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AI-driven analysis of animal cleanliness: A data-fusion model using RGB and thermal imaging 人工智能驱动的动物清洁度分析:使用RGB和热成像的数据融合模型
IF 8.9 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2026-03-15 Epub Date: 2026-01-20 DOI: 10.1016/j.compag.2026.111462
Alberto Carraro , Giulia Bugin , Francesco Marinello, Maddi Aguirrebengoa, Stefano Frattini, Andrea Pezzuolo
Accurate assessment of dairy cow cleanliness is essential for ensuring animal welfare, maintaining udder health, and optimising milk production. Traditional visual inspections are subjective and often fail to distinguish dirt from natural coat patterns, especially in spotted breeds. This research investigates the applicability of a two-stage approach for automated cleanliness evaluation, consisting of (i) semantic segmentation of dirt areas on cow coats and (ii) regression from the resulting masks to numerical cleanliness scores. The first stage was implemented using the U-Net and DeepLabV3 architectures, which were trained on either RGB-only or RGB-Thermal (RGB-T) images. Incorporating thermal information significantly improved segmentation accuracy: U-Net achieved a mean Intersection over Union (mIoU) of 0.5244 on RGB-T images, compared to 0.3537 on RGB images, while DeepLabV3 on RGB-T images reached an mIoU of 0.5049. The second stage compared two regression strategies: multiple linear regression (MLR) on the number of pixels classified as dirt, and convolutional neural networks (CNNs) trained directly on the masks. CNN-based regression consistently outperformed MLR, with the best performance obtained by combining RGB-T segmentation and CNN regression (DeepLabV3 + CNN: MAPE 23.05 %; U-Net + CNN: MAPE 25.24 %). These findings support the feasibility of a two-stage RGB-T-based approach for objective cleanliness evaluation, highlighting the benefits of thermal information for segmentation and CNNs for score prediction.
准确评估奶牛清洁度对确保动物福利、保持乳房健康和优化牛奶产量至关重要。传统的目视检查是主观的,往往不能区分污垢和自然的被毛图案,特别是在斑点品种。本研究探讨了自动清洁度评估的两阶段方法的适用性,包括(i)对奶牛皮毛上污垢区域的语义分割和(ii)从结果掩模到数值清洁度分数的回归。第一阶段使用U-Net和DeepLabV3架构实现,它们在RGB-only或RGB-Thermal (RGB-T)图像上进行训练。结合热信息显著提高了分割精度:U-Net在RGB- t图像上的平均交叉比(Intersection over Union, mIoU)为0.5244,而在RGB图像上为0.3537,而DeepLabV3在RGB- t图像上的mIoU为0.5049。第二阶段比较了两种回归策略:对分类为污垢的像素数量进行多元线性回归(MLR),以及直接在掩模上训练的卷积神经网络(cnn)。基于CNN的回归始终优于MLR,其中RGB-T分割与CNN回归相结合的效果最好(DeepLabV3 + CNN: MAPE 23.05%; U-Net + CNN: MAPE 25.24%)。这些发现支持了基于rgb的两阶段客观清洁度评估方法的可行性,突出了热信息用于分割和cnn用于评分预测的好处。
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引用次数: 0
Development and performance evaluation of an automatic control system for sugarcane harvester extractor 甘蔗收获机抽提机自动控制系统的研制与性能评价
IF 8.9 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2026-03-15 Epub Date: 2026-01-19 DOI: 10.1016/j.compag.2026.111425
Baocheng Zhou , Shaochun Ma , Wenzhi Li , Jinzhi Ma , Yansu Xie , Sha Yang
Real-time adjustment of extractor speed according to feed rate is essential to reduce impurity content and cane loss in mechanized sugarcane harvesting. An automatic control system for sugarcane harvester extractor was developed in this study aiming to achieve dynamic matching between speed and feed rate, thereby reducing impurity content and cane loss during harvesting. An optimal control strategy between feed rate and rotational speed was established using impurity content and cane loss as indicators. A variable universe fuzzy multi-parameter adaptive PID (VUFMA-PID) control method was proposed and modeled in Simulink. Compared with conventional PID and fuzzy PID, the VUFMA-PID achieved the shortest steady-state response time, 0.32 s and 0.26 s faster than PID and fuzzy PID, with both steady-state error and maximum overshoot reduced to zero. Field experiments were conducted under different feed rate fluctuation orders, with fixed extractor speed and manual adjustment speed based on operator experience used as control groups. The results indicated that, compared to manual and constant mode, the average power consumption of the automatic control mode was reduced by 17.44 % and 30.40 % respectively. The average impurity content was 4.00 %, which decreased by 23.58 % and 10.71 %. The average cane loss was 1.89 %, which decreased by 25.01 % and 28.52 %. The developed automatic control system effectively adapts to varying feed rates and significantly improves harvesting quality. It provides a feasible solution and theoretical support for intelligent control in mechanized sugarcane harvesting.
