Error-resilient and complexity-constrained distributed coding for large scale sensor networks

Kumar Viswanatha, S. Ramaswamy, A. Saxena, K. Rose
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引用次数: 6

Abstract

There has been considerable interest in distributed source coding within the compression and sensor network research communities in recent years, primarily due to its potential contributions to low-power sensor networks. However, two major obstacles pose an existential threat on practical deployment of such techniques in real world sensor networks, namely, the exponential growth of decoding complexity with network size and coding rates, and the critical requirement for error-resilience given the severe channel conditions in many wireless sensor networks. Motivated by these chal-lenges, this paper proposes a novel, unified approach for large scale, error-resilient distributed source coding, based on an optimally designed classifier-based decoding frame-work, where the design explicitly controls the decoding com-plexity. We also present a deterministic annealing (DA) based global optimization algorithm for the design due to the highly non-convex nature of the cost function, which further enhances the performance over basic greedy iterative descent technique. Simulation results on data, both synthetic and from real sensor networks, provide strong evidence that the approach opens the door to practical deployment of distributed coding in large sensor networks. It not only yields substantial gains in terms of overall distortion, compared to other state-of-the-art techniques, but also demonstrates how its decoder naturally scales to large networks while constraining the complexity, thereby enabling performance gains that increase with network size.
大规模传感器网络的纠错和复杂性约束分布式编码
近年来,由于分布式源编码对低功耗传感器网络的潜在贡献,压缩和传感器网络研究社区对分布式源编码产生了相当大的兴趣。然而,在现实世界的传感器网络中,这类技术的实际部署面临两个主要障碍,即解码复杂度随着网络规模和编码速率呈指数增长,以及在许多无线传感器网络中,由于信道条件恶劣,对容错能力的关键要求。基于这些挑战,本文提出了一种新的、统一的大规模、抗错误的分布式源编码方法,该方法基于优化设计的基于分类器的解码框架,其中设计明确控制解码复杂性。由于成本函数的高度非凸性,我们还提出了一种基于确定性退火(DA)的全局优化算法,该算法进一步提高了基本贪婪迭代下降技术的性能。对合成数据和真实传感器网络数据的仿真结果提供了强有力的证据,表明该方法为在大型传感器网络中实际部署分布式编码打开了大门。与其他最先进的技术相比,它不仅在整体失真方面产生了巨大的收益,而且还展示了它的解码器如何在限制复杂性的同时自然地扩展到大型网络,从而使性能收益随着网络规模的增加而增加。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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