cross-posted from: https://lemmy.ca/post/23884006
Link to full text study:
https://www.thelancet.com/journals/landig/article/PIIS2589-7500(24)00094-3/fulltext
Background Cooling towers containing Legionella spp are a high-risk source of Legionnaires’ disease outbreaks. Manually locating cooling towers from aerial imagery during outbreak investigations requires expertise, is labour intensive, and can be prone to errors. We aimed to train a deep learning computer vision model to automatically detect cooling towers that are aerially visible.
Methods Between Jan 1 and 31, 2021, we extracted satellite view images of Philadelphia (PN, USA) and New York state (NY, USA) from Google Maps and annotated cooling towers to create training datasets. We augmented training data with synthetic data and model-assisted labelling of additional cities. Using 2051 images containing 7292 cooling towers, we trained a two-stage model using YOLOv5, a model that detects objects in images, and EfficientNet-b5, a model that classifies images. We assessed the primary outcomes of sensitivity and positive predictive value (PPV) of the model against manual labelling on test datasets of 548 images, including from two cities not seen in training (Boston [MA, USA] and Athens [GA, USA]). We compared the search speed of the model with that of manual searching by four epidemiologists.
Maybe it’s me, but that post title just hurts my brain.
That’s part of why I clicked the article, I was confused if I read it correctly
It’s straight from the paper, seems typical for a peer reviewed scientific paper title
Major problem in South East Asia. It’s a small world my last trip out there ended up on the plane sitting next to a gastro doctor who was fighting it at his hospital.
I kinda want to start a company that does automatic water tower sampling that can be retrofitted easily.