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用于深度学习的图像集:标注有病害症状的玉米田间图像。

Image set for deep learning: field images of maize annotated with disease symptoms.

作者信息

Wiesner-Hanks Tyr, Stewart Ethan L, Kaczmar Nicholas, DeChant Chad, Wu Harvey, Nelson Rebecca J, Lipson Hod, Gore Michael A

机构信息

Plant Breeding and Genetics Section, School of Integrative Plant Science, Cornell University, Ithaca, NY, 14853, USA.

Department of Computer Science, Columbia University, New York, NY, 10027, USA.

出版信息

BMC Res Notes. 2018 Jul 3;11(1):440. doi: 10.1186/s13104-018-3548-6.

Abstract

OBJECTIVES

Automated detection and quantification of plant diseases would enable more rapid gains in plant breeding and faster scouting of farmers' fields. However, it is difficult for a simple algorithm to distinguish between the target disease and other sources of dead plant tissue in a typical field, especially given the many variations in lighting and orientation. Training a machine learning algorithm to accurately detect a given disease from images taken in the field requires a massive amount of human-generated training data.

DATA DESCRIPTION

This data set contains images of maize (Zea mays L.) leaves taken in three ways: by a hand-held camera, with a camera mounted on a boom, and with a camera mounted on a small unmanned aircraft system (sUAS, commonly known as a drone). Lesions of northern leaf blight (NLB), a common foliar disease of maize, were annotated in each image by one of two human experts. The three data sets together contain 18,222 images annotated with 105,705 NLB lesions, making this the largest publicly available image set annotated for a single plant disease.

摘要

目标

植物病害的自动检测和定量分析将有助于在植物育种方面更快取得进展,并能更快地对农田进行巡查。然而,对于一个简单的算法来说,在典型的田间环境中区分目标病害和植物死亡组织的其他来源是很困难的,尤其是考虑到光照和方向的诸多变化。训练一个机器学习算法从田间拍摄的图像中准确检测给定病害需要大量人工生成的训练数据。

数据描述

该数据集包含以三种方式拍摄的玉米(Zea mays L.)叶片图像:用手持相机、安装在吊杆上的相机以及安装在小型无人机系统(sUAS,通常称为无人机)上的相机。玉米常见叶部病害——北方叶斑病(NLB)的病斑由两位人类专家之一在每张图像中标注出来。这三个数据集总共包含18222张标注有105705个北方叶斑病病斑的图像,这使其成为针对单一植物病害标注的最大的公开可用图像集。

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