| Literature DB >> 31059134 |
Karl C Fetter1,2, Sven Eberhardt3, Rich S Barclay2, Scott Wing2, Stephen R Keller1.
Abstract
Stomata regulate important physiological processes in plants and are often phenotyped by researchers in diverse fields of plant biology. Currently, there are no user-friendly, fully automated methods to perform the task of identifying and counting stomata, and stomata density is generally estimated by manually counting stomata. We introduce StomataCounter, an automated stomata counting system using a deep convolutional neural network to identify stomata in a variety of different microscopic images. We use a human-in-the-loop approach to train and refine a neural network on a taxonomically diverse collection of microscopic images. Our network achieves 98.1% identification accuracy on Ginkgo scanning electron microscropy micrographs, and 94.2% transfer accuracy when tested on untrained species. To facilitate adoption of the method, we provide the method in a publicly available website at http://www.stomata.science/.Entities:
Keywords: computer vision; convolutional deep learning; neural network; phenotyping; stomata
Mesh:
Year: 2019 PMID: 31059134 DOI: 10.1111/nph.15892
Source DB: PubMed Journal: New Phytol ISSN: 0028-646X Impact factor: 10.151