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MT-WavYOLO: bridging multi-task learning and 3D frustum fusion for non-destructive robotic harvesting of occluded orchard fruits MT-WavYOLO:桥接多任务学习和三维截锥体融合的非破坏性机器人收获闭塞的果园果实
IF 8.9 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2025-12-23 DOI: 10.1016/j.compag.2025.111335
Heng Fu , Tao Li , Qingchun Feng , Liping Chen
One of the key challenges in orchard robots is accurately localizing occluded fruits in complex environments, especially when the fruit targets are split into multiple isolated regions within images. Traditional single-task network models exhibit limited capability in discerning fragmented targets that belong to the same fruit but are segmented into multiple spatially isolated regions within images. In addition, fruit localization largely relies on high-cost sensors or additional 3-D localization algorithms. To address this issue, we propose a fruit detection and centroid localization method based on a Multi-Task Wavelet-Enhanced YOLO (MT-WavYOLO) to enhance the success rate of robotic operations on occluded fruit targets. Initially, a lightweight semantic segmentation branch was integrated into the YOLOv8 backbone network to precisely segment exposed fruits, while retaining the original object detection branch to fully identify occluded fruits. To address the diminished sensitivity of conventional models to geometric profiles of heavily occluded fruits, a novel feature fusion module, C2f_WTConv, was designed by incorporating wavelet transform convolution, leveraging the multi-frequency robustness of wavelet representations to enhance the model’s feature extraction capabilities under complex orchard occlusions. Subsequently, a 3D frustum-based point cloud processing method was proposed, combining the detection results from MT-WavYOLO with the semantic segmentation masks to accurately localize occluded fruits. MT-WavYOLO demonstrated a 2%, 1.5%, and 2.2% improvement in Precision, Recall, and mAP50, respectively, on our custom-built dataset compared to the latest YOLOv10s model. Semantic segmentation performance, measured by Intersection over Union (IoU) and Accuracy, was improved by 5.2% and 3.8%, respectively, over the state-of-the-art Deeplabv3+ network. Compared to the adapted multi-task network YOLOP, MT-WavYOLO achieved a 3.4% increase in mAP50 and a 2.7% improvement in IoU. In addition, MT-WavYOLO has a compact footprint of 10.2 M parameters and achieves approximately 27 FPS in real-time inference, thereby meeting the requirements of robotic harvesting operations. The proposed localization method was evaluated through 600 fruit localization tests using six different RGB-D cameras in an orchard environment. The average experimental results demonstrated that the centroid localization and radius estimation errors were reduced by 42.5%, 73.7%, 16.17%, and 11.25%, respectively, compared to traditional 3D bounding box methods and our previous approaches. These results indicate that the MT-WavYOLO combined with the frustum-based method significantly enhances the accuracy of apple localization under complex orchard conditions using consumer-grade sensors, providing a strong practical foundation for non-destructive robotic harvesting.
果园机器人面临的关键挑战之一是在复杂环境中准确定位被遮挡的水果,特别是当水果目标在图像中被分割成多个孤立的区域时。传统的单任务网络模型在识别属于同一水果但在图像中被分割成多个空间孤立区域的碎片目标方面能力有限。此外,水果定位很大程度上依赖于高成本的传感器或额外的三维定位算法。为了解决这一问题,我们提出了一种基于多任务小波增强YOLO (MT-WavYOLO)的水果检测和质心定位方法,以提高机器人对被遮挡水果目标的操作成功率。最初,在YOLOv8骨干网中集成了一个轻量级的语义分割分支,对暴露的水果进行精确分割,同时保留原有的目标检测分支,对遮挡的水果进行充分识别。为了解决传统模型对严重遮挡水果几何轮廓敏感性降低的问题,设计了一种新的特征融合模块C2f_WTConv,该模块结合小波变换卷积,利用小波表示的多频鲁棒性来增强模型在复杂果园遮挡下的特征提取能力。随后,提出了一种基于三维果体的点云处理方法,将MT-WavYOLO的检测结果与语义分割蒙版相结合,对被遮挡的水果进行精确定位。与最新的YOLOv10s模型相比,在我们定制的数据集上,MT-WavYOLO在Precision、Recall和mAP50方面分别提高了2%、1.5%和2.2%。通过Intersection over Union (IoU)和Accuracy测量的语义分割性能,与最先进的Deeplabv3+网络相比,分别提高了5.2%和3.8%。与适应的多任务网络yolo相比,MT-WavYOLO的mAP50提高了3.4%,IoU提高了2.7%。此外,MT-WavYOLO具有10.2 M参数的紧凑占用空间,在实时推理中达到约27 FPS,从而满足机器人收获操作的要求。通过在果园环境中使用6种不同的RGB-D相机进行600次水果定位测试,对所提出的定位方法进行了评估。实验结果表明,该方法的质心定位误差和半径估计误差分别比传统的三维边界盒方法和之前的方法降低了42.5%、73.7%、16.17%和11.25%。这些结果表明,MT-WavYOLO结合基于果体的方法显著提高了使用消费级传感器在复杂果园条件下定位苹果的精度,为非破坏性机器人收获提供了坚实的实践基础。
