稳健性(进化)
计算机科学
人工智能
算法
机器视觉
计算机视觉
水准点(测量)
模板匹配
跟踪系统
卡尔曼滤波器
图像(数学)
大地测量学
生物化学
基因
化学
地理
作者
Ruizhou Wang,Yulong Zhang,Hua Wang
摘要
Industrial applications of micro-vision tracking algorithms become increasingly prevalent. Unfortunately, out-of-focused-plane (OFP) disturbances negatively impact the in-focused-plane (IFP) tracking accuracy of the micro-vision. This paper proposes a robustness evaluation system for micro-vision tracking algorithms. The relationship between IFP accuracy degradation/improvement and OFP disturbances is quantified. First, a commercial spatial nanopositioning stage (com-SNPS) and an SNPS designed in the laboratory (lab-SNPS) were employed to build a robustness evaluation system. Two SNPSs were utilized to generate both IFP trajectories and specific OFP disturbances. Capacitive sensors were used to evaluate the IFP accuracy of micro-vision tracking algorithms. Second, traditional micro-vision tracking algorithms were selected. The combination of the constant-template matching method, constant-region-of-interest (constant-ROI) retrieval method, and constant-focused-plane focusing method acted as test examples. Third, robust micro-vision tracking algorithms were developed. The variable-template matching method, variable-ROI retrieval method, and variable-focused-plane focusing method were combined. Finally, the prototype of the proposed robustness evaluation system was tested. The focused plane was determined to be a benchmark for calculating OFP disturbances. The IFP accuracy of chosen algorithms under specific OFP excitation was measured. Test results demonstrate different IFP degradation or improvement characteristics of micro-vision algorithms. This paper contributes to developing a robust micro-vision tracking algorithm.
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