Ruiqing Jian

1paper

1 Paper

CVApr 5, 2018
Noise-resistant Deep Learning for Object Classification in 3D Point Clouds Using a Point Pair Descriptor

Dmytro Bobkov, Sili Chen, Ruiqing Jian et al.

Object retrieval and classification in point cloud data is challenged by noise, irregular sampling density and occlusion. To address this issue, we propose a point pair descriptor that is robust to noise and occlusion and achieves high retrieval accuracy. We further show how the proposed descriptor can be used in a 4D convolutional neural network for the task of object classification. We propose a novel 4D convolutional layer that is able to learn class-specific clusters in the descriptor histograms. Finally, we provide experimental validation on 3 benchmark datasets, which confirms the superiority of the proposed approach.