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引用次数: 0
Comparative analysis of map-based site-specific mouldboard ploughing in silage maize cultivation 基于地图的青贮玉米定点模板耕作的比较分析
IF 8.9 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2025-12-23 DOI: 10.1016/j.compag.2025.111356
Yongjing Wang, Ajit Borundia, Abdul M. Mouazen
To eliminate soil compaction, farmers typically apply uniform, but aggressive tillage practices at maximum speed and depth. However, such an approach cannot efficiently address the spatial variability of soil compaction levels throughout a field. Therefore, site-specific tillage (SST) is expected to offer economic and environmental benefits by targeting compacted zones or layers. This study aims to evaluate, based on field experiments, the agronomic, economic and environmental performance of site-specific mouldboard ploughing (SS-MBP), using soil packing density (PD) maps measured by an on-line multi-sensor platform as input data for tillage recommendation calculations in two sandy-textured fields in Belgium both with silage maize. Each field was divided into three management zones having different PD, each of which was assigned a varying tillage speed. Stripe experiments were then carried out in these fields to compare the advantages and disadvantages of the SS-MBP treatments with uniform mouldboard ploughing (U-MBP). Results of this experiment showed that SS-MBP outperformed U-MBP in terms of reducing fuel consumption and CO2 emissions, increasing yield, and improving gross margins. SS-MBP treatments reduced fuel consumption by 15.4% to 25.9%, increased yield by 1.3% to 3.5% and improved gross margins by 23.25 to 59.74 €/ha, compared to the U-MBP treatment in the two field experiments. Crucially, this study validates variable speed control of MBP as an acceptable ploughing practice by farmers than the variable depth approach proposed in earlier simulations. While these findings confirm the viability of SS-MBP for silage maize in sandy soils with low-to-medium degree of compaction, broader validation of the concept across diverse soil textures and crops is required to generalize the results reported in this work.
为了消除土壤压实,农民通常采用均匀但积极的耕作方法,以最大速度和深度耕作。然而,这种方法不能有效地解决整个农田土壤压实水平的空间变异性。因此,定点耕作(SST)有望通过针对压实区或层提供经济和环境效益。本研究旨在基于田间试验,利用在线多传感器平台测量的土壤包装密度(PD)图作为推荐耕作计算的输入数据,评估特定地点模板耕作(SS-MBP)的农学、经济和环境性能。每个田被划分为三个管理区,每个管理区具有不同的PD,每个管理区被分配不同的耕作速度。然后在这些大田进行了条条试验,比较了SS-MBP处理与U-MBP处理的优缺点。实验结果表明,SS-MBP在降低油耗和二氧化碳排放、提高产量和提高毛利率方面优于U-MBP。与两次现场试验中的U-MBP处理相比,SS-MBP处理将燃料消耗降低了15.4%至25.9%,产量提高了1.3%至3.5%,毛利率提高了23.25至59.74欧元/公顷。至关重要的是,本研究验证了MBP的变速控制是农民可接受的耕作实践,而不是早期模拟中提出的变深度方法。虽然这些发现证实了SS-MBP在低至中等压实程度的沙质土壤中青贮玉米的可行性,但需要对不同土壤质地和作物的概念进行更广泛的验证,以推广本工作中报告的结果。
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引用次数: 0
A deep learning–enhanced low-cost cylindrical anemometer for combine harvester cleaning systems 一种用于联合收割机清洁系统的深度学习增强低成本圆柱形风速计
IF 8.9 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2025-12-23 DOI: 10.1016/j.compag.2025.111345
Zhenwei Liang , Qian Jiang
