利用 Helios 3D 植物和辐射传输建模框架模拟自动注释的可见光和多光谱/高光谱图像。

IF 7.6 1区 农林科学 Q1 AGRONOMY Plant Phenomics Pub Date : 2024-05-30 eCollection Date: 2024-01-01 DOI:10.34133/plantphenomics.0189
Tong Lei, Jan Graefe, Ismael K Mayanja, Mason Earles, Brian N Bailey
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引用次数: 0

摘要

深度学习和多模态遥感与近距离传感被广泛用于分析植物和作物性状,但其中许多深度学习模型都是有监督的,需要有图像注释的参考数据集。获取这些数据集通常需要进行既耗费人力又耗费时间的实验。此外,从遥感数据中提取简单几何特征以外的特征仍然是一项挑战。为了应对这些挑战,我们提出了一个基于 Helios 三维(3D)植物建模软件的辐射传递建模框架,该软件专为植物遥感和近感图像模拟而设计。该框架能够模拟 RGB、多/高光谱、热和深度相机,并生成相关的植物图像,这些图像带有完全解析的参考标签,如植物物理特征、叶片化学浓度和叶片生理特征。Helios 提供的模拟环境可以生成具有随机变化的植物和土壤三维几何模型,并对其属性和功能进行规范或模拟。这种方法与传统的计算机图形渲染不同,它明确地模拟了辐射传递物理过程,这为潜在的植物生物物理过程提供了重要的联系。研究结果表明,该框架能够在给定的光照条件下生成高质量、有标记的合成植物图像,从而减少或消除对人工收集和注释数据的需求。本文还介绍了两个应用实例,展示了利用该模型通过完全使用模拟图像训练深度学习模型和使用真实图像执行预测任务来实现无监督学习的可行性。
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Simulation of Automatically Annotated Visible and Multi-/Hyperspectral Images Using the Helios 3D Plant and Radiative Transfer Modeling Framework.

Deep learning and multimodal remote and proximal sensing are widely used for analyzing plant and crop traits, but many of these deep learning models are supervised and necessitate reference datasets with image annotations. Acquiring these datasets often demands experiments that are both labor-intensive and time-consuming. Furthermore, extracting traits from remote sensing data beyond simple geometric features remains a challenge. To address these challenges, we proposed a radiative transfer modeling framework based on the Helios 3-dimensional (3D) plant modeling software designed for plant remote and proximal sensing image simulation. The framework has the capability to simulate RGB, multi-/hyperspectral, thermal, and depth cameras, and produce associated plant images with fully resolved reference labels such as plant physical traits, leaf chemical concentrations, and leaf physiological traits. Helios offers a simulated environment that enables generation of 3D geometric models of plants and soil with random variation, and specification or simulation of their properties and function. This approach differs from traditional computer graphics rendering by explicitly modeling radiation transfer physics, which provides a critical link to underlying plant biophysical processes. Results indicate that the framework is capable of generating high-quality, labeled synthetic plant images under given lighting scenarios, which can lessen or remove the need for manually collected and annotated data. Two example applications are presented that demonstrate the feasibility of using the model to enable unsupervised learning by training deep learning models exclusively with simulated images and performing prediction tasks using real images.

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来源期刊
Plant Phenomics
Plant Phenomics Multiple-
CiteScore
8.60
自引率
9.20%
发文量
26
审稿时长
14 weeks
期刊介绍: Plant Phenomics is an Open Access journal published in affiliation with the State Key Laboratory of Crop Genetics & Germplasm Enhancement, Nanjing Agricultural University (NAU) and published by the American Association for the Advancement of Science (AAAS). Like all partners participating in the Science Partner Journal program, Plant Phenomics is editorially independent from the Science family of journals. The mission of Plant Phenomics is to publish novel research that will advance all aspects of plant phenotyping from the cell to the plant population levels using innovative combinations of sensor systems and data analytics. Plant Phenomics aims also to connect phenomics to other science domains, such as genomics, genetics, physiology, molecular biology, bioinformatics, statistics, mathematics, and computer sciences. Plant Phenomics should thus contribute to advance plant sciences and agriculture/forestry/horticulture by addressing key scientific challenges in the area of plant phenomics. The scope of the journal covers the latest technologies in plant phenotyping for data acquisition, data management, data interpretation, modeling, and their practical applications for crop cultivation, plant breeding, forestry, horticulture, ecology, and other plant-related domains.
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