In this paper, adaptive non-uniform compressive sampling (ANCS) of time-varying signals, which are sparse in a proper basis, is introduced. ANCS employs the measurements of previous time steps to distribute the sensing energy among coefficients more intelligently. To this aim, a Bayesian inference method is proposed that does not require any prior knowledge of importance levels of coefficients or sparsity of the signal. Our numerical simulations show that ANCS is able to achieve the desired non-uniform recovery of the signal. Moreover, if the signal is sparse in canonical basis, ANCS can reduce the number of required measurements significantly.
翻译:在本文中,采用了适应性非统一压缩抽样(ANCS),对在适当基础上稀少的时间变化信号进行适应性非统一压缩抽样(ANCS),ANCS对先前的时间步骤进行测量,以便更明智地在系数之间分配感测能量,为此,建议采用贝叶斯推论方法,不要求事先知道该信号的系数或宽度,我们的数值模拟表明,ANCS能够实现所希望的不统一恢复信号。此外,如果信号在能量基础上稀少,ANCS可以大大减少所需测量的数量。