Accurate measurement of airflow characteristics within the cleaning system of a combine harvester is essential for achieving optimal cleaning performance. However, existing anemometers used to study airflow characteristics in the cleaning system can only measure velocity based on empirical formulas, require precise installation, and rely on oversized and expensive signal processing systems, which limit their practical applicability. To address these limitations, this study proposes a cylindrical anemometer equipped with six pressure modules evenly distributed around its surface, coupled with a deep learning framework integrating data pre-processing and an optimized residual deep neural network (Res-DNN). A prototype, consisting of a probe section, an extension section, and a hub, was designed, and airflow characteristics at each measurement point within the cleaning system were analyzed under varying working parameters. The model with the optimized Res-DNN, comprising five hidden layers (48-96-192-96-48 neurons) with Leaky ReLU activation and Huber Loss optimization, was identified as the optimal structure using wind tunnel training data. Validation results showed average relative errors of 2.1 % for airflow velocity and 0.2° for airflow direction, reducing errors by 95 % compared with a feedforward neural network in the airflow velocity range of 2–16 m s−1. The total response delay, from airflow change to final airflow velocity and direction output, was 289 ms, with an 89.5 % cost reduction. These findings demonstrate that the proposed system offers a low-cost, accurate, and robust solution for airflow monitoring, supporting improved cleaning efficiency and reduced grain loss.
准确测量气流特性在联合收割机的清洗系统是必不可少的,以实现最佳的清洗性能。然而,现有用于研究清洗系统中气流特性的风速表只能根据经验公式测量速度,且需要精确安装,依赖于超大且昂贵的信号处理系统,限制了其实际应用。为了解决这些限制,本研究提出了一种圆柱形风速计,它配备了六个均匀分布在其表面的压力模块,并结合了一个深度学习框架,该框架集成了数据预处理和优化的残差深度神经网络(Res-DNN)。设计了由探头段、延伸段和轮毂组成的样机,分析了不同工作参数下清洗系统内各测点的气流特性。优化后的Res-DNN模型由5个隐藏层(48-96-192-96-48个神经元)组成,具有Leaky ReLU激活和Huber Loss优化,通过风洞训练数据确定为最优结构。验证结果表明,与前馈神经网络相比,在2 ~ 16 m s−1气流速度范围内,风速的平均相对误差为2.1%,气流方向的平均相对误差为0.2°,误差降低了95%。从气流变化到最终气流速度和方向输出的总响应延迟为289 ms,成本降低了89.5%。这些发现表明,所提出的系统为气流监测提供了一种低成本、准确和强大的解决方案,支持提高清洁效率和减少颗粒损失。
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引用次数: 0
A 3D point cloud instance segmentation network for extracting individual trees from complex forest scenes 一种用于从复杂森林场景中提取单株树木的三维点云实例分割网络
IF 8.9 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2025-12-23 DOI: 10.1016/j.compag.2025.111333
Yijun Zhong, Shuai Liu, Hua Sun
Light detection and ranging (LiDAR) provides an effective means for rapidly acquiring three-dimensional (3D) forest structures, playing a vital role in forest resource inventory and management. However, accurately quantifying tree structural parameters from point cloud data relies on high-precision individual-tree instance segmentation, which faces challenges such as low accuracy, under-segmentation, and over-segmentation in complex forest scenes. To address this, we propose a novel 3D point cloud instance segmentation network designed for complex forest environments. The network employs a sliding window mechanism for data input and integrates a contextual feature enhancement module, breast-height centroid prediction, and adaptive clustering strategy to significantly improve individual-tree instance segmentation accuracy. Evaluated on public datasets and self-constructed datasets, our proposed network achieves outstanding performance, with an average precision (AP) of 63.28 %, AP50 of 71.69 %, and AP25 of 80.54 %. Comparative experiments with traditional individual-tree segmentation algorithms and current mainstream deep learning-based methods (SoftGroup, ForAINet, and TreeLearn) demonstrate that our method outperforms competitors in correct detection, omission, and commission, while excelling in tree canopy boundary delineation and suppression of under- and over-segmentation. Ablation studies further confirm the critical contributions of the contextual feature enhancement module and adaptive clustering to segmentation accuracy. This study not only effectively addresses the challenges of point cloud segmentation in complex forest scenes but also provides reliable technical support for automated forest resource management and ecological monitoring.
