How NS Can Use AI to Optimise Station Areas
Transport
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How can it optimise its train station areas?
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How can it automate its yearly count of cars parked at its 400 train stations?
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How can NS work smarter with the new data & analytics technologies available?
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NS automatically receives and analyses aerial images for every NS station
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Information on car parking utilisation is collected cheaply and more often
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NS can finetune its car parking facilities
AI, Data & Analytics
How NS Can Use AI to Optimise Station Areas
Business Challenges
NS is keen to explore the use of new technologies, so they’ve signed up for Emixa’s annual Advanced Data & Analytics Hackathon. During the initial discussions, our team of consultants worked with NS to evaluate several ideas. The concept of automating the counting of parking space usage emerged as the most promising in terms of both added value and feasibility. With the data and technologies available, could we create a working prototype in under 48 hours? The answer: yes, we can!
Keys to Success
During the hackathon, the team utilised publicly available aerial data alongside specific data provided by NS. The consultants employed the latest AI recognition model, YOLOv8, to count the number of parked cars using aerial imagery. Through a combination of creativity and expertise, the team successfully developed a working prototype.
Following the hackathon, the consultants further enhanced the prototype by incorporating additional data sources, using highly precise coordinates and more detailed aerial photos. Our team developed an automated Python script capable of retrieving and analysing images for every NS station. Additionally, the information can now be accessed more easily.
Results
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