We study the problem of multi-compression and reconstructing a stochastic signal observed by several independent sensors (or compressors) that transmit compressed information to a fusion center. { The key aspect of this problem is to find models of the sensors and fusion center that are optimized in the sense of an error minimization under a certain criterion, such as the mean square error (MSE).} { A novel technique to solve this problem is developed. The novelty is as follows. First, the multi-compressors are non-linear and modeled using second degree polynomials. This may increase the accuracy of the signal estimation through the optimization in a higher dimensional parameter space compared to the linear case. Second, the required models are determined by a method based on a combination of the second degree transform (SDT) with the maximum block improvement (MBI) method and the generalized rank-constrained matrix approximation. It allows us to use the advantages of known methods to further increase the estimation accuracy of the source signal. Third, the proposed method is justified in terms of pseudo-inverse matrices. As a result, the models of compressors and fusion center always exist and are numerically stable.} In other words, the proposed models may provide compression, de-noising and reconstruction of distributed signals in cases when known methods either are not applicable or may produce larger associated errors.
翻译:我们研究多压缩和重建由几个独立传感器(或压缩机)观测到的将压缩信息传送到聚合中心的压缩信息的问题。 {问题的关键方面是找到传感器和聚合中心的模型,根据某种标准,如平均平方差错(MSE) {开发了解决这一问题的新技术。新颖之处如下。首先,多压缩机是非线性,用二度多元分子制成模型。这可能通过较线性案例相比在更高维参数空间优化提高信号估计的准确性。第二,所需模型的确定方法基于二级变换(SDT)与最大整顿(MBI)方法和普遍等级限制的矩阵近似相结合。它使我们能够利用已知方法的优势,进一步提高源信号的估计准确性。第三,拟议的方法在伪反偏差矩阵方面是有道理的。作为结果,在所了解的压缩机型模型和分布中心中,可提供稳定的压缩机能,在所拟议的压缩机床中,可提供固定的压缩机床,或可提供其他的压缩机床。