CVJul 14, 2024

Multiple data sources and domain generalization learning method for road surface defect classification

arXiv:2407.10197v13 citationsh-index: 6
Originality Incremental advance
AI Analysis

This addresses the challenge of applying deep learning models to new road inspection datasets without requiring updates, which is important for automated road maintenance systems.

The paper tackles the problem of road surface defect classification by proposing a domain generalization method that works with multiple data sources, enabling efficient classification on previously unseen data from six countries in the RDD2022 dataset.

Roads are an essential mode of transportation, and maintaining them is critical to economic growth and citizen well-being. With the continued advancement of AI, road surface inspection based on camera images has recently been extensively researched and can be performed automatically. However, because almost all of the deep learning methods for detecting road surface defects were optimized for a specific dataset, they are difficult to apply to a new, previously unseen dataset. Furthermore, there is a lack of research on training an efficient model using multiple data sources. In this paper, we propose a method for classifying road surface defects using camera images. In our method, we propose a scheme for dealing with the invariance of multiple data sources while training a model on multiple data sources. Furthermore, we present a domain generalization training algorithm for developing a generalized model that can work with new, completely unseen data sources without requiring model updates. We validate our method using an experiment with six data sources corresponding to six countries from the RDD2022 dataset. The results show that our method can efficiently classify road surface defects on previously unseen data.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes