In this work, we propose a novel framework shape back-projection for computationally efficient point cloud processing in a probabilistic manner. The primary component of the technique is shape histogram and a back-projection procedure. The technique measures similarity between 3D surfaces, by analyzing their geometrical properties. It is analogous to color back-projection which measures similarity between images, simply by looking at their color distributions. In the overall process, first, shape histogram of a sample surface (e.g. planar) is computed, which captures the profile of surface normals around a point in form of a probability distribution. Later, the histogram is back-projected onto a test surface and a likelihood score is obtained. The score depicts that how likely a point in the test surface behaves similar to the sample surface, geometrically. Shape back-projection finds its application in binary surface classification, high curvature edge detection in unorganized point cloud, automated point cloud labeling for 3D-CNNs (convolutional neural network) etc. The algorithm can also be used for real-time robotic operations such as autonomous object picking in warehouse automation, ground plane extraction for autonomous vehicles and can be deployed easily on computationally limited platforms (UAVs).
翻译:在这项工作中,我们提出了一个用于以概率分析方式计算高效点云处理的新框架回射图。 技术的主要组成部分是形状直方图和回射程序。 技术通过分析3D表面的几何属性测量3D表面之间的相似性。 类似于颜色回射图, 测量图像之间的相似性, 只是通过查看其颜色分布。 在总体过程中, 首先, 以概率分布的形式, 绘制样本表面( 如平面) 的直方图( 如平面), 以概率分布的形式, 捕捉表面正常值的剖面。 之后, 直方图被反射到测试表面, 并获得概率分数。 该评分描述了测试表面的一个点与样本表面相似的可能性。 形状回射图在二进制表面分类中发现其应用, 在无组织点云中进行高曲调边缘探测, 3D- CNs( 革命神经网络等) 自动点云标定。 算法还可以很容易地用于实时自动自动自动化的自动自动机器人平台, 。