CVSep 18, 2023

Scalable Label-efficient Footpath Network Generation Using Remote Sensing Data and Self-supervised Learning

arXiv:2309.09446v1h-index: 47Has Code
Originality Synthesis-oriented
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This provides a low-cost solution for urban planners and local governments to map footpaths, addressing the lack of real-time information and high manual survey costs, though it is incremental in applying existing methods to a specific domain.

The paper tackles the problem of generating footpath networks from remote sensing data by developing an automatic pipeline that uses self-supervised learning to reduce annotation requirements, achieving considerable consistency with manually collected GIS layers.

Footpath mapping, modeling, and analysis can provide important geospatial insights to many fields of study, including transport, health, environment and urban planning. The availability of robust Geographic Information System (GIS) layers can benefit the management of infrastructure inventories, especially at local government level with urban planners responsible for the deployment and maintenance of such infrastructure. However, many cities still lack real-time information on the location, connectivity, and width of footpaths, and/or employ costly and manual survey means to gather this information. This work designs and implements an automatic pipeline for generating footpath networks based on remote sensing images using machine learning models. The annotation of segmentation tasks, especially labeling remote sensing images with specialized requirements, is very expensive, so we aim to introduce a pipeline requiring less labeled data. Considering supervised methods require large amounts of training data, we use a self-supervised method for feature representation learning to reduce annotation requirements. Then the pre-trained model is used as the encoder of the U-Net for footpath segmentation. Based on the generated masks, the footpath polygons are extracted and converted to footpath networks which can be loaded and visualized by geographic information systems conveniently. Validation results indicate considerable consistency when compared to manually collected GIS layers. The footpath network generation pipeline proposed in this work is low-cost and extensible, and it can be applied where remote sensing images are available. Github: https://github.com/WennyXY/FootpathSeg.

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