Vegetation density estimation in the wild

Radu Paul Mihail, Wesley I. Cook, Brandi M. Griffin,Theodore A. Uyeno,Corey D. Anderson

ACM SE '18: Southeast Conference Richmond Kentucky March, 2018(2018)

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摘要
Remote sensing has revolutionized the efficiency of vegetation mapping, but such techniques remain impractical for mapping some types of flora over relatively limited spatial extents. We propose a deep-learning based framework for automated detection and planar mapping of an epiphytic plant in a forest from geotagged static imagery using inexpensive cameras. Our pipeline consists of two steps: segmentation and spatial distribution estimation. We evaluate several segmentation methods on a novel dataset of roughly 375 outdoor images with per-pixel labels indicating the presence of Spanish moss. We also evaluate the accuracy of the spatial distribution estimates with respect to field measurements by ecologists for Spanish moss.
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关键词
Segmentation, In the Wild, Machine Vision, Deep Learning, Plants
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