4.7 Article

Knowledge Enhanced Neural Networks for Point Cloud Semantic Segmentation

Journal

REMOTE SENSING
Volume 15, Issue 10, Pages -

Publisher

MDPI
DOI: 10.3390/rs15102590

Keywords

point clouds; semantic segmentation; neural network; knowledge enhancement; neuro-symbolic integration

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Deep learning approaches have become state-of-the-art in domains such as pattern recognition and computer vision, but they require a large amount of training data, which is often a challenge in geospatial and remote sensing fields. Neuro-Symbolic Integration field provides a possible solution by incorporating background knowledge into the neural network's learning pipeline, with one method being KENN (Knowledge Enhanced Neural Networks). Empirical results demonstrate that using KENN for point cloud semantic segmentation tasks improves the performance of the original network and achieves state-of-the-art levels of accuracy.
Deep learning approaches have sparked much interest in the AI community during the last decade, becoming state-of-the-art in domains such as pattern recognition, computer vision, and data analysis. However, these methods are highly demanding in terms of training data, which is often a major issue in the geospatial and remote sensing fields. One possible solution to this problem comes from the Neuro-Symbolic Integration field (NeSy), where multiple methods have been defined to incorporate background knowledge into the neural network's learning pipeline. One such method is KENN (Knowledge Enhanced Neural Networks), which injects logical knowledge into the neural network's structure through additional final layers. Empirically, KENN showed comparable or better results than other NeSy frameworks in various tasks while being more scalable. Therefore, we propose the usage of KENN for point cloud semantic segmentation tasks, where it has immense potential to resolve issues with small sample sizes and unbalanced classes. While other works enforce the knowledge constraints in post-processing, to the best of our knowledge, no previous methods have injected inject such knowledge into the learning pipeline through the use of a NeSy framework. The experiment results over different datasets demonstrate that the introduction of knowledge rules enhances the performance of the original network and achieves state-of-the-art levels of accuracy, even with subideal training data.

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