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MAFNet: Segmentation of Road Potholes With Multimodal Attention Fusion Network for Autonomous Vehicles

Zhen Feng, Yanning Guo, Liang Qing, M. Usman Maqbool Bhutta, Hengli Wang, Ming Liu, Yuxiang Sun

2022IEEE Transactions on Instrumentation and Measurement33 citationsDOI

Abstract

Road potholes can cause discomforts to passengers and even traffic accidents to vehicles. Accurate segmentation of road potholes is an important capability for autonomous vehicles to ensure driving safety. Some methods on road-pothole segmentation use single-modal data (i.e., RGB images). The main challenge faced by these methods is that the visual appearance of road potholes is often close to road areas, making these networks difficult to distinguish them. Recent methods resort to fusing RGB images with depth/disparity images for pothole segmentation. However, their performance is still not satisfactory in real-world applications. To achieve superior results, this paper proposes a novel data fusion network for road-pothole segmentation, where a channel attention fusion module and a dual attention fusion module are designed to hierarchically fuse the RGB and disparity data. We evaluate our proposed network using a public dataset, and the experimental results demonstrate the superiority over the state-of-the-art networks.

Topics & Concepts

Pothole (geology)SegmentationComputer scienceArtificial intelligenceFuse (electrical)Computer visionRGB color modelImage segmentationChannel (broadcasting)Sensor fusionEngineeringTelecommunicationsGeologyPetrologyElectrical engineeringInfrastructure Maintenance and MonitoringGeophysical Methods and ApplicationsAsphalt Pavement Performance Evaluation
MAFNet: Segmentation of Road Potholes With Multimodal Attention Fusion Network for Autonomous Vehicles | Litcius