交叉因子动态加权粒子群优化在联合标定中的应用

Chao Jiang, Wei Wang, Dewei Yang, Yan Yang, Huayun Mao
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引用次数: 0

摘要

惯性测量单元对段的对准是惯性运动捕获的重要步骤,它直接影响到惯性测量单元数据能否充分表征段的运动。受遗传算法(GA)基因交叉和突变的启发,提出了一种带交叉因子的动态惯性加权粒子群优化算法来解决关节约束问题,并将该算法与粒子群优化(PSO)和动态惯性加权粒子群优化(DPSO)算法进行了比较,显示了该算法在人体下肢运动中的优越性。实验表明,引入适应度较大的粒子间随机交叉机制,只保留有效交叉,使得新算法在本课题中表现出更好的搜索能力和收敛效果,稳定性和有效性也得到了提高。本文的工作为今后关节角的精确计算提供了良好的支撑。
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Application of Dynamic Weight Particle Swarm Optimization with Cross Factor in Joint Calibration
The alignment of inertial measurement units(IMUs) to segment is an important step in inertial motion capture, which directly affects whether the imu data can fully represent the motion of the segment. Inspired by the gene crossover and mutation of Genetic Algorithm(GA), we propose a dynamic inertial weighted particle swarm optimization algorithm with cross factor to solve the joint constraint problem, and compared our algorithm with Particle Swarm Optimization(PSO) and Dynamic Inertial Weighted Particle Swarm Optimization(DPSO) algorithms to show the superiority of our algorithm during human lower limb movements. The experiment shows that introduced the random cross mechanism between particles with larger fitness and only the effective cross retained, makes the new algorithm show better search ability and convergence effect in this project, the stability and effectiveness are also improved. Our current work provides a good support for accurate calculation of joint angles in the future.
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