设为首页 | 加入收藏 | English
作物表型组学交叉研究中心中文版
科学研究
当前位置: 首页 >> 科学研究 >> 科研成果 >> 正文
科研成果
通过深度学习和计算机图像进行超大规模航空农业图像分析以及对百万颗生菜进行分割和质量分析
作者:   来源:    日期: 2019-01-26   浏览次数:

Abstract

Aerial imagery is regularly used by farmers and growers to monitor crops during the growing season. To extract meaningful phenotypic information from large-scale aerial images collected regularly from the field, high-throughput analytic solutions are required, which not only produce high-quality measures of key crop traits, but also support agricultural practitioners to make reliable management decisions of their crops. Here, we report AirSurf-Lettuce, an automated and open-source aerial image analysis platform that combines modern computer vision, up-to-date machine learning, and modular software engineering to measure yield-related phenotypes of millions of lettuces across the field. Utilising ultra-large normalized difference vegetation index (NDVI) images acquired by fixed-wing light aircrafts together with a deep-learning classifier trained with over 100,000 labelled lettuce signals, the platform is capable of scoring and categorising iceberg lettuces with high accuracy (>98%). Furthermore, novel analysis functions have been developed to map lettuce size distribution in the field, based on which global positioning system (GPS) tagged harvest regions can be derived to enable growers and farmers' precise harvest strategies and marketability estimates before the harvest.

 

Link to the article: https://www.biorxiv.org/content/10.1101/527184v1

 

 

Copyright © 2019 南京农业大学作物表型组学交叉研究中心

版权所有 All Rights Reserved