Real-time visible and near-infrared video fusion: architecture and implementation

被引:0
作者
Mohamed Awad
Ahmed Elliethy
Hussein A. Aly
机构
[1] Military Technical College,
来源
Journal of Real-Time Image Processing | 2021年 / 18卷
关键词
FPGA; Real-time processing; Multi-video synchronization; Near-infrared; Multi-video fusion; Video enhancement;
D O I
暂无
中图分类号
学科分类号
摘要
Near-infrared (NIR) band sensors capture achromatic images that contain complementary details of a scene which are diminished in visible (VS) band images when the scene is obscured by haze, mist, or fog. To exploit these complementary details, an integrated FPGA architecture and implementation of a video processing system are proposed in this paper. This system performs VS-NIR video fusion and produces an enhanced VS video in real-time. The proposed FPGA architecture and implementation effectively handle the challenges associated with the simultaneous processing of video signals obtained from different sources such as the inevitable delay among corresponding frames and time-varying deviation among frame rates. Moreover, the proposed implementation is efficiently designed and able to produce the fused video at the same frame rate as the input videos, i.e. in real-time, regardless of the resolution of the input videos while the consumed FPGA resources are kept small. This is achieved by data and calculations reuse, besides performing operations concurrently in parallel and pipelined fashions at both the data and task levels. The proposed implementation is synthesized, validated on a low-end FPGA device, and compared to three other implementations. The comparison shows the superiority of the proposed implementation in terms of the consumed resources which have a direct industrial impact in the case of integration in modern smart-phones and cameras.
引用
收藏
页码:2479 / 2493
页数:14
相关论文
共 50 条
[31]   Real-time tracking and selective visualization of exogenous and endogenous hydrogen sulfide by a near-infrared fluorescent probe [J].
Gu, Biao ;
Su, Wei ;
Huang, Liyan ;
Wu, Cuiyan ;
Duan, Xiaoli ;
Li, Yaqian ;
Xu, Hai ;
Huang, Zhen ;
Li, Haitao ;
Yao, Shouzhuo .
SENSORS AND ACTUATORS B-CHEMICAL, 2018, 255 :2347-2355
[32]   Tools and Techniques for Implementation of Real-time Video Processing Algorithms [J].
Levent, Vecdi Emre ;
Guzel, Aydin E. ;
Tosun, Mustafa ;
Buyukmihci, Mert ;
Aydin, Furkan ;
Goren, Sezer ;
Erbas, Cengiz ;
Akgun, Toygar ;
Ugurdag, H. Fatih .
JOURNAL OF SIGNAL PROCESSING SYSTEMS FOR SIGNAL IMAGE AND VIDEO TECHNOLOGY, 2019, 91 (01) :93-113
[33]   Tools and Techniques for Implementation of Real-time Video Processing Algorithms [J].
Vecdi Emre Levent ;
Aydin E. Guzel ;
Mustafa Tosun ;
Mert Buyukmihci ;
Furkan Aydin ;
Sezer Gören ;
Cengiz Erbas ;
Toygar Akgün ;
H. Fatih Ugurdag .
Journal of Signal Processing Systems, 2019, 91 :93-113
[34]   VISIBLE AND NEAR-INFRARED FLUORESCENCE OF CRUDE OILS [J].
DOWNARE, TD ;
MULLINS, OC .
APPLIED SPECTROSCOPY, 1995, 49 (06) :754-764
[35]   NEAR-INFRARED VIDEO IMAGE-ANALYSIS [J].
ROBERT, P ;
DEVAUX, MF ;
BERTRAND, D .
SCIENCES DES ALIMENTS, 1991, 11 (04) :565-574
[36]   Intraoperative Real-Time Near-Infrared Image-Guided Surgery to Identify Intracranial Meningiomas via Microscope [J].
Muto, Jun ;
Mine, Yutaka ;
Nishiyama, Yuya ;
Murayama, Kazuhiro ;
Yamada, Seiji ;
Kojima, Daijiro ;
Hayakawa, Motoharu ;
Adachi, Kazuhide ;
Hasegawa, Mitsuhiro ;
Lee, John Y. K. ;
Hirose, Yuichi .
FRONTIERS IN NEUROSCIENCE, 2022, 16
[37]   Intraoperative real-time near-infrared optical imaging for the identification of metastatic brain tumors via microscope and exoscope [J].
Muto, Jun ;
Mine, Yutaka ;
Nakagawa, Yu ;
Joko, Masahiro ;
Kagami, Hiroshi ;
Inaba, Makoto ;
Hasegawa, Mitsuhiro ;
Lee, John Y. K. ;
Hirose, Yuichi .
NEUROSURGICAL FOCUS, 2021, 50 (01) :1-9
[38]   Development of near-infrared lysosomal pH-activatable fluorescent probe for real-time visualization of autophagy progression [J].
Feng, Bin ;
Ma, Yeshuo ;
Zheng, Fan ;
Huang, Xueyan ;
Feng, Xueping ;
Zhang, Kexiang ;
Liu, Li ;
Chen, Fei ;
Zeng, Wenbin .
CHEMICAL ENGINEERING JOURNAL, 2023, 464
[39]   Near-infrared fusion for deep lightness enhancement [J].
Wang, Linbo ;
Wang, Tao ;
Yang, Deyun ;
Fang, Xianyong ;
Wan, Shaohua .
INTERNATIONAL JOURNAL OF MACHINE LEARNING AND CYBERNETICS, 2023, 14 (05) :1621-1633
[40]   Near-infrared fusion for deep lightness enhancement [J].
Linbo Wang ;
Tao Wang ;
Deyun Yang ;
Xianyong Fang ;
Shaohua Wan .
International Journal of Machine Learning and Cybernetics, 2023, 14 :1621-1633