TL;DR
This paper introduces RFFS-Net, a novel deep learning model that effectively captures multi-receptive field features for improved classification of airborne laser scanning point clouds, especially in complex and scale-varying regions.
Contribution
The paper proposes a receptive field fusion-and-stratification network with dilated graph convolutions and multi-level decoders, advancing ALS point cloud classification accuracy.
Findings
Achieved 82.1% overall accuracy on ISPRS Vaihingen dataset.
Outperformed baseline by 5.3% on mF1 and 5.4% on mIoU.
Set new state-of-the-art results on multiple ALS datasets.
Abstract
The classification of airborne laser scanning (ALS) point clouds is a critical task of remote sensing and photogrammetry fields. Although recent deep learning-based methods have achieved satisfactory performance, they have ignored the unicity of the receptive field, which makes the ALS point cloud classification remain challenging for the distinguishment of the areas with complex structures and extreme scale variations. In this article, for the objective of configuring multi-receptive field features, we propose a novel receptive field fusion-and-stratification network (RFFS-Net). With a novel dilated graph convolution (DGConv) and its extension annular dilated convolution (ADConv) as basic building blocks, the receptive field fusion process is implemented with the dilated and annular graph fusion (DAGFusion) module, which obtains multi-receptive field feature representation through…
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Taxonomy
MethodsConvolution · Adaptive Label Smoothing · Dilated Convolution