在甘蔗机械化采收过程中,根据进料速率实时调节抽提器转速是降低杂质含量和减少甘蔗损失的关键。本研究开发了一种甘蔗收获机抽采机自动控制系统,实现速度与进料速度的动态匹配,从而减少收获过程中的杂质含量和甘蔗损失。以杂质含量和甘蔗损失为指标,建立了进料速率与转速的最优控制策略。提出了一种变域模糊多参数自适应PID (VUFMA-PID)控制方法,并在Simulink中建模。与传统PID和模糊PID相比,VUFMA-PID的稳态响应时间最短,分别比PID和模糊PID快0.32 s和0.26 s,且稳态误差和最大超调量均降至零。在不同进料速率波动顺序下进行现场实验,以固定的提取速度和根据操作人员经验手动调节速度作为对照组。结果表明,与手动和恒定模式相比,自动控制模式的平均功耗分别降低了17.44%和30.40%。平均杂质含量为4.00%,分别下降23.58%和10.71%。甘蔗平均损失率为1.89%,比上年分别下降25.01%和28.52%。开发的自动控制系统能有效适应不同进料速率,显著提高收获质量。为甘蔗机械化采收智能化控制提供了可行方案和理论支持。
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引用次数: 0
Quantifying the impact of pruning on young cocoa trees using a functional-structural plant model 使用功能-结构植物模型量化修剪对可可树幼树的影响
IF 8.9 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2026-03-15 Epub Date: 2026-02-04 DOI: 10.1016/j.compag.2026.111531
Ambra Tosto , Alejandro Morales , Niels P.R. Anten , Pieter A. Zuidema , Jochem B. Evers
Pruning affects tree functioning by removing biomass and triggering compensatory responses. Functional-structural plant (FSP) models, combining three-dimensional plant architecture with physiological processes, are suitable tools to study pruning effects. We present and evaluate the first FSP model for cocoa trees and we simulate pruning impact on young cocoa tree functioning.
We performed two experiments: a parametrization experiment, assessing branching responses to pruning treatments (heading and thinning); and an evaluation experiment measuring the pruning effects on stem radius, leaf number and crown diameter of cocoa trees.
We developed an FSP model that simulates tree growth as a result of the interaction between physiological processes, tree architecture and pruning-induced changes in branching patterns. Bud break is simulated stochastically, based on bud position and pruning interventions and was parameterized with field observations. The evaluation experiment was replicated in silico to evaluate model predictions and quantify the effect of pruning on tree functioning.
Our model captured the immediate effects of pruning on tree structure and partially simulated the compensatory response in leaf production observed in the experiment. In the simulations, pruning reduced total light interception. The simulated mean light interception per unit leaf area was increased in one treatment. However, this advantage was quickly lost due to induced branch production.
Our model is a novel tool to study the impact of pruning, as it explicitly simulates tree architecture and pruning-induced responses. Our results highlight the necessity of dynamic simulations to understand pruning impact.
