Reducing the Root-Mean-Square Error at Signal Restoration using Discrete and Random Changes in the Sampling Rate for the Compressed Sensing Problem

O. Kozhemyak, O. Stukach
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引用次数: 2

Abstract

The data revolution will continue in the near future and move from centralized big data to "small" datasets. This trend stimulates the emergence not only new machine learning methods but algorithms for processing data at the point of their origin. So the Compressed Sensing Problem must be investigated in some technology fields that produce the data flow for decision making in real time. In the paper, we compare the random and constant frequency deviation and highlight some circumstances where advantages of the random deviation become more obvious. Also, we propose to use the differential transformations aimed to restore a signal form by discrets of the differential spectrum of the received signal. In some cases for the investigated model, this approach has an advantage in the compress of information.
压缩感知问题中使用离散和随机采样率变化来减小信号恢复时的均方根误差
数据革命将在不久的将来继续,并从集中的大数据转向“小”数据集。这一趋势不仅刺激了新的机器学习方法的出现,而且刺激了在数据起源点处理数据的算法的出现。因此,在实时产生决策数据流的技术领域,必须研究压缩感知问题。本文对随机偏差和恒频偏差进行了比较,并着重指出了随机偏差优点更加明显的一些情况。此外,我们建议使用微分变换,旨在通过接收信号的微分频谱的离散来恢复信号形式。在某些情况下,对于所研究的模型,该方法在信息压缩方面具有优势。
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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