光探测与测距(LiDAR)为快速获取三维森林结构提供了有效手段,在森林资源清查与管理中发挥着重要作用。然而,从点云数据中准确量化树木结构参数依赖于高精度的个体-树实例分割,在复杂森林场景中面临精度低、分割不足和过度分割等挑战。为了解决这个问题,我们提出了一种新的三维点云实例分割网络,设计用于复杂的森林环境。该网络采用滑动窗口机制进行数据输入,并集成了上下文特征增强模块、胸围高度质心预测和自适应聚类策略,显著提高了个体树实例分割的准确率。通过对公共数据集和自建数据集的评估,我们提出的网络取得了优异的性能,平均精度(AP)为63.28%,AP50为71.69%,AP25为80.54%。与传统的个体树分割算法和当前主流的基于深度学习的方法(SoftGroup、ForAINet和TreeLearn)的对比实验表明,我们的方法在正确检测、遗漏和分配方面优于竞争对手,同时在树冠边界划分和抑制过分割和欠分割方面表现出色。消融研究进一步证实了上下文特征增强模块和自适应聚类对分割精度的重要贡献。该研究不仅有效解决了复杂森林场景下点云分割的难题,也为森林资源自动化管理和生态监测提供了可靠的技术支持。
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引用次数: 0
Integrated sensing and communication for lettuce water-status monitoring 生菜水分状况监测的集成传感与通信
IF 8.9 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2025-12-23 DOI: 10.1016/j.compag.2025.111370
Ning Yang , Rong Du , Ni Yu , Wanting He , Zhenzhong Wang , Xiao Du , Si Chen
With the rapid development of smart agriculture, the agricultural Internet of Things (Ag-IoT) has gradually established a monitoring system centered on distributed sensing, low-power communication, and intelligent control. However, current solutions underexplore the perceptible characteristics of communication signals, and therefore do not fully utilize their latent potential in environmental perception. This paper targets the demand for crop water monitoring and introduces an integrated sensing and communication (ISAC) approach. This method can achieve non-contact and continuous perception of crop water status by reusing the communication link without altering the existing hardware architecture and frequency band configuration. Taking leafy vegetables such as lettuce as the research object, a prototype system based on a 3 GHz communication link was built. A quantitative mapping model between the water content of plant tissues and the amplitude and phase disturbances they cause to electromagnetic waves was established. A joint optimization mechanism that considers both communication performance and sensing accuracy was proposed to achieve a coordinated configuration between communication quality (BER < 104, SNR ≈ 20 dB, EVM < 8 %) and sensing accuracy (MAE = 2.51 %, R2 = 0.92). Experiments were conducted in controlled environments and production-like scenarios, demonstrating that the method can stably identify the water status of lettuce while ensuring communication quality of service (QoS). The proposed ISAC method is potentially compatible with existing Ag-IoT frequency bands and physical-layer infrastructures, assuming access to pilot/CSI and airtime control. Protocol-level integration with LoRa, Wi-Fi, and NB-IoT is defined as future work It provides a low-cost, high-integration, and easily scalable communication-driven solution for water monitoring in smart agriculture.