修剪通过去除生物量和触发补偿反应来影响树木的功能。功能结构植物(FSP)模型将三维植物结构与生理过程相结合,是研究修剪效果的合适工具。我们提出并评估了可可树的第一个FSP模型,并模拟了修剪对年轻可可树功能的影响。我们进行了两个实验:一个参数化实验,评估分枝对修剪处理(抽穗和间伐)的反应;并进行了评价试验,测定了修剪对可可树茎径、叶数和冠径的影响。我们开发了一个FSP模型,模拟了生理过程、树木结构和修剪诱导的分支模式变化之间相互作用的结果。基于芽位和修剪干预随机模拟芽断,并采用田间观测参数化。评估实验在计算机上重复,以评估模型预测并量化修剪对树木功能的影响。我们的模型捕捉了修剪对树木结构的直接影响,并部分模拟了实验中观察到的叶片生产的补偿反应。在模拟中,修剪减少了总光截获。单次处理提高了单位叶面积模拟平均截光量。然而,由于诱导分支生产,这种优势很快就失去了。我们的模型是一个研究修剪影响的新工具,因为它明确地模拟了树木的结构和修剪引起的反应。我们的研究结果强调了动态模拟对理解修剪影响的必要性。
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引用次数: 0
Autonomous obstacle avoidance and path planning for mobile robots in orchard environments combining with map construction and positioning methods 结合地图构建与定位方法的果园环境移动机器人自主避障与路径规划
IF 8.9 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2026-03-15 Epub Date: 2026-02-04 DOI: 10.1016/j.compag.2026.111514
Zhiyan Liang , Luhan Wang , Hexiang Wang , Baohua Zhang , Chengliang Liu
Autonomous navigation of robots primarily relies on environment mapping, localization, path planning, and obstacle avoidance. However, when operating in large-scale and complex orchard environments over extended periods, robots often suffer from mapping drift and accumulated localization errors, posing significant challenges to perception and path planning. This study presents a multi-sensor fusion hardware platform specifically designed for agricultural orchard settings. Based on this platform, an enhanced FAST-LIO2 framework is proposed, incorporating loop closure detection and factor graph optimization to reduce point cloud matching errors and obtain a more accurate prior map. Building on the improved FAST-LIO2, a relocalization module based on the Normal Distributions Transform (NDT) point cloud matching algorithm is introduced to ensure more precise pose estimation. The 3D point cloud map is then processed using methods such as Statistical Outlier Removal (SOR) filtering and pass-through filtering before being projected into a 2D grid map. Path planning is subsequently performed using the RRT* and Timed Elastic Band (TEB) algorithms, leveraging the 2D map and real-time relocalization data. The proposed autonomous navigation system is evaluated in various orchard environments. The integration of backend optimization and relocalization significantly enhanced system performance, reducing point cloud matching errors by up to 93% in large-scale uneven terrains, with a root mean square error (RMSE) as low as 0.77 m. Moreover, the global planner RRT* and local planner TEB demonstrated the ability to generate safer and smoother trajectories. The results validate the safety and robustness of the proposed method, highlighting its promising application in autonomous navigation for orchard scenarios.
机器人自主导航主要依赖于环境映射、定位、路径规划和避障。然而,当机器人在大规模和复杂的果园环境中长时间工作时,往往会遭受映射漂移和累积的定位错误,给感知和路径规划带来重大挑战。本研究提出了一个专门为农业果园设置设计的多传感器融合硬件平台。在此基础上,提出了一种增强的FAST-LIO2框架,结合闭环检测和因子图优化,减少点云匹配误差,获得更准确的先验图。在改进的FAST-LIO2的基础上,引入了基于正态分布变换(NDT)点云匹配算法的重新定位模块,以确保更精确的姿态估计。然后在投影到2D网格图之前,使用诸如统计离群值去除(SOR)滤波和通过滤波等方法对3D点云图进行处理。随后使用RRT*和定时弹性带(TEB)算法执行路径规划,利用2D地图和实时重新定位数据。在不同的果园环境中对所提出的自主导航系统进行了评估。后端优化和重新定位的集成显著提高了系统性能,在大规模不平坦地形中,点云匹配误差降低了93%,均方根误差(RMSE)低至0.77 m。此外,全局规划器RRT*和局部规划器TEB显示了生成更安全、更平滑轨迹的能力。结果验证了该方法的安全性和鲁棒性,突出了其在果园场景自主导航中的应用前景。
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引用次数: 0
Mathematical modeling of tomato ripening: Formulations, validation, and postharvest decision support — A review 番茄成熟的数学模型:配方、验证和采后决策支持-综述
IF 8.9 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2026-03-15 Epub Date: 2026-02-07 DOI: 10.1016/j.compag.2026.111519
Drupadi Ciptaningtyas , Nadia Fitriani , Ahmad Thoriq , Lukito Hasta Pratopo , Takeo Shiina
Tomato ripening integrates color development, texture softening, respiration, and ethylene dynamics, under postharvest conditions. This review consolidates mathematical and simulation models that describe quality change over time using explicit variables, parameters, and equations. We organize five model families for tomato ripening: (i) empirical sigmoids; (ii) temperature-dependent kinetics (Arrhenius/Q10, thermal-time); (iii) mechanistic ODE/PDE mass-balance; (iv) survival/time-to-event endpoints; and (v) hybrid/state-space formulations. We align observables (e.g., CIE a*, firmness, headspace gases), with estimation targets, and outline leakage-safe validation (grouped splits, external tests), uncertainty reporting, and reproducible practices. Key contributions include a practitioner-oriented Model-Choice Matrix that links objectives and data constraints to appropriate model classes, and consolidated guidance on sensitivity analysis, calibration and transportability to supports postharvest decision support across cultivars, seasons, and packaging regimes. The result is a structured roadmap for selecting, validating, and reporting ripening models to enable reliable deployment in postharvest operations and embedded into emerging digital decision support systems.
