Wang Donghao, Wan Jiangwen, Chen Junying, Zhang Qiang
School of Instrumentation Science and Opto-Electronics Engineering, Beihang University, Beijing 100191, China.
Sensors (Basel). 2016 Sep 22;16(10):1547. doi: 10.3390/s16101547.
To adapt to sense signals of enormous diversities and dynamics, and to decrease the reconstruction errors caused by ambient noise, a novel online dictionary learning method-based compressive data gathering (ODL-CDG) algorithm is proposed. The proposed dictionary is learned from a two-stage iterative procedure, alternately changing between a sparse coding step and a dictionary update step. The self-coherence of the learned dictionary is introduced as a penalty term during the dictionary update procedure. The dictionary is also constrained with sparse structure. It's theoretically demonstrated that the sensing matrix satisfies the restricted isometry property (RIP) with high probability. In addition, the lower bound of necessary number of measurements for compressive sensing (CS) reconstruction is given. Simulation results show that the proposed ODL-CDG algorithm can enhance the recovery accuracy in the presence of noise, and reduce the energy consumption in comparison with other dictionary based data gathering methods.
为了适应具有巨大多样性和动态性的传感信号,并减少由环境噪声引起的重构误差,提出了一种基于新颖的在线字典学习方法的压缩数据采集(ODL-CDG)算法。所提出的字典是通过两阶段迭代过程学习得到的,在稀疏编码步骤和字典更新步骤之间交替变化。在字典更新过程中,将学习到的字典的自相干性作为惩罚项引入。字典还受到稀疏结构的约束。从理论上证明了传感矩阵以高概率满足受限等距特性(RIP)。此外,给出了压缩感知(CS)重构所需测量数量的下限。仿真结果表明,与其他基于字典的数据采集方法相比,所提出的ODL-CDG算法在存在噪声的情况下可以提高恢复精度,并降低能耗。