随着智慧农业的快速发展,农业物联网(Ag-IoT)逐步建立起以分布式传感、低功耗通信、智能控制为核心的监控体系。然而,目前的解决方案没有充分挖掘通信信号的可感知特性,因此没有充分利用其在环境感知中的潜在潜力。本文针对作物水分监测的需求,介绍了一种集成传感与通信(ISAC)方法。该方法在不改变现有硬件架构和频带配置的情况下,通过复用通信链路,实现对作物水分状态的非接触式连续感知。以生菜等叶类蔬菜为研究对象,建立了基于3ghz通信链路的原型系统。建立了植物组织含水量与其对电磁波的振幅和相位扰动之间的定量映射模型。提出一种兼顾通信性能和感知精度的联合优化机制,实现通信质量(BER < 10−4,信噪比≈20 dB, EVM < 8%)和感知精度(MAE = 2.51%, R2 = 0.92)之间的协调配置。在受控环境和类生产场景下进行的实验表明,该方法可以在保证通信服务质量(QoS)的同时稳定地识别生菜的水分状态。拟议的ISAC方法可能与现有的Ag-IoT频段和物理层基础设施兼容,假设可以访问飞行员/CSI和空中时间控制。与LoRa、Wi-Fi和NB-IoT的协议级集成被定义为未来的工作,它为智能农业中的水监测提供了低成本、高集成度、易于扩展的通信驱动解决方案。
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引用次数: 0
Application of improved RRT algorithm by multi-strategy fusion in path planning for robotic manipulator: A case study of multi-posture dragon fruit picking 基于多策略融合的改进RRT算法在机械臂路径规划中的应用——以多姿态火龙果采摘为例
IF 8.9 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2025-12-23 DOI: 10.1016/j.compag.2025.111285
Bin Zhang , Yuyang Xia , Yang Gu , Zongbin Wang , Qiu Xu , Kairan Lou , Wei Fu
The random orientation and diverse posture of the dragon fruit is due to its short stalk wrapped in a thick fleshy stem. This variability poses a challenge for dragon fruit picking robots. It increases the planning time of movement path for the robotic manipulator, raises the costs associated with path generation, and ultimately leads to reduced harvesting efficiency. Based on the multi-strategy fusion method, a Transition-Based Bidirectional Rapidly-exploring Random Tree (TBIRRT) algorithm was proposed for the motion path planning of the robot to quickly pick dragon fruit. TBIRRT first incorporated adaptive path expansion optimization strategy on the basis of RRT algorithm. It improved the search efficiency and quality of the path by accelerating the space exploration and optimizing the sample tree structure according to the change of the path cost during the sampling period. Secondly, the bidirectional search strategy was introduced to optimize the sampling method and expand the two search trees to further improve the sampling speed. Third, the target bias strategy was introduced to preferentially sample the regions close to the target point, which ensured that the algorithm focused more on areas near the target during the sampling process, so as to find the feasible path faster. Finally, the platform of path planning for picking robot of dragon fruit was constructed based on ROS environment, and the performance tests of different algorithms were carried out in environments of virtual simulation, laboratory and orchard. The results of the field experiments showed that the average path cost and planning time of the TBIRRT algorithm were 8.934 and 0.145 s, respectively. Compared with the RRT, TRRT, RRT-Connect and PRM algorithms, the path cost of the TBIRRT algorithm was reduced by 56.05 %, 36.67 %, 48.97 % and 18.10 %, respectively, and the planning time was shortened by 98.55 %, 98.55 %, 33.49 % and 65.64 %, respectively. The results showed that the TBIRRT algorithm effectively reduced planning time and path cost, which effectively improving the picking efficiency of dragon fruits. The study provides strong technical support for research and development of dragon fruit picking robots.
火龙果的方向随意,姿态多样,这是由于它的短茎包裹在厚实的肉质茎中。这种可变性给火龙果采摘机器人带来了挑战。它增加了机械手运动路径的规划时间,增加了路径生成的相关成本,最终导致收获效率降低。基于多策略融合方法,提出了一种基于过渡的双向快速探索随机树(TBIRRT)算法,用于机器人快速采摘火龙果的运动路径规划。TBIRRT首先在RRT算法的基础上引入了自适应路径扩展优化策略。该算法根据采样周期内路径代价的变化,通过加速空间探索和优化样本树结构,提高了路径的搜索效率和质量。其次,引入双向搜索策略对采样方法进行优化,扩展两棵搜索树,进一步提高采样速度;第三,引入目标偏置策略,优先对靠近目标点的区域进行采样,保证算法在采样过程中更加关注靠近目标点的区域,从而更快地找到可行路径。最后,构建了基于ROS环境的火龙果采摘机器人路径规划平台,并在虚拟仿真、实验室和果园环境下对不同算法进行了性能测试。现场实验结果表明,TBIRRT算法的平均路径代价和规划时间分别为8.934和0.145 s。与RRT、TRRT、RRT- connect和PRM算法相比,TBIRRT算法的路径成本分别降低了56.05%、36.67%、48.97%和18.10%,规划时间分别缩短了98.55%、98.55%、33.49%和65.64%。结果表明,TBIRRT算法有效减少了规划时间和路径成本,有效提高了火龙果采摘效率。该研究为火龙果采摘机器人的研发提供了强有力的技术支持。
