We present incomplete gamma kernels, a generalization of Locally Optimal Projection (LOP) operators. In particular, we reveal the relation of the classical localized $ L_1 $ estimator, used in the LOP operator for surface reconstruction from noisy point clouds, to the common Mean Shift framework via a novel kernel. Furthermore, we generalize this result to a whole family of kernels that are built upon the incomplete gamma function and each represents a localized $ L_p $ estimator. By deriving various properties of the kernel family concerning distributional, Mean Shift induced, and other aspects such as strict positive definiteness, we obtain a deeper understanding of the operator's projection behavior. From these theoretical insights, we illustrate several applications ranging from an improved Weighted LOP (WLOP) density weighting scheme and a more accurate Continuous LOP (CLOP) kernel approximation to the definition of a novel set of robust loss functions. These incomplete gamma losses include the Gaussian and LOP loss as special cases and can be applied for reconstruction tasks such as normal filtering. We demonstrate the effects of each application in a range of quantitative and qualitative experiments that highlight the benefits induced by our modifications.
翻译:我们展示了不完整的伽马内核内核,这是局部最佳投影(LOP)操作员的通用。我们特别揭示了LOP操作员用于从热点云层进行地面重建的经典本地化 $L_1美元估算器与普通中位移框架之间的关系。此外,我们将这一结果推广到以不完整伽马函数为基础的整个内核系列,每个核心都代表着一个本地化的$L_p $ 估测器。通过得出内核家庭在分布、中位移诱导和其他方面的各种特性,例如严格的肯定性,我们更深入地了解操作员的预测行为。我们从这些理论的洞察看,我们展示了从改进的WLOP(WLOP)密度加权计划到更精确的LOP(CLOP)内核内核近似系统到一套新的稳健性损失功能的定义等多种应用。这些不完整的伽马内核损失包括高山和LOP损失,作为特殊案例,可用于重建任务,例如正常的过滤等。我们通过实验,展示了每种应用的定性和定性实验,展示了我们每项应用的结果。