点云
计算机科学
卷积神经网络
稳健性(进化)
人工智能
代表(政治)
网格
模式识别(心理学)
数据挖掘
数学
基因
法学
化学
几何学
政治
生物化学
政治学
作者
Yizhak Ben-Shabat,Michael Lindenbaum,Anath Fischer
出处
期刊:IEEE robotics and automation letters
日期:2018-06-25
卷期号:3 (4): 3145-3152
被引量:221
标识
DOI:10.1109/lra.2018.2850061
摘要
Modern robotic systems are often equipped with a direct three-dimensional (3-D) data acquisition device, e.g., LiDAR, which provides a rich 3-D point cloud representation of the surroundings. This representation is commonly used for obstacle avoidance and mapping. Here, we propose a new approach for using point clouds for another critical robotic capability, semantic understanding of the environment (i.e., object classification). Convolutional neural networks (CNNs), that perform extremely well for object classification in 2-D images, are not easily extendible to 3-D point clouds analysis. It is not straightforward due to point clouds' irregular format and a varying number of points. The common solution of transforming the point cloud data into a 3-D voxel grid needs to address severe accuracy versus memory size tradeoffs. In this letter, we propose a novel, intuitively interpretable, 3-D point cloud representation called 3-D modified Fisher vectors. Our representation is hybrid as it combines a coarse discrete grid structure with continuous generalized Fisher vectors. Using the grid enables us to design a new CNN architecture for real-time point cloud classification. In a series of performance analysis experiments, we demonstrate competitive results or even better than state of the art on challenging benchmark datasets while maintaining robustness to various data corruptions.
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