在收获后的条件下,番茄成熟整合了颜色发展,质地软化,呼吸和乙烯动力学。这篇综述整合了使用显式变量、参数和方程描述质量随时间变化的数学和模拟模型。我们组织了番茄成熟的五个模型族:(i)经验s型;(ii)温度依赖动力学(Arrhenius/Q10,热时间);(iii)机械式ODE/PDE质量平衡;(iv)生存/到事件终点的时间;(v)混合/状态空间公式。我们将可观测值(例如,CIE a*,硬度,顶空气体)与估计目标对齐,并概述泄漏安全验证(分组分裂,外部测试),不确定性报告和可重复性实践。主要贡献包括面向从业者的模型选择矩阵,该矩阵将目标和数据约束与适当的模型类别联系起来,以及关于敏感性分析、校准和可移植性的综合指导,以支持跨品种、季节和包装制度的采后决策支持。结果是一个结构化的路线图,用于选择、验证和报告成熟模型,以便在采收后操作中可靠地部署,并嵌入到新兴的数字决策支持系统中。
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引用次数: 0
Apple damages classification: Using the best convolutional neural network to discard low surface quality fruit in packing plants 苹果损伤分类:采用最佳卷积神经网络对包装厂表面质量较低的水果进行丢弃
IF 8.9 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2026-03-15 Epub Date: 2026-02-03 DOI: 10.1016/j.compag.2026.111489
Martín Molina , Julio Godoy , John W. Castro , Vladimir Riffo
In an era where global apple production exceeds 80 million tons annually, ensuring high fruit quality is essential for consumer satisfaction and economic success. However, surface defects like wounds, rot, and sunburn cause millions in losses through manual inspections, which are often subjective, inefficient, and costly in packing plants. This study fills important gaps in automated quality control by using advanced deep learning to classify apple damages with unmatched efficiency and industrial usefulness. Through a review of the literature and various web repositories that include information up to 2025, we constructed a novel, balanced dataset from scratch, capturing diverse real-world defects that were underrepresented in previous studies. We rigorously evaluated nine advanced convolutional neural network architectures –including VGG16/19, multiple ResNet variants, and YOLOv9c for classifying different types of damage in apples– before optimizing the top-performing ResNet101 through systematic hyperparameter tuning. Achieving an impressive 95% accuracy on unseen data for damage classification and 81% for preliminary detection, our optimized model aims to reduce waste and boost supply chain efficiency, setting a new standard for sustainable agriculture. Moving forward, this framework opens the door to multimodal integrations such as hyperspectral imaging and robotic sorting, adaptable to other fruits, transforming post-harvest processing and inspiring further innovations in AI-driven food security.
