Li Yiyang, Jin Weiqi, Li Shuo, Zhang Xu, Zhu Jin
School of Optoelectronics, Beijing Institute of Technology, Key Laboratory of Photo-electronic Imaging Technology and System, Ministry of Education of China, Beijing 100081, China.
Sensors (Basel). 2017 May 8;17(5):1070. doi: 10.3390/s17051070.
Cooled infrared detector arrays always suffer from undesired ripple residual nonuniformity (RNU) in sky scene observations. The ripple residual nonuniformity seriously affects the imaging quality, especially for small target detection. It is difficult to eliminate it using the calibration-based techniques and the current scene-based nonuniformity algorithms. In this paper, we present a modified temporal high-pass nonuniformity correction algorithm using fuzzy scene classification. The fuzzy scene classification is designed to control the correction threshold so that the algorithm can remove ripple RNU without degrading the scene details. We test the algorithm on a real infrared sequence by comparing it to several well-established methods. The result shows that the algorithm has obvious advantages compared with the tested methods in terms of detail conservation and convergence speed for ripple RNU correction. Furthermore, we display our architecture with a prototype built on a Xilinx Virtex-5 XC5VLX50T field-programmable gate array (FPGA), which has two advantages: (1) low resources consumption; and (2) small hardware delay (less than 10 image rows). It has been successfully applied in an actual system.
在天空场景观测中,冷却红外探测器阵列总是存在不期望的波纹残余非均匀性(RNU)。这种波纹残余非均匀性严重影响成像质量,尤其是对于小目标检测。使用基于校准的技术和当前基于场景的非均匀性算法很难消除它。在本文中,我们提出了一种使用模糊场景分类的改进型时间高通非均匀性校正算法。模糊场景分类旨在控制校正阈值,以便该算法能够去除波纹RNU而不降低场景细节。我们通过将该算法与几种成熟方法进行比较,在真实红外序列上对其进行测试。结果表明,在波纹RNU校正的细节保留和收敛速度方面,该算法与测试方法相比具有明显优势。此外,我们展示了基于Xilinx Virtex-5 XC5VLX50T现场可编程门阵列(FPGA)构建的原型架构,它具有两个优点:(1)资源消耗低;(2)硬件延迟小(小于10个图像行)。它已成功应用于实际系统。