DANet: Density Adaptive Convolutional Network with Interactive Attention
for 3D Point Clouds
- URL: http://arxiv.org/abs/2303.04473v1
- Date: Wed, 8 Mar 2023 09:46:31 GMT
- Title: DANet: Density Adaptive Convolutional Network with Interactive Attention
for 3D Point Clouds
- Authors: Yong He, Hongshan Yu, Zhengeng Yang, Wei Sun, Mingtao Feng, Ajmal Mian
- Abstract summary: Local features and contextual dependencies are crucial for 3D point cloud analysis.
We propose density adaptive convolution, coined DAConv.
IAM embeds spatial information into channel attention along different spatial directions.
- Score: 30.54110361164338
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Local features and contextual dependencies are crucial for 3D point cloud
analysis. Many works have been devoted to designing better local convolutional
kernels that exploit the contextual dependencies. However, current point
convolutions lack robustness to varying point cloud density. Moreover,
contextual modeling is dominated by non-local or self-attention models which
are computationally expensive. To solve these problems, we propose density
adaptive convolution, coined DAConv. The key idea is to adaptively learn the
convolutional weights from geometric connections obtained from the point
density and position. To extract precise context dependencies with fewer
computations, we propose an interactive attention module (IAM) that embeds
spatial information into channel attention along different spatial directions.
DAConv and IAM are integrated in a hierarchical network architecture to achieve
local density and contextual direction-aware learning for point cloud analysis.
Experiments show that DAConv is significantly more robust to point density
compared to existing methods and extensive comparisons on challenging 3D point
cloud datasets show that our network achieves state-of-the-art classification
results of 93.6% on ModelNet40, competitive semantic segmentation results of
68.71% mIoU on S3DIS and part segmentation results of 86.7% mIoU on ShapeNet.
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