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运动视觉跟踪电子设备的改进设计

Improved design of electronic device for motion vision tracking
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摘要 针对运动视觉跟踪电子设备跟踪运动目标效果差的问题,提出一种运动视觉跟踪电子设备的改进方案。在传统的运动视觉跟踪电子设备基础上,引进了蒙特卡罗算法,并且修改了接收函数,使得跟踪运算过程中补偿了由于计算上的误差所导致的跟踪效果差的问题,根据运动视觉误差补偿方法构建了相对应的数学模型,有效地解决了传统运动视觉跟踪电子设备跟踪运动目标效果差的问题。通过仿真实验可以有效的证明,该方案能够有效地解决跟踪运动目标效果差的问题。 The electronic device of motion vision tracking has poor tracking effect for motion target. Therefore, an improved method of electronic device for motion vision tracking is proposed. On the basis of the traditional electronic device of motion vi- sion tracking, the Monte Carlo algorithm is introduced and the receiver function is modified to compensate the poor tracking ef- fect caused by the calculated error in tracking operation process. According to the error compensation method of motion vision, the corresponding mathematical model was constructed to improve the motion target' s tracking effect of the traditional motion vi- sion tracking electronic equipment effectively. The scheme was verified with simulation experiment. The simulation results show that the scheme can improve the tracking effect of motion target effectively.
作者 宋丽丹
机构地区 安阳师范学院
出处 《现代电子技术》 北大核心 2017年第24期144-146,150,共4页 Modern Electronics Technique
基金 河南省科学技术厅科技攻关计划项目(172102310548)
关键词 运动视觉跟踪 电子设备 改进设计 蒙特卡罗算法 motion vision tracking electronic device improved design Monte Carlo algorithm
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