在全球苹果产量每年超过8000万吨的时代,确保高质量的水果对消费者满意和经济成功至关重要。然而,表面缺陷,如伤口、腐烂和晒伤,通过人工检查造成数百万美元的损失,这些检查通常是主观的、低效的、昂贵的。这项研究填补了自动化质量控制的重要空白,利用先进的深度学习对苹果损伤进行分类,具有无与伦比的效率和工业实用性。通过对文献和各种网络存储库的回顾,包括到2025年的信息,我们从头开始构建了一个新的,平衡的数据集,捕获了在以前的研究中未被充分代表的各种现实世界缺陷。我们严格评估了九种先进的卷积神经网络架构——包括VGG16/19、多种ResNet变体和用于分类苹果不同类型损伤的YOLOv9c——然后通过系统超参数调整优化了表现最好的ResNet101。我们的优化模型在未见数据上实现了令人印象深刻的95%的损伤分类准确率和81%的初步检测准确率,旨在减少浪费,提高供应链效率,为可持续农业树立新标准。展望未来,该框架为多模式整合打开了大门,如高光谱成像和机器人分拣,适用于其他水果,改变收获后加工,并激发人工智能驱动的粮食安全方面的进一步创新。
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引用次数: 0
CALDS-RTDETR: a robust forestry pest detection model for small targets in complex environments CALDS-RTDETR:复杂环境中小目标的鲁棒林业害虫检测模型
IF 8.9 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2026-03-15 Epub Date: 2026-02-03 DOI: 10.1016/j.compag.2026.111482
Wenjun Luo , Haiyan Zhang , Limeng Xu
The timely and accurate detection of forest pests is crucial for protecting ecosystems and maintaining ecological balance, as it directly affects the efficacy of pest control measures. Although deep learning is widely used for forest pest detection, challenges remain due to the small size of pests, complex environments, and their diverse morphologies across developmental stages. Traditional detection models often underperform in these environments. To overcome these challenges, we propose CALDS-RTDETR, an enhanced RT-DETR model designed specifically for detecting small pests in complex forest environments. We evaluated the model on a real-world dataset comprising 15 pest species. Compared to the RT-DETR-R18 baseline, CALDS-RTDETR achieved a precision of 75.5%, recall of 61.8%, mAP0.5 of 63.8%, mAP0.75 of 49.7%, and mAP0.5:0.95 of 45.3%. It also attained an mAPs of 8.9%, mAPm of 31.1%, and mAPl of 54.4%, while maintaining a compact model size of 20.10 M parameters. These results show the model’s enhanced performance in complex forest environments, demonstrating the significant potential of CALDS-RTDETR for pest monitoring and practical deployment. Future work will expand the model to include additional species and optimize it for real-world applications.
及时、准确地发现森林有害生物,对保护生态系统、维护生态平衡至关重要,直接影响到防治措施的效果。尽管深度学习被广泛用于森林害虫检测,但由于害虫的体积小,环境复杂,以及它们在发育阶段的不同形态,仍然存在挑战。传统的检测模型在这些环境中往往表现不佳。为了克服这些挑战,我们提出了CALDS-RTDETR模型,这是一种增强的RT-DETR模型,专门用于在复杂的森林环境中检测小型害虫。我们在包含15种害虫的真实数据集上评估了该模型。与RT-DETR-R18基线相比,CALDS-RTDETR的准确率为75.5%,召回率为61.8%,mAP0.5为63.8%,mAP0.75为49.7%,mAP0.5:0.95为45.3%。在保持20.10 M参数的紧凑模型尺寸的同时,该模型的map值为8.9%,mAPm值为31.1%,mAPl值为54.4%。这些结果表明,该模型在复杂的森林环境中具有更高的性能,显示了CALDS-RTDETR在有害生物监测和实际部署方面的巨大潜力。未来的工作将扩展模型,包括更多的物种,并对其进行优化,以适应现实世界的应用。
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引用次数: 0
Exploring the application mode of artificial light sources in solar greenhouses based on functional-structural plant model 基于功能-结构植物模型的人工光源在日光温室中的应用模式探索
IF 8.9 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2026-03-15 Epub Date: 2026-01-27 DOI: 10.1016/j.compag.2026.111486
Demin Xu , Xinguang Zhang , Michael Henke , Liang Wang , Jinyu Zhu , Fang Ji , Yuntao Ma
