectively. Based on these results, for both examples, the optimal measurement overlap fraction is shown to depend on the function to be computed by the decoder, on the source correlation and on the link rate. Special cases are discussed in which the optimal overlap fraction is the maximum or minimum possible value given the sampling budget, illustrating non-trivial performance trade-offs in the design of the sampling strategy.
机译:本文考虑了两个相关源函数的有损压缩问题,这两个相关源均在编码器处观察到。由于存在观察成本,因此允许编码器仅观察来自两个源的样本子集,其中一部分这样的样本对可能会重叠。对于高斯源和二进制源,失真率函数或速率失真函数都针对选定函数进行了表征,分别具有二次和汉明失真度量。基于这些结果,对于两个示例,均显示最佳测量重叠率取决于解码器要计算的函数,源相关性和链路速率。讨论了特殊情况,其中最佳重叠分数是给定采样预算的最大或最小可能值,这说明了采样策略设计中非平凡的性能折衷。

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