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引用次数: 0
Ensemble modelling based on transfer learning for enhancing crop mapping through synergistic integration of InSAR coherence and multispectral satellite data 基于迁移学习的集成建模,通过InSAR相干性和多光谱卫星数据的协同集成来增强作物制图
IF 8.9 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2025-12-23 DOI: 10.1016/j.compag.2025.111332
Niantang Liu , Qunshan Zhao , Richard Williams , Si-Bo Duan , Yingwei Sun , Brian Barrett
Recent advancements in remote sensing have enabled the integration of multi-temporal and multi-modal data for agricultural applications, such as crop mapping. This study proposes an innovative framework that explores the synergistic use of multi-temporal Sentinel-1 Interferometric Synthetic Aperture Radar (InSAR) coherence alongside Sentinel-2 and RapidEye multispectral data to enhance crop mapping in smallholder croplands in Bei’an county, China. Various deep learning models were evaluated, including the 3-Dimensional U-Net (3D U-Net), Transformer, Attention-based Long Short-Term Memory (AtLSTM), and a baseline machine learning Random Forest (RF) model, focusing on their transfer learning capabilities in complex intercropping patterns. Our new architecture, Transformer-AtLSTM-RF, uses ensemble learning to fuse features from different classifiers with a rule-based strategy, facilitating multi-source feature fusion for enhanced crop classification performance. Fine-tuning with region-specific data yielded high overall accuracy (OA), mean F1 score, and mean intersection over union (mIoU) for two test sites: site A (OA: 96.2%, mean F1: 92.7%, mIoU: 86.9%) and site B (OA: 90.7%, mean F1: 88.6%, mIoU: 79.7%). Additionally, we assessed feature importance by visualizing critical temporal features during the model inference process to improve an in-depth understanding of underlying patterns in the feature learning process. Our findings demonstrate the effectiveness of integrating time series SAR-derived and optical data with advanced models for mapping intercropping systems.
遥感技术的最新进展使作物制图等农业应用能够整合多时相和多模态数据。本研究提出了一个创新框架,探索了Sentinel-1干涉合成孔径雷达(InSAR)相干性与Sentinel-2和RapidEye多光谱数据的协同使用,以增强中国北安县小农农田的作物测绘。评估了各种深度学习模型,包括三维U-Net (3D U-Net)、Transformer、基于注意力的长短期记忆(AtLSTM)和基线机器学习随机森林(RF)模型,重点研究了它们在复杂间作模式下的迁移学习能力。我们的新体系结构Transformer-AtLSTM-RF使用集成学习以基于规则的策略融合来自不同分类器的特征,促进多源特征融合以增强作物分类性能。根据区域特定数据进行微调,在两个测试点:A点(OA: 96.2%,平均F1分数:92.7%,mIoU: 86.9%)和B点(OA: 90.7%,平均F1: 88.6%, mIoU: 79.7%)获得了较高的总体准确率(OA)、平均F1分数和平均交联(mIoU)。此外,我们通过在模型推理过程中可视化关键时间特征来评估特征的重要性,以提高对特征学习过程中潜在模式的深入理解。我们的研究结果证明了将时间序列sar衍生数据和光学数据与先进模型相结合用于间作系统制图的有效性。
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引用次数: 0
Integrating machine learning models with ground sensors to enhance soil moisture prediction in agroecosystems of Texas 将机器学习模型与地面传感器相结合,增强德克萨斯州农业生态系统的土壤湿度预测
IF 8.9 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2025-12-23 DOI: 10.1016/j.compag.2025.111358
Gebrekidan Worku Tefera, Ram Lakhan Ray, Reggie Jackson, Bhagya Deegala, Oyomire Akenzua
This study aims to enhance soil moisture prediction by integrating in situ observations with machine and deep learning models. Soil moisture was monitored across crop and pasture agroecosystems of Prairie View A&M University’s research farm using TEROS soil moisture sensors. Bio-meteorological data, including evapotranspiration, soil temperature, rainfall, relative humidity, and soil heat flux, were obtained from Eddy Covariance Flux Towers at crop and pasture agroecosystems. These biometeorological variables were used as input features to predict soil moisture. The machine learning models included Random Forest, Support Vector Regression, Artificial Neural Networks, and Extreme Gradient Boosting, while the deep learning models comprised Deep