Light is essential for photosynthesis and directly influences crop yield. During winter and spring, limited natural light makes well-managed supplemental lighting crucial for greenhouse production. Traditional lighting design methods, which rely on manual measurements, are inefficient for optimizing light distribution and energy use. This study proposes a 3D simulation framework to optimize supplemental lighting in greenhouses. The virtual model incorporates the spectral power distribution (SPD) and propagation characteristics of light-emitting diode (LED) modules, the optical properties of greenhouse materials, and the greenhouse’s geometric structure to simulate artificial light environments. Validation of the model demonstrated high accuracy, with an R2 of 0.982 and a RMSE of 14.38 μmol·m−2·s−1. Based on simulation outputs, the spatial layout of supplemental lighting modules was determined, and the hourly light integral (HLI) was used as a control variable to develop a time-segmented lighting strategy. For this study, the production performance of tomato was evaluated under four lighting treatments: HLI-driven fixed supplementary lighting (HFS), HLI-driven mobile supplementary lighting (HMS), nighttime timed supplementary lighting (TS), and only natural light (CK). The optimal lighting configuration was achieved when fixtures were positioned 1.7 m above the planting troughs. Tomato yield per plant under the HFS treatment increased by 25.2% compared to CK and by 21.6% compared to TS. While HMS showed higher energy-use efficiency and quantum yield, its yield improvement was relatively modest. Overall, HFS enhanced light energy-use efficiency and quantum yield by 5.5% and 55.3%, respectively, compared to TS. This study provides a practical decision-support tool for greenhouse lighting management, enabling data-driven optimization of light distribution and energy use. The proposed 3D modeling framework not only improves light-thermal synergy but also offers strong scalability for different greenhouse structures and crops. By integrating physical modeling and intelligent control, it contributes to the development of sustainable and smart agricultural production systems.
光对光合作用至关重要,并直接影响作物产量。在冬季和春季,有限的自然光使得管理良好的补充照明对温室生产至关重要。传统的照明设计方法依赖于人工测量,在优化光分布和能源使用方面效率低下。本研究提出了一个三维模拟框架来优化温室的补充照明。该虚拟模型结合了发光二极管(LED)模块的光谱功率分布(SPD)和传播特性、温室材料的光学特性以及温室的几何结构来模拟人工光环境。经验证,该模型具有较高的准确度,R2为0.982,RMSE为14.38 μmol·m−2·s−1。基于仿真输出,确定了补充照明模块的空间布局,并以小时光照积分(HLI)为控制变量,制定了分时照明策略。本研究对4种光照处理下番茄的生产性能进行了评价:hli驱动的固定补光(HFS)、hli驱动的移动补光(HMS)、夜间定时补光(TS)和纯自然光(CK)。当灯具放置在种植槽上方1.7米处时,实现了最佳照明配置。HFS处理的单株番茄产量比CK提高了25.2%,比TS提高了21.6%,而HMS处理的能量利用效率和量子产量均有所提高,但增产幅度相对较小。总体而言,与TS相比,HFS的光能利用效率和量子产率分别提高了5.5%和55.3%。该研究为温室照明管理提供了实用的决策支持工具,实现了数据驱动的光分配和能源利用优化。提出的三维建模框架不仅提高了光热协同,而且对不同的温室结构和作物具有很强的可扩展性。通过整合物理建模和智能控制,它有助于可持续和智能农业生产系统的发展。
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引用次数: 0
A stem-leaf segmentation method of maize plant point cloud based on region growing and leaf phenotypic parameters measurement 基于区域生长和叶片表型参数测量的玉米植株点云茎叶分割方法
IF 8.9 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2026-03-15 Epub Date: 2026-01-27 DOI: 10.1016/j.compag.2026.111474
Mengjie Liu , Yanlong Miao , Yida Li , Wenyi Sheng , Ruicheng Qiu , Minjuan Wang , Han Li , Man Zhang
<div><div>Maize leaf phenotypic parameters effectively reflect the photosynthesis and growth information of maize plants, which is crucial for breeding superior maize varieties. Current challenges include separating stems and leaves from a single maize plant and accurately measuring the phenotypic parameters of maize leaves. This study proposes a stem-leaf segmentation method based on region growing, incorporating adaptive cuboid region growing and slice region growing, alongside techniques for measuring phenotypic