Department of Electrical and Computer Engineering, Stevens Institute of Technology, Hoboken, NJ 07030, USA.
Sensors (Basel). 2012;12(8):10326-38. doi: 10.3390/s120810326. Epub 2012 Jul 30.
Electro-optic (EO) image sensors exhibit the properties of high resolution and low noise level at daytime, but they do not work in dark environments. Infrared (IR) image sensors exhibit poor resolution and cannot separate objects with similar temperature. Therefore, we propose a novel framework of IR image enhancement based on the information (e.g., edge) from EO images, which improves the resolution of IR images and helps us distinguish objects at night. Our framework superimposing/blending the edges of the EO image onto the corresponding transformed IR image improves their resolution. In this framework, we adopt the theoretical point spread function (PSF) proposed by Hardie et al. for the IR image, which has the modulation transfer function (MTF) of a uniform detector array and the incoherent optical transfer function (OTF) of diffraction-limited optics. In addition, we design an inverse filter for the proposed PSF and use it for the IR image transformation. The framework requires four main steps: (1) inverse filter-based IR image transformation; (2) EO image edge detection; (3) registration; and (4) blending/superimposing of the obtained image pair. Simulation results show both blended and superimposed IR images, and demonstrate that blended IR images have better quality over the superimposed images. Additionally, based on the same steps, simulation result shows a blended IR image of better quality when only the original IR image is available.
光电(EO)图像传感器在白天具有高分辨率和低噪声水平的特性,但在黑暗环境中无法工作。红外(IR)图像传感器分辨率差,无法区分具有相似温度的物体。因此,我们提出了一种基于 EO 图像信息(例如边缘)的新型 IR 图像增强框架,该框架可以提高 IR 图像的分辨率,并帮助我们在夜间区分物体。我们的框架将 EO 图像的边缘叠加/混合到相应的变换 IR 图像上,从而提高了它们的分辨率。在该框架中,我们采用了由 Hardie 等人提出的用于 IR 图像的理论点扩散函数(PSF),该 PSF 具有均匀探测器阵列的调制传递函数(MTF)和衍射受限光学器件的非相干光学传递函数(OTF)。此外,我们为提出的 PSF 设计了一个逆滤波器,并将其用于 IR 图像变换。该框架需要四个主要步骤:(1)基于逆滤波器的 IR 图像变换;(2)EO 图像边缘检测;(3)配准;以及(4)获得的图像对的混合/叠加。仿真结果显示了混合和叠加的 IR 图像,并表明混合的 IR 图像质量优于叠加的图像。此外,基于相同的步骤,当仅存在原始 IR 图像时,仿真结果显示出混合的 IR 图像具有更好的质量。