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Measurement Structures of Image Compressive Sensing for Green Internet of Things (IoT)

机译:绿色物联网(IoT)图像压缩传感的测量结构

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摘要

Image compressive sensing (CS) is a potential imaging scheme for green internet of things (IoT). To further make CS-based sensor adaptable to low bandwidth and low power, this paper focuses on finding a good measurement structure, i.e., the organization and storage format of CS measurements. Three potential measurement structures are proposed in this paper, respectively raster structure (RA), patch structure, and layer structure (LA). RA stores CS measurements of each column in an image, and PA packets CS measurements of overlapping patches forming an image. LA enables the measuring of small blocks and recovery of large blocks. All of the three structures avoid high computation complexity and huge memory in the process of measuring and recovery, and efficiently suppress the annoying blocking artifacts which often occur in traditional block structures. Experimental results show that RA, PA, and LA can efficiently reduce blocking artifacts, and produce comforting visual qualities. LA, especially, presents both good time-distortion and rate-distortion performance. By this paper, it is proved that LA is a suitable measurement structure for green IoT.
机译:图像压缩感测(CS)是绿色物联网(IoT)的潜在成像方案。为了进一步使基于CS的传感器适应低带宽和低功耗,本文着重于寻找一种良好的测量结构,即CS测量的组织和存储格式。本文提出了三种潜在的测量结构,分别是栅格结构(RA),面片结构和层结构(LA)。 RA存储图像中每列的CS测量值,PA分组形成图像的重叠面片的CS测量值。 LA可以测量小块并恢复大块。这三种结构都避免了测量和恢复过程中的高计算复杂性和巨大的内存,并有效地抑制了传统块结构中经常出现的烦人的块状伪影。实验结果表明,RA,PA和LA可以有效地减少结块伪影,并产生令人愉悦的视觉效果。尤其是洛杉矶,具有良好的时间失真和速率失真性能。通过本文,证明了LA是适合绿色IoT的度量结构。

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