Neural Networks and Long Short-Term Memory. Gini impurity and SHAP analyses identified air temperature, ecosystem respiration, and soil heat flux as key predictors of soil moisture in the machine and deep learning models. Hyperparameters for each model were optimized using the grid search method for each agroecosystem. Furthermore, the validation protocol employed 10-fold cross-validation (k = 10) with shuffled folds and a fixed random seed to ensure reproducibility. A bootstrapping approach was applied to quantify the uncertainty associated with each machine and deep learning model. The machine learning models demonstrated strong predictive capabilities, with performance assessed using Root Mean Square Error (RMSE), Mean Squared Error (MSE), and the coefficient of determination (R2). Among machine learning models, Random Forest and Extreme Gradient Boosting exhibited superior performance, with R2 values ≥ 0.90 and RMSE ≤ 0.01 m3 m−3. The Long Short-Term Memory has comparable soil moisture prediction skills (R2 = 0.90 and RMSE = 0.021 m3 m−3) to that of Random Forest and Extreme Gradient Boosting. The methodology and findings from this study can inform better irrigation practices, agricultural drought management, and agroecosystem management.
本研究旨在通过将现场观测与机器和深度学习模型相结合来增强土壤湿度预测。使用TEROS土壤湿度传感器监测了Prairie View A&;M大学研究农场的作物和牧场农业生态系统的土壤湿度。利用涡旋相关通量塔获取作物和草地农业生态系统的蒸散发、土壤温度、降雨量、相对湿度和土壤热通量等生物气象数据。这些生物气象变量被用作预测土壤湿度的输入特征。机器学习模型包括随机森林、支持向量回归、人工神经网络和极端梯度增强,深度学习模型包括深度神经网络和长短期记忆。基尼杂质和SHAP分析发现,在机器和深度学习模型中,空气温度、生态系统呼吸和土壤热通量是土壤湿度的关键预测因子。利用网格搜索方法对每个模型的超参数进行优化。此外,验证方案采用10倍交叉验证(k = 10),洗牌折叠和固定随机种子以确保可重复性。采用自举方法量化与每台机器和深度学习模型相关的不确定性。机器学习模型显示出强大的预测能力,其性能评估使用均方根误差(RMSE),均方误差(MSE)和决定系数(R2)。在机器学习模型中,Random Forest和Extreme Gradient Boosting表现优异,R2值≥0.90,RMSE≤0.01 m3 m−3。长短期记忆方法对土壤湿度的预测能力(R2 = 0.90, RMSE = 0.021 m3 m−3)与随机森林方法和极端梯度增强方法相当。本研究的方法和结果可以为更好的灌溉实践、农业干旱管理和农业生态系统管理提供信息。
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引用次数: 0
GNSS/MEMS INS tightly coupled algorithm for agricultural machinery navigation enhanced by random forest-based behavioral state awareness 基于随机森林行为状态感知增强的GNSS/MEMS INS紧密耦合农机导航算法
IF 8.9 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2025-12-22 DOI: 10.1016/j.compag.2025.111350
Yihang Feng , Guanwen Huang , Mingfeng Wang , Xin Li , Zhenhong Li , Hang Li , Kai Zhang , Ce Jing
Global navigation satellite system (GNSS)/micro-electro-mechanical systems inertial navigation system (MEMS INS) algorithm is widely used in agricultural machinery navigation. However, several issues remain noteworthy, uneven terrain induces more high-frequency noise than other environments, which severely affects the accuracy of MEMS INS. In addition, occlusion environment, such as field windbreak, degrades GNSS signal quality. Although Butterworth filter and non-holonomic constraints (NHC) have been validated as effective solutions for these issues, which still face the following limitations in agricultural scenarios. This is because the power spectral density (PSD) of MEMS INS data exhibits distinct energy distribution among different states, therefore it is unreasonable to apply uniform cutoff frequency same as classic Butterworth filter. Additionally, jumping and slipping frequently occur, which can invalidate the zero-velocity assumption of NHC. Therefore, given the limitations of previous studies, this paper proposes a random forest (RF)-based model to identify machinery states and predict body-frame (right and up) velocities. Then, adaptive cutoff frequencies are selected for the Butterworth filter. Furthermore, the measurement and stochastic models of NHC are optimized by states and body-frame velocities. Experiments show that the proposed algorithm can achieve centimeter-level positioning accuracy and the heading angle error of only 0.33°.