parameters of maize leaves. First, terrestrial laser scanning (TLS) was employed to obtain three-dimensional (3D) point cloud data of maize at the five-leaf (V5) and six-leaf (V6) stages. The point cloud data were then preprocessed to isolate single plant point clouds. Next, the maize point clouds were pre-segmented into three categories—central point clouds, partially expanded leaf point clouds, and unexpanded leaf point clouds—using center-edge segmentation, statistical filtering, and leaf classification. Adaptive cuboid region growing was applied to segment the unexpanded leaf point clouds, while slice region growing was used for partially expanded leaves, with Euclidean clustering optimizing the leaf point clouds, completing the segmentation process. Finally, various methods—including clustering counting, point-to-point distance accumulation, point-to-line distance, vector angle, point cloud triangulation, and triangle area accumulation—were utilized to automatically measure the number of maize leaves, leaf length, leaf width, leaf inclination angle, and leaf area. Compared with other point cloud stem-leaf segmentation methods based on geometric features and common 3D point cloud deep learning models (PointNet++, PointTransformer), the method proposed in this paper performs better. The segmentation results indicated that the Precision (<em>P</em>), Recall (<em>R</em>) and <em>F<sub>1</sub></em>-Score (<em>F<sub>1</sub></em>) for stem-leaf segmentation of all maize plants at the V5 stage exceeded 92.00%, with average values of 96.87%, 97.08%, and 96.97%, respectively. At the V6 stage, <em>P</em>, <em>R</em>, and <em>F<sub>1</sub></em> exceeded 95.00%, with averages of 97.73%, 97.01%, and 97.67%, respectively. The algorithm accurately measured the number of leaves at the V5 stage, while a small error was noted at the V6 stage, yielding a percentage error (<em>PE</em>) of 0.93%. Measurement accuracy for leaf length, width, and area at both growth stages was greater than 93.80%, 92.80%, and 89.50%, respectively. Measurement accuracy for leaf inclination angle was lower, at 82.00% and 88.02% for the V5 and V6 stages, respectively. The proposed methods for stem-leaf segmentation and measurement of leaf phenotypic parameters are fast and accurate, providing technical support for high-quality breeding and intelligent management of maize. Our point cloud data of maize and source code is available from https://github.com/lmj-cau/stem-leaf-se
玉米叶片表型参数有效地反映了玉米植株的光合作用和生长信息,对选育优良玉米品种至关重要。目前的挑战包括从单个玉米植株中分离茎和叶,以及准确测量玉米叶片的表型参数。本研究提出了一种基于区域生长的茎叶分割方法,结合自适应长方区生长和切片区生长,以及测量玉米叶片表型参数的技术。首先,利用地面激光扫描技术(TLS)获取玉米五叶期(V5)和六叶期(V6)的三维点云数据;然后对点云数据进行预处理以分离单个植物点云。然后,利用中心边缘分割、统计滤波和叶片分类,将玉米点云预分割为中心点云、部分展开的叶点云和未展开的叶点云三类。采用自适应长方体区域生长对未展开的叶点云进行分割,采用切片区域生长对部分展开的叶点云进行分割,利用欧几里得聚类对叶点云进行优化,完成分割过程。最后,利用聚类计数、点对点距离积累、点对线距离积累、向量角、点云三角测量和三角面积积累等方法,自动测量玉米叶片数、叶片长度、叶片宽度、叶片倾角和叶片面积。与其他基于几何特征的点云茎叶分割方法和常用的三维点云深度学习模型(PointNet++、PointTransformer)相比,本文方法的分割效果更好。分割结果表明,V5期所有玉米茎叶分割的精密度(P)、召回率(R)和F1- score (F1)均超过92.00%,平均值分别为96.87%、97.08%和96.97%。在V6阶段,P、R和F1均超过95.00%,平均值分别为97.73%、97.01%和97.67%。该算法在V5期测量叶片数准确,而在V6期误差较小,百分比误差(PE)为0.93%。两个生育期叶片长度、宽度和面积的测量精度分别大于93.80%、92.80%和89.50%。叶片倾角的测量精度较低,V5和V6阶段分别为82.00%和88.02%。所提出的茎叶分割和叶片表型参数测量方法快速准确,为玉米优质育种和智能化管理提供技术支持。我们的玉米点云数据和源代码可从https://github.com/lmj-cau/stem-leaf-segmentation.git获得。
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引用次数: 0
