• ISSN: 1674-7461
  • CN: 11-5823/TU
  • 主管:中国科学技术协会
  • 主办:中国图学学会
  • 承办:中国建筑科学研究院有限公司

基于MOCOA的工程场地三维重构相机阵列优化方法研究

Research on Camera Array Optimization Method for 3D Reconstruction of Engineering Sites Based on MOCOA

  • 摘要: 在工程场地多视图三维重构任务中,相机阵列布局的优化对于提升重构质量、降低计算成本具有重要价值。针对现有布局优化中面临的参数耦合度高、多优化目标冲突等问题,本文提出了一种基于多目标浣熊优化算法(MOCOA)的相机阵列优化方法。结合神经网络拟合函数,改进全局搜索与局部优化机制,获取帕累托最优解,进而实现完整度、精度与计算成本的最优平衡。沙池模拟场景下的点云完整度提高74%,重投影误差降低62%,数据利用效率提升111%,验证了其在工程应用中的有效性与潜在价值。

     

    Abstract: In multi-view 3D reconstruction tasks for engineering sites, optimizing the layout of the camera array is crucial for enhancing reconstruction quality and reducing computational costs. Addressing challenges such as high parameter coupling and conflicts among multiple optimization objectives in existing layout optimization methods, this paper proposes a camera array optimization method based on the Multi-Objective Coati Optimization Algorithm (MOCOA). By integrating neural network fitting functions and improving the global search and local optimization mechanisms, the method obtains Pareto-optimal solutions to achieve an optimal balance among completeness, accuracy, and computational cost. In a sandbox simulation scenario, the point cloud completeness increased by 74%, reprojection error decreased by 62%, and data utilization efficiency improved by 111%, demonstrating the effectiveness and potential value of the proposed method in engineering applications.

     

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