School of Mechatronical Engineering, Beijing Institute of Technology, Beijing 100081, China.
Sensors (Basel). 2022 Jun 25;22(13):4806. doi: 10.3390/s22134806.
Block compressed sensing (BCS) is suitable for image sampling and compression in resource-constrained applications. Adaptive sampling methods can effectively improve the rate-distortion performance of BCS. However, adaptive sampling methods bring high computational complexity to the encoder, which loses the superiority of BCS. In this paper, we focus on improving the adaptive sampling performance at the cost of low computational complexity. Firstly, we analyze the additional computational complexity of the existing adaptive sampling methods for BCS. Secondly, the adaptive sampling problem of BCS is modeled as a distortion minimization problem. We present three distortion models to reveal the relationship between block sampling rate and block distortion and use a simple neural network to predict the model parameters from several measurements. Finally, a fast estimation method is proposed to allocate block sampling rates based on distortion minimization. The results demonstrate that the proposed estimation method of block sampling rates is effective. Two of the three proposed distortion models can make the proposed estimation method have better performance than the existing adaptive sampling methods of BCS. Compared with the calculation of BCS at the sampling rate of 0.1, the additional calculation of the proposed adaptive sampling method is less than 1.9%.
块压缩感知(BCS)适用于资源受限应用中的图像采样和压缩。自适应采样方法可以有效地提高 BCS 的率失真性能。然而,自适应采样方法给编码器带来了高的计算复杂度,从而失去了 BCS 的优势。在本文中,我们专注于以低计算复杂度为代价来提高自适应采样性能。首先,我们分析了现有的 BCS 自适应采样方法的额外计算复杂度。其次,将 BCS 的自适应采样问题建模为失真最小化问题。我们提出了三种失真模型来揭示块采样率与块失真之间的关系,并使用简单的神经网络从几次测量中预测模型参数。最后,提出了一种基于失真最小化的快速块采样率估计方法。结果表明,所提出的块采样率估计方法是有效的。所提出的三种失真模型中的两种可以使所提出的估计方法比现有的 BCS 自适应采样方法具有更好的性能。与 BCS 在采样率为 0.1 时的计算相比,所提出的自适应采样方法的附加计算量小于 1.9%。