AMGAN: A multimodal generative adversarial network for near-daily alfalfa multispectral image reconstruction AMGAN:用于近每日紫花苜蓿多光谱图像重建的多模态生成对抗网络
IF 8.9 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2026-03-15 Epub Date: 2026-01-23 DOI: 10.1016/j.compag.2026.111468
Tong Yu , Jiang Chen , Jerome H. Cherney , Zhou Zhang
Accurate and temporally consistent multispectral observations are essential for monitoring alfalfa yield and quality, given its frequent harvest cycles and rapid regrowth. However, optical satellite imagery is often constrained by cloud cover, revisit intervals, and sensor availability. To overcome these limitations, we propose a novel Alfalfa Multimodal Generative Adversarial Network (AMGAN) designed for near-daily multispectral image reconstruction. Unlike conventional image-to-image or spatiotemporal fusion methods that overlook crop-specific characteristics, are restricted to observed timestamps, or depend heavily on dense temporal series, AMGAN leverages multisource (Landsat-8/9, Sentinel-1, PlanetScope) and multimodal (climate, geographic, temporal) information within an adversarial learning paradigm. This enables high-quality image generation from minimal inputs. Extensive experiments across five major alfalfa-producing states in the United States (2022–2024) show that AMGAN consistently surpasses four state-of-the-art (SOTA) deep learning baselines. It achieves higher reconstruction accuracy across all spectral bands, with pronounced gains in red-edge and near-infrared (NIR) regions critical for vegetation assessment. Multisource integration and multimodal cues enhance robustness, ensuring reliable performance under diverse observation scenarios. The reconstructed imagery was subsequently evaluated in alfalfa yield and quality prediction tasks. Results demonstrated high predictive accuracy for dry matter yield (DM) in the cross validation (CV) experiment with a coefficient of determination (R2) of 0.80, and moderate correlations for selected quality traits such as crude protein (CP), non-fiber carbohydrates (NFC), and minerals, while nutritive value traits tied to complex biochemical processes remained more challenging. Overall, this study underscores the potential of multimodal adversarial learning to bridge observational gaps in alfalfa monitoring. The proposed framework provides a scalable, crop-specific approach for generating temporally dense imagery, supporting precision management for biomass-related and proximate quality traits, while performance for digestibility traits remains limited.
鉴于苜蓿收获周期频繁和再生迅速,准确和时间一致的多光谱观测对监测其产量和质量至关重要。然而,光学卫星图像经常受到云层覆盖、重访间隔和传感器可用性的限制。为了克服这些限制,我们提出了一种新的苜蓿多模态生成对抗网络(AMGAN),用于近每日多光谱图像重建。与传统的图像到图像或时空融合方法不同,AMGAN在对抗学习范式中利用多源(Landsat-8/9, Sentinel-1, PlanetScope)和多模态(气候,地理,时间)信息。传统的图像到图像或时空融合方法忽略了作物的特定特征,局限于观测到的时间标记,或严重依赖于密集的时间序列。这样可以从最小的输入生成高质量的图像。在美国五个主要的苜蓿生产州(2022-2024)进行的广泛实验表明,AMGAN始终超过四个最先进的(SOTA)深度学习基线。它在所有光谱波段都实现了更高的重建精度,在对植被评估至关重要的红边和近红外(NIR)区域有明显的提高。多源集成和多模态线索增强了鲁棒性,确保了在不同观测场景下的可靠性能。重建图像随后在紫花苜蓿产量和质量预测任务中进行了评估。结果表明,在交叉验证(CV)实验中,干物质产量(DM)的预测精度较高,决定系数(R2)为0.80,与粗蛋白质(CP)、非纤维碳水化合物(NFC)和矿物质等部分品质性状的相关性中等,而与复杂生化过程相关的营养价值性状仍更具挑战性。总的来说,这项研究强调了多模式对抗性学习在苜蓿监测中弥合观察差距的潜力。提出的框架提供了一种可扩展的、特定于作物的方法来生成时间密集的图像,支持对生物量相关和近似质量性状的精确管理,而消化率性状的性能仍然有限。
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Computers and Electronics in Agriculture
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