Noise Power Spectrum Estimation of Column Fixed Pattern Noise in CMOS Image Sensors Based on AR Model

Ting Yu, Guicui Fu, Y. Qiu, Ye Wang
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引用次数: 2

Abstract

CMOS image sensors are extensively utilized in digital imaging systems for their excellent performance and low power consumption. As an essential components in the system, CMOS image sensors are expected with low noise levels. The images captured by CMOS image sensor contain random noise (RN), digital noise (DN), and fixed pattern noise (FPN). FPN of CMOS image sensors has a greater impact on the perceived image quality than random noise, which seriously restricts the development and application of CMOS image sensors. This paper proposed a noise power spectrum (NPS) method for estimating column FPN of CMOS image sensor based on AR model. First, dozens of images under uniform illumination are acquired by established test vehicle. Second, random noise of the images is restrained by using the multi-frame averaging method. Then, column FPN is modeled by an autoregressive (AR) random process subsequently. Ultimately, column FPN is estimated by calculating NPS of the image based on the AR model. A case application was proposed by using this method.
基于AR模型的CMOS图像传感器柱固定模式噪声功率谱估计
CMOS图像传感器以其优异的性能和低功耗在数字成像系统中得到了广泛的应用。CMOS图像传感器作为系统的重要组成部分,具有较低的噪声水平。CMOS图像传感器捕获的图像包含随机噪声(RN)、数字噪声(DN)和固定模式噪声(FPN)。CMOS图像传感器的FPN比随机噪声对感知图像质量的影响更大,严重制约了CMOS图像传感器的发展和应用。提出了一种基于AR模型的CMOS图像传感器柱FPN噪声功率谱(NPS)估计方法。首先,建立了均匀光照下的数十幅图像。其次,采用多帧平均方法抑制图像的随机噪声;然后,采用自回归随机过程对列FPN进行建模。最后,基于AR模型,通过计算图像的NPS来估计列FPN。并给出了应用实例。
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