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首页> 外文期刊>Computational Imaging, IEEE Transactions on >Optimal Model-Based 6-D Object Pose Estimation With Structured-Light Depth Sensors
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Optimal Model-Based 6-D Object Pose Estimation With Structured-Light Depth Sensors

机译:基于结构光深度传感器的基于模型的最佳6D对象姿态估计

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摘要

Structured-light (SL) depth sensors are widely used because of their simplicity in design and ability to process depth data with minimal computational expense. Certain SL light coding methods can, however, lead to a loss of information, as well as inhomogeneous depth errors that depend on the composition and properties of the scene. This results in a reduction of potential accuracy for model-based pose estimation methods that operate on the depth images or subsequently transformed three-dimensional point clouds, such as the popular class of point set registration (PSR) methods. We therefore formulate an asymptotically optimal maximum likelihood estimation (MLE) method that operates directly on the raw SL infrared (IR) images. The proposed SLIR-MLE method maximizes the likelihood of the measured IR image over the pose region given the object model, sensor model, and calibrated speckle and thermal noise distributions. We also formulate a method to compute the Fisher information contained in the IR image and resulting Cramér–Rao bound (CRB) of any unbiased pose estimator for unique SL sensor measurement data. SLIR-MLE is shown to nearly achieve the calculated CRB for the Kinect sensor by operating on the more informative raw IR images. Furthermore, our method is shown to outperform two cutting edge PSR methods by an order of magnitude in the respective mean square errors.
机译:结构光(SL)深度传感器由于其设计简单和以最小的计算费用处理深度数据的能力而被广泛使用。但是,某些SL光编码方法可能导致信息丢失,以及取决于场景的组成和属性的不均匀深度误差。这导致在深度图像或随后转换的三维点云上运行的基于模型的姿势估计方法(例如流行的点集注册(PSR)方法)的潜在准确性降低。因此,我们制定了一种渐近最优的最大似然估计(MLE)方法,该方法直接对原始SL红外(IR)图像进行操作。所提出的SLIR-MLE方法在给定对象模型,传感器模型以及已校准的斑点和热噪声分布的情况下,将在姿势区域上测得的IR图像的可能性最大化。我们还制定了一种方法来计算包含在红外图像中的Fisher信息,以及针对唯一SL传感器测量数据的任何无偏姿势估计器的结果Cramér-Rao界(CRB)。通过对信息量更大的原始IR图像进行操作,SLIR-MLE被证明几乎可以实现Kinect传感器的计算出的CRB。此外,我们的方法在各自的均方误差中表现出比两个最先进的PSR方法高一个数量级。

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