We present a simple and general framework for feature learning from point cloud. The key to the success of CNNs is the convolution operator that is capable of leveraging spatially-local correlation in data represented densely in grids (e.g. images). However, point cloud are irregular and unordered, thus a direct convolving of kernels against the features associated with the points will result in deserting the shape information while being variant to the orders. To address these problems, we propose to learn a X-transformation from the input points, and then use it to simultaneously weight the input features associated with the points and permute them into latent potentially canonical order, before the element-wise product and sum operations are applied. The proposed method is a generalization of typical CNNs into learning features from point cloud, thus we call it PointCNN. Experiments show that PointCNN achieves on par or better performance than state-of-the-art methods on multiple challenging benchmark datasets and tasks.
翻译:我们提出了一个从点云学习特征的简单和一般框架。 CNN的成功关键在于能够利用电网(例如图像)中密度数据的空间-局部相关性的演进操作器。 但是,点云是不规律的,没有顺序排列的,因此,与点的特征直接关联的内核将导致从形状信息中分离出来,同时与命令不同。为了解决这些问题,我们提议从输入点学习X转换,然后在应用元素产品和总和操作之前,同时将点输入特征加权,并把它们渗透到潜在的潜在的罐头顺序中。提议的方法是将典型CNN从点云中学习特征,因此我们称之为点CNN。 实验表明,点CNN在多个具有挑战性的基准数据集和任务上,其性能比最先进的方法差或差。