Abstract
Understanding road networks plays an important role in navigation applications such as self-driving vehicles and route planning for individual journeys. Intersections of roads are essential components of road networks. Understanding the features of an intersection, from a simple T-junction to larger multi-road junctions is critical to decisions such as crossing roads or selecting safest routes. The identification and profiling of intersections from satellite images is a challenging task. While deep learning approaches offer state-of-the-art in image classification and detection, the availability of training datasets is a bottleneck in this approach. In this paper, a labelled satellite image dataset for the intersection recognition problem is presented. It consists of 14,692 satellite images of Washington DC, USA. To support other users of the dataset, an automated download and labelling script is provided for dataset replication. The challenges of construction and fine-grained feature labelling of a satellite image dataset are examined, including the issue of how to address features that are spread across multiple images. Finally, the accuracy of detection of intersections in satellite images is evaluated
Original language | English |
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Pages (from-to) | 411-418 |
Journal | World Academy of Science, Engineering and Technology, Open Science Index 190, International Journal of Computer and Systems Engineering |
Volume | 16 |
Issue number | 10 |
DOIs | |
Publication status | Published - 1 Oct 2022 |
Keywords
- road networks
- navigation applications
- self-driving vehicles
- route planning
- intersections
- T-junction
- multi-road junctions
- crossing roads
- safest routes
- intersection recognition
- satellite images
- deep learning
- image classification
- detection
- training datasets
- labelled satellite image dataset
- Washington DC
- automated download
- labelling script
- dataset replication
- fine-grained feature labelling
- accuracy of detection