Pushing Towards the Limit of Sampling Rate: Adaptive Chasing Sampling

Ying Li, Kun Xie, Xin Wang
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引用次数: 3

Abstract

Measurement samples are often taken in various monitoring applications. To reduce the sensing cost, it is desirable to achieve better sensing quality while using fewer samples. Compressive Sensing (CS) technique finds its role when the signal to be sampled meets certain sparsity requirements. In this paper we investigate the possibility and basic techniques that could further reduce the number of samples involved in conventional CS theory by exploiting learning-based non-uniform adaptive sampling. Based on a typical signal sensing application, we illustrate and evaluate the performance of two of our algorithms, Individual Chasing and Centroid Chasing, for signals of different distribution features. Our proposed learning-based adaptive sampling schemes complement existing efforts in CS fields and do not depend on any specific signal reconstruction technique. Compared to conventional sparse sampling methods, the simulation results demonstrate that our algorithms allow 46% less number of samples for accurate signal reconstruction and achieve up to 57% smaller signal reconstruction error under the same noise condition.
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逼近采样率极限:自适应跟踪采样
在各种监测应用中经常需要测量样品。为了降低传感成本,需要在使用更少样本的情况下获得更好的传感质量。当待采样信号满足一定的稀疏性要求时,压缩感知(CS)技术就发挥了它的作用。在本文中,我们研究了利用基于学习的非均匀自适应采样来进一步减少传统CS理论中涉及的样本数量的可能性和基本技术。基于一个典型的信号传感应用,我们举例并评估了我们的两种算法,个体追踪和质心追踪,对于不同分布特征的信号的性能。我们提出的基于学习的自适应采样方案补充了CS领域的现有成果,并且不依赖于任何特定的信号重建技术。与传统的稀疏采样方法相比,仿真结果表明,在相同噪声条件下,我们的算法可以减少46%的样本数量来精确重建信号,并且可以将信号重建误差降低57%。
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