Guo Zhihao, Zheng Liangliang, Xu Wei
Changchun Institute of Optics, Fine Mechanics and Physics, Chinese Academy of Sciences, Changchun 130033, China.
University of Chinese Academy of Sciences, Beijing 100049, China.
Sensors (Basel). 2025 Jul 16;25(14):4433. doi: 10.3390/s25144433.
When a CMOS (Complementary Metal-Oxide-Semiconductor) imaging system operates at a high frame rate or a high line rate, the exposure time of the imaging system is limited, and the acquired image data will be dark, with a low signal-to-noise ratio and unsatisfactory sharpness. Therefore, in order to improve the visibility and signal-to-noise ratio of remote sensing images based on CMOS imaging systems, this paper proposes a low-light remote sensing image enhancement method and a corresponding ZYNQ (Zynq-7000 All Programmable SoC) design scheme called the BGIR (Bilateral-Guided Image Restoration) algorithm, which uses an improved multi-scale Retinex algorithm in the HSV (hue-saturation-value) color space. First, the RGB image is used to separate the original image's H, S, and V components. Then, the V component is processed using the improved algorithm based on bilateral filtering. The image is then adjusted using the gamma correction algorithm to make preliminary adjustments to the brightness and contrast of the whole image, and the S component is processed using segmented linear enhancement to obtain the base layer. The algorithm is also deployed to ZYNQ using ARM + FPGA software synergy, reasonably allocating each algorithm module and accelerating the algorithm by using a lookup table and constructing a pipeline. The experimental results show that the proposed method improves processing speed by nearly 30 times while maintaining the recovery effect, which has the advantages of fast processing speed, miniaturization, embeddability, and portability. Following the end-to-end deployment, the processing speeds for resolutions of 640 × 480 and 1280 × 720 are shown to reach 80 fps and 30 fps, respectively, thereby satisfying the performance requirements of the imaging system.
当互补金属氧化物半导体(CMOS)成像系统以高帧率或高行速率运行时,成像系统的曝光时间受限,采集到的图像数据会偏暗,信噪比低且清晰度不佳。因此,为了提高基于CMOS成像系统的遥感图像的可视性和信噪比,本文提出了一种低光遥感图像增强方法以及一种相应的名为双边引导图像恢复(BGIR)算法的Zynq-7000全可编程片上系统(ZYNQ)设计方案,该算法在HSV(色调 - 饱和度 - 明度)颜色空间中使用改进的多尺度视网膜算法。首先,利用RGB图像分离出原始图像的H、S和V分量。然后,使用基于双边滤波的改进算法对V分量进行处理。接着,使用伽马校正算法对图像进行调整,对整个图像的亮度和对比度进行初步调整,并使用分段线性增强对S分量进行处理以获得基础层。该算法还通过ARM + FPGA软件协同部署到ZYNQ上,合理分配每个算法模块,并通过查找表和构建流水线来加速算法。实验结果表明,该方法在保持恢复效果的同时,处理速度提高了近30倍,具有处理速度快、小型化、可嵌入和便携等优点。在端到端部署后,对于640×480和1280×720分辨率的处理速度分别达到80帧/秒和30帧/秒,从而满足成像系统的性能要求。