Individual Tree Detection in Large-Scale Urban Environments using High-Resolution Multispectral Imagery
- URL: http://arxiv.org/abs/2208.10607v4
- Date: Wed, 3 Jul 2024 14:23:16 GMT
- Title: Individual Tree Detection in Large-Scale Urban Environments using High-Resolution Multispectral Imagery
- Authors: Jonathan Ventura, Camille Pawlak, Milo Honsberger, Cameron Gonsalves, Julian Rice, Natalie L. R. Love, Skyler Han, Viet Nguyen, Keilana Sugano, Jacqueline Doremus, G. Andrew Fricker, Jenn Yost, Matt Ritter,
- Abstract summary: We introduce a novel deep learning method for detection of individual trees in urban environments.
We use a convolutional neural network to regress a confidence map indicating the locations of individual trees.
Our method provides complete spatial coverage by detecting trees in both public and private spaces.
- Score: 1.1661668662828382
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We introduce a novel deep learning method for detection of individual trees in urban environments using high-resolution multispectral aerial imagery. We use a convolutional neural network to regress a confidence map indicating the locations of individual trees, which are localized using a peak finding algorithm. Our method provides complete spatial coverage by detecting trees in both public and private spaces, and can scale to very large areas. We performed a thorough evaluation of our method, supported by a new dataset of over 1,500 images and almost 100,000 tree annotations, covering eight cities, six climate zones, and three image capture years. We trained our model on data from Southern California, and achieved a precision of 73.6% and recall of 73.3% using test data from this region. We generally observed similar precision and slightly lower recall when extrapolating to other California climate zones and image capture dates. We used our method to produce a map of trees in the entire urban forest of California, and estimated the total number of urban trees in California to be about 43.5 million. Our study indicates the potential for deep learning methods to support future urban forestry studies at unprecedented scales.
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