School of Computer and Information Technology, Xinyang Normal University, Xinyang 464000, China.
School of Media, Xinyang Normal University, Xinyang 464000, China.
Comput Intell Neurosci. 2017;2017:9059204. doi: 10.1155/2017/9059204. Epub 2017 Oct 22.
Compressive Sensing (CS) realizes a low-complex image encoding architecture, which is suitable for resource-constrained wireless sensor networks. However, due to the nonstationary statistics of images, images reconstructed by the CS-based codec have many blocking artifacts and blurs. To overcome these negative effects, we propose an Adaptive Block Compressive Sensing (ABCS) system based on spatial entropy. Spatial entropy measures the amount of information, which is used to allocate measuring resources to various regions. The scheme takes spatial entropy into consideration because rich information means more edges and textures. To reduce the computational complexity of decoding, a linear mode is used to reconstruct each block by the matrix-vector product. Experimental results show that our ABCS coding system provides a better reconstruction quality from both subjective and objective points of view, and it also has a low decoding complexity.
压缩感知 (CS) 实现了一种低复杂度的图像编码架构,非常适用于资源受限的无线传感器网络。然而,由于图像的非平稳统计特性,基于 CS 的编解码器重建的图像会有许多块状伪影和模糊。为了克服这些负面影响,我们提出了一种基于空间熵的自适应块压缩感知 (ABCS) 系统。空间熵衡量信息量,用于为各个区域分配测量资源。该方案考虑了空间熵,因为丰富的信息意味着更多的边缘和纹理。为了降低解码的计算复杂度,我们使用线性模式通过矩阵-向量乘积来重建每个块。实验结果表明,我们的 ABCS 编码系统从主观和客观两个方面都提供了更好的重建质量,而且解码复杂度也较低。