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PatBall1 committed Sep 23, 2023
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Expand Up @@ -23,19 +23,21 @@ MRes project repo available [here](https://github.com/shmh40/detectreeRGB).</sub
## Citation

### Please cite this article if you use detectree2 in your work
Please cite this article if you use detectree2 in your work:

Ball, J.G.C., Hickman, S.H.M., Jackson, T.D., Koay, X.J., Hirst, J., Jay, W., Archer, M., Aubry-Kientz, M., Vincent, G. and Coomes, D.A. (2023),
Accurate delineation of individual tree crowns in tropical forests from aerial RGB imagery using Mask R-CNN.
*Remote Sens Ecol Conserv*. [https://doi.org/10.1002/rse2.332](https://doi.org/10.1002/rse2.332)

### Independent validation
## Independent validation

Independent validation has been performed on a temperate deciduous forest in Japan.

> *Detectree2 (F1 score: 0.57) outperformed DeepForest (F1 score: 0.52)*
>
> *Detectree2 could estimate tree crown areas accurately, highlighting its potential and robustness for tree detection and delineation*
Gan, Yi, Quan Wang, and Atsuhiro Iio. (2023).
Gan, Y., Wang, Q., and Iio, A. (2023).
Tree Crown Detection and Delineation in a Temperate Deciduous Forest from UAV RGB Imagery Using Deep Learning Approaches: Effects of Spatial Resolution and Species Characteristics.
*Remote Sensing*. 15(3):778. [https://doi.org/10.3390/rs15030778](https://doi.org/10.3390/rs15030778)

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