针对混合支撑集模型,研究了分布式压缩感知(DCS)的信号联合重构,提出了一种联合向前变步长正交匹配追踪(jointLAVSOMP)算法,该算法在信号重构过程中根据相邻次迭代重建信号的能量差,自适应地对向前参数进行动态调整,在信号重建精度与算法运行时间上取得平衡。进而,在该算法的基础上,提出了一种联合向前向后的变步长正交匹配追踪(joint FBVSOMP)算法,该算法有效降低了原子误选的几率,提高了信号重建的精度。试验结果表明,jointLAVSOMP算法的重构性能优于向前参数固定的联合向前正交匹配追踪jointLAOMP算法,而jointFBVSOMP算法具有更高的信号联合重构性能。
Focusing on the mixed support-set model, pressed sensing (DCS) was conducted, and a study on joint reconstruction of signals based on distributed corn- a joint look ahead variable stepsize orthogonal matching pursuit (LAVSOMP) algorithm was brought forward. The joint LAVSOMP algorithm dynamically performs the adaptive ad- justment of forward parameters according to the energy difference between reconstructed signals of adjacent iterations to strike a balance between the signal reconstruction accuracy and its running time. Furthermore, a joint forward- backward variable stepsize orthogonal matching pursuit (FBVSOMP) algorithm was put forward. The joint FBV- SOMP algorithm effectively reduces the chance of choosing non-optimal atoms and improves the signal reconstruction accuracy. The experimental results show that the joint LAVSOMP algorithm outperforms the joint look ahead orthog- onal matching pursuit algorithm fixing forward parameters in terms of reconstruction performance, and the joint FB- VSOMP algorithm can achieve the higher joint reconstruction performance than the joint LAVSOMP.