红外与激光工程, 2018, 47 (11): 1102001, 网络出版: 2019-01-10   

红外偏振感知与智能处理

Infrared polarization perception and intelligent processing
作者单位
1 西北工业大学 深圳研究院, 广东 深圳 518057
2 西北工业大学 自动化学院, 陕西 西安 710072
3 西安建筑科技大学 艺术学院, 陕西 西安 710055
摘要
红外偏振成像在抗干扰目标检测、复杂环境下人造物识别中具有潜在优势, 同时能够获取目标表面理化特性。分时、分振幅、分孔径红外偏振成像方式由于体积、重量、功耗等的不足限制了其应用, 而小型化、集成化、实时成像设备是红外偏振成像广泛应用的前提, 而对于所获取数据的智能分析是其应用的基础。介绍了所研制的红外偏振智能感知系统, 通过分焦平面式成像技术实时采集目标场景的红外偏振数据, 通过深度学习与分焦平面偏振成像紧密融合, 实现高质量偏振图像恢复与典型场景下运动目标的智能感知。
Abstract
Infrared polarization imaging has potential advantages in anti-jamming target detection and man-made object recognition in complex environment, and can obtain the physical and chemical characteristics of the target surface. The application of division-of-time, division-of-amplitude and division-of-aperture infrared polarization imaging technique is limited to the insufficiency of volume, weight and power consumption. Miniaturization, integration and real-time imaging equipment are the premise of the widespread application of infrared polarization imaging. Intelligent analysis of the acquired data is the basis of its application. In this paper, a new developed infrared polarization intelligent sensing system was introduced, which collected the infrared polarization data of the target scene in real-time by using the division-of-focal-plane imaging technology. By combining the deep learning with the division-of-focal-plane polarization imaging closely, the high quality polarization image restoration and the intelligent sensing of moving target in typical scenes were realized.
参考文献

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赵永强, 李宁, 张鹏, 姚嘉昕, 潘泉. 红外偏振感知与智能处理[J]. 红外与激光工程, 2018, 47(11): 1102001. Zhao Yongqiang, Li Ning, Zhang Peng, Yao Jiaxin, Pan Quan. Infrared polarization perception and intelligent processing[J]. Infrared and Laser Engineering, 2018, 47(11): 1102001.

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