全球卫星导航系统(GNSS)/微机电系统惯性导航系统(MEMS INS)算法广泛应用于农机导航中。然而,有几个问题仍然值得注意,不平坦的地形比其他环境产生更多的高频噪声,这严重影响了MEMS INS的精度。此外,遮挡环境(如野外防风林)会降低GNSS信号质量。尽管Butterworth滤波和非完整约束(NHC)已被验证为解决这些问题的有效方法,但在农业场景中仍面临以下局限性。这是因为MEMS INS数据的功率谱密度(PSD)在不同状态下呈现出不同的能量分布,因此采用与经典巴特沃斯滤波器相同的均匀截止频率是不合理的。此外,跳跃和滑动频繁发生,使NHC的零速度假设失效。因此,鉴于以往研究的局限性,本文提出了一种基于随机森林(RF)的模型来识别机械状态并预测身体-框架(右和上)速度。然后,为巴特沃斯滤波器选择自适应截止频率。在此基础上,根据状态和体架速度对NHC的测量和随机模型进行了优化。实验表明,该算法可以达到厘米级的定位精度,航向角误差仅为0.33°。
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引用次数: 0
Empowering agro-geoinformatics with earth observation analysis ready data: opportunities and challenges 利用地球观测分析就绪数据增强农业地理信息学:机遇与挑战
IF 8.9 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2025-12-22 DOI: 10.1016/j.compag.2025.111348
Li Lin
Agro-geoinformatics, the integration of geospatial technologies into agricultural research and management, plays a critical role in addressing global challenges such as food insecurity, climate variability, and resource degradation. Although satellite remote sensing is widely available, its practical application in agriculture remains constrained by sensor inconsistencies, heterogeneous data formats, and the substantial preprocessing required for analytical workflows, especially those involving machine learning. Earth Observation Analysis Ready Data (EO-ARD), which provides satellite imagery preprocessed to standardized and harmonized specifications, offers a practical solution to these limitations. This review assesses the demonstrated contributions and emerging potential of EO-ARD in advancing agro-geoinformatics, with a focus on three key applications: crop classification, crop damage assessment, and yield forecasting. By enhancing data consistency, enabling multi-sensor integration, and supporting reproducible analyses, EO-ARD facilitates more efficient and informed agricultural decision-making. While challenges remain, including limited sensor diversity, unequal access, and gaps in technical and institutional capacity, significant opportunities exist to expand EO-ARD adoption through advancements in data infrastructure, international standards, and collaborative initiatives. As agro-geoinformatics increasingly leverages big data and artificial intelligence, EO-ARD will play a pivotal role in supporting sustainable and climate-smart agriculture.
农业地理信息学是将地理空间技术整合到农业研究和管理中的学科,在应对粮食不安全、气候变率和资源退化等全球挑战方面发挥着关键作用。尽管卫星遥感广泛可用,但其在农业中的实际应用仍然受到传感器不一致、异构数据格式以及分析工作流程(特别是涉及机器学习的工作流程)所需的大量预处理的限制。地球观测分析就绪数据(EO-ARD)提供了标准化和协调规范的卫星图像预处理,为这些限制提供了实用的解决方案。本文综述了EO-ARD在推进农业地理信息学方面的贡献和潜力,重点介绍了作物分类、作物危害评估和产量预测这三个关键应用。通过增强数据一致性、实现多传感器集成和支持可重复分析,EO-ARD促进了更有效和更明智的农业决策。尽管挑战依然存在,包括有限的传感器多样性、不平等的接入以及技术和机构能力的差距,但通过数据基础设施、国际标准和合作倡议的进步,扩大EO-ARD的采用存在重大机遇。随着农业地理信息学越来越多地利用大数据和人工智能,EO-ARD将在支持可持续和气候智能型农业方面发挥关键作用。
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引用次数: 0
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Computers and Electronics in Agriculture
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