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CMOS low data rate imaging method based on compressed sensing

机译:基于压缩传感的CMOS低数据速率成像方法

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Complementary metal-oxide semiconductor (CMOS) technology enables the integration of image sensing and image compression processing, making improvements on overall system performance possible. We present a CMOS low data rate imaging approach by implementing compressed sensing (CS). On the basis of the CS framework, the image sensor projects the image onto a separable two-dimensional (2D) basis set and measures the corresponding coefficients obtained. First, the electrical current output from the pixels in a column are combined, with weights specified by voltage, in accordance with Kirchhoffs law. The second computation is performed in an analog vector-matrix multiplier (VMM). Each element of the VMM considers the total value of each column as the input and multiplies it by a unique coefficient. Both weights and coefficients are reprogrammable through analog floating-gate (FG) transistors. The image can be recovered from a percentage of these measurements using an optimization algorithm. The percentage, which can be altered flexibly by programming on the hardware circuit, determines the image compression ratio. These novel designs facilitate image compression during the image-capture phase before storage, and have the potential to reduce power consumption. Experimental results demonstrate that the proposed method achieves a large image compression ratio and ensures imaging quality.
机译:互补金属氧化物半导体(CMOS)技术可实现图像感测和图像压缩处理的集成,从而有可能改善整体系统性能。我们通过实现压缩传感(CS)提出了CMOS低数据速率成像方法。在CS框架的基础上,图像传感器将图像投影到可分离的二维(2D)基础集上,并测量获得的相应系数。首先,根据基尔霍夫定律,将一列像素输出的电流与电压指定的权重合并。第二个计算在模拟矢量矩阵乘法器(VMM)中执行。 VMM的每个元素都将每一列的总值视为输入,并将其乘以唯一系数。权重和系数均可通过模拟浮栅(FG)晶体管进行重新编程。可以使用优化算法从这些测量的一定百分比中恢复图像。该百分比可以通过在硬件电路上编程来灵活更改,从而确定图像压缩率。这些新颖的设计有助于在存储之前的图像捕获阶段进行图像压缩,并具有降低功耗的潜力。实验结果表明,该方法具有较高的图像压缩率,可以保证成像质量。

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