Jin-bao YANG, Chen YANG, Jian-guo LIU, et al. Visual passive ranging system based on target feature size[J]. Optics and precision engineering, 2018, 26(1): 245-252.
DOI:
Jin-bao YANG, Chen YANG, Jian-guo LIU, et al. Visual passive ranging system based on target feature size[J]. Optics and precision engineering, 2018, 26(1): 245-252. DOI: 10.3788/OPE.20182601.0245.
Visual passive ranging system based on target feature size
In order to overcome the shortage of traditional optical passive ranging system such as low stability
difficult to guarantee insufficient ranging accuracy in long-distance condition and difficult to reduce the system volume and weight
a method for visualization of optical passive ranging system based on target feature size was presented in this paper. Passive ranging model was established and ranging principle was analyzed. Theoretical analysis was carried out to obtain the distance inversion formula and the ranging error accuracy. Through hardware and software design
the visual passive ranging function of the system was achieved and the all-weather image information acquisition was realized. Finally
target distance was retrieved by the target feature size and the imaging system parameters
real-time ranging was realized during the imaging process
and the passive ranging experiment was carried out. Experimental results show that the accuracy of passive ranging is better than 10%. Under the current hardware and software configuration
the target ranging distance is greater than 1km. The method has good robustness and stable performance. It can be widely used in the practical engineering of all-weather target imaging information acquisition and photoelectric passive ranging.
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