Litcius/Paper detail

A Dense Feature Pyramid Network-Based Deep Learning Model for Road Marking Instance Segmentation Using MLS Point Clouds

Siyun Chen, Zhenxin Zhang, Ruofei Zhong, Liqiang Zhang, Hao Ma, Lirong Liu

2020IEEE Transactions on Geoscience and Remote Sensing47 citationsDOI

Abstract

Accurate and efficient extraction of road marking plays an important role in road transportation engineering, automotive vision, and automatic driving. In this article, we proposed a dense feature pyramid network (DFPN)-based deep learning model, by considering the particularity and complexity of road marking. The DFPN concatenated its shallow feature channels with deep feature channels so that the shallow feature maps with high resolution and abundant image details can utilize the deep features. Thus, the DFPN can learn hierarchical deep detailed features. The designed deep learning model was trained end to end for road marking instance extraction with mobile laser scanning (MLS) point clouds. Then, we introduced the focal loss function into the optimization of deep learning model in road marking segmentation part, to pay more attention to the hard-classified samples with a large extent of background. In the experiments, our method can achieve better results than state-of-the-art methods on instance segmentation of road markings, which illustrated the advantage of the proposed method.

Topics & Concepts

Artificial intelligenceComputer scienceDeep learningPyramid (geometry)SegmentationPoint cloudFeature (linguistics)Feature extractionComputer visionImage segmentationPattern recognition (psychology)LinguisticsOpticsPhilosophyPhysicsRemote Sensing and LiDAR ApplicationsAdvanced Neural Network Applications3D Surveying and Cultural Heritage