Robustness Enhancement of optical flow sensors accuracy to surface texture variations using point tracking algorithm

Saeed Takaloo, G. Vossoughi
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Abstract

Novel architecture of high precision localization using optical flow sensor (OFS) combined with Iterative Point Tracking Algorithm (IPTA) is proposed. This work focuses on attenuation of OFS’ sensitivity dependency on texture of surface over which sensor is moving. The aim for the design of experimental setup is to verify how much a robustness of OFS's sensitivity on various surfaces improves. In this regard, four different surfaces' texture including iron, paper, textile and granite stone is opted. Experimental results indicate that sensor's resolution via IPTA on surfaces of iron, paper, textile and granite stone respectively equal to 382, 460, 528 and 448 CPI. Optimal value of the algorithm parameters is calculated via Genetic Algorithm (GA). We show that IPTA is one of the effective algorithms that can enhance the robustness of OFS’ resolution to surface's texture variations.
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利用点跟踪算法增强光流传感器对表面纹理变化的精度
提出了结合迭代点跟踪算法的光流传感器(OFS)高精度定位新架构。本研究的重点是OFS灵敏度随传感器移动表面纹理的衰减。设计实验装置的目的是验证OFS在不同表面上灵敏度的鲁棒性提高了多少。在这方面,选择了四种不同的表面纹理,包括铁、纸、纺织品和花岗岩。实验结果表明,传感器在铁、纸、纺织品和花岗岩表面的IPTA分辨率分别为382、460、528和448 CPI。通过遗传算法计算算法参数的最优值。研究表明,IPTA是一种有效的增强OFS分辨率对表面纹理变化鲁棒性的算法。
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