Inverse Composition Discriminative Optimization for Point Cloud Registration

J. Vongkulbhisal, Beñat Irastorza Ugalde, F. D. L. Torre, J. Costeira
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引用次数: 22

Abstract

Rigid Point Cloud Registration (PCReg) refers to the problem of finding the rigid transformation between two sets of point clouds. This problem is particularly important due to the advances in new 3D sensing hardware, and it is challenging because neither the correspondence nor the transformation parameters are known. Traditional local PCReg methods (e.g., ICP) rely on local optimization algorithms, which can get trapped in bad local minima in the presence of noise, outliers, bad initializations, etc. To alleviate these issues, this paper proposes Inverse Composition Discriminative Optimization (ICDO), an extension of Discriminative Optimization (DO), which learns a sequence of update steps from synthetic training data that search the parameter space for an improved solution. Unlike DO, ICDO is object-independent and generalizes even to unseen shapes. We evaluated ICDO on both synthetic and real data, and show that ICDO can match the speed and outperform the accuracy of state-of-the-art PCReg algorithms.
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点云配准的逆组合判别优化
刚体点云配准(PCReg)是指寻找两组点云之间刚体变换的问题。由于新型3D传感硬件的进步,这个问题尤为重要,而且由于既不知道对应关系,也不知道转换参数,所以这个问题具有挑战性。传统的局部PCReg方法(例如ICP)依赖于局部优化算法,在存在噪声、离群值、不良初始化等情况下,可能会陷入不良的局部最小值。为了缓解这些问题,本文提出了逆组合判别优化(ICDO),这是判别优化(DO)的扩展,它从综合训练数据中学习一系列更新步骤,搜索参数空间以寻找改进的解。与DO不同,ICDO是对象独立的,甚至可以泛化到看不见的形状。我们在合成数据和真实数据上对ICDO进行了评估,结果表明ICDO可以匹配最先进的PCReg算法的速度和准确性。
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