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Addressing local sparsity in massive agricultural machinery trajectories: A BiLSTM-GRU approach 解决大规模农业机械轨迹中的局部稀疏性问题:BiLSTM-GRU 方法
IF 7.7 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2024-08-31 DOI: 10.1016/j.compag.2024.109376

Trajectory data acquired from GNSS (Global Navigation Satellite System) terminals on agricultural machinery are crucial for identifying agricultural machinery operation modes, evaluating agricultural machinery operational efficiency and exploring agricultural machinery trans-regional harvesting operation characteristics. However, GNSS terminals often experience signal delays due to factors such as weather conditions and environmental obstructions. These delays result in irregular time intervals between trajectory points, leading to local sparsity within the trajectory data, which subsequently reduces the accuracy of applications and analyses based on agricultural machinery trajectories. To address this issue, we propose a novel approach that leverages Bidirectional Long Short-Term Memory (BiLSTM) and Gated Recurrent Unit (GRU) networks, along with an attention mechanism, to mitigate the problem of local trajectory sparsity, and experiments were conducted using agricultural machinary trajectory data collected during the 2023 wheat harvest period. The results demonstrate the efficiency of our approach by successfully resolving the local sparsity of agricultural machinery trajectories. Moreover, each newly added trajectory point contains all original attributes (e.g., speed and direction). When integrated into state-of-the-art algorithms (e.g., DT, DBSCAN + rules, GCN) for identifying machinery operation modes, our method improves accuracies by 21.83 %, 26.86 %, and 1.17 %, respectively. Our approach effectively addresses the issue of local trajectory sparsity, thus providing assistance for applications and studies based on massive agricultural machinery trajectories.

从农业机械上的 GNSS(全球导航卫星系统)终端获取的轨迹数据对于确定农业机械的作业模式、评估农业机械的作业效率以及探索农业机械跨区域收割作业特征至关重要。然而,由于天气条件和环境障碍等因素,全球导航卫星系统终端经常会出现信号延迟。这些延迟导致轨迹点之间的时间间隔不规则,从而导致轨迹数据的局部稀疏性,进而降低了基于农业机械轨迹的应用和分析的准确性。为解决这一问题,我们提出了一种利用双向长短期记忆(BiLSTM)和门控递归单元(GRU)网络以及注意力机制来缓解局部轨迹稀疏性问题的新方法,并使用 2023 年小麦收割期间收集的农业机械轨迹数据进行了实验。实验结果表明,我们的方法成功地解决了农业机械轨迹的局部稀疏性问题,从而提高了效率。此外,每个新添加的轨迹点都包含所有原始属性(如速度和方向)。当将我们的方法集成到用于识别机械运行模式的最先进算法(如 DT、DBSCAN + 规则、GCN)中时,准确率分别提高了 21.83 %、26.86 % 和 1.17 %。我们的方法有效地解决了局部轨迹稀疏的问题,从而为基于大量农业机械轨迹的应用和研究提供了帮助。
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引用次数: 0
A study on parameter calibration of a general crop growth model considering non-foliar green organs 考虑非叶面绿色器官的一般作物生长模型参数校准研究
IF 7.7 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2024-08-31 DOI: 10.1016/j.compag.2024.109362

Accurate crop yield estimation is essential for ensuring national food security and sustainable development. The crop growth model is one of the primary methods for estimating production and has been effectively applied in simulating crop growth and development, environmental factor effects and yield formation processes. However, many related studies have focused on Gramineae crops, such as wheat, rice and maize, while there has been little research on rape and soybean yield estimation. Non-foliar green organs such as rape siliques and soybean pods make vital contributions to plant photosynthesis and influence crop output. The parameter calibration method based on the leaf area index (LAI) cannot satisfy the existing demand for high-precision yield estimation for crops with active non-foliar green organs. Therefore, a new method for crop growth model calibration was proposed, which considers non-foliar green organs and plant photosynthetic succession processes and combines them with those of leaves to construct a photosynthetic area index (PAI). With wheat, rape and soybean as the research objects, their yields were simulated via the proposed crop growth model calibration method. The results showed that using the proposed calibration method to calibrate World Food Study (WOFOST) model parameters on the basis of the PAI improved the yield estimation accuracy over that of the crop model calibration method based on the LAI. The determination coefficient (R2) of the total dry weight of storage organs (TWSO) simulation value increased from 0.73 (using the LAI) to more than 0.90 (using the PAI). The R2 values of TWSO at the rape calibration and verification points were 0.910 and 0.922, respectively, and the R2 values of TWSO at the soybean calibration and verification points were 0.741 and 0.926, respectively. The above results verified the feasibility and effectiveness of the proposed calibration method. Consequently, the application of the crop model calibration method proposed in this paper is important for accurately estimating the crop yield of plants with active non-foliar green organs, promoting the expansion of general crop models for different types of crops and achieving high-precision crop yield estimations.

准确估算作物产量对确保国家粮食安全和可持续发展至关重要。作物生长模型是估算产量的主要方法之一,在模拟作物生长发育、环境因素影响和产量形成过程方面得到了有效应用。然而,许多相关研究都集中在小麦、水稻和玉米等禾本科作物上,而对油菜和大豆产量估算的研究却很少。非叶面绿色器官(如油菜纤毛和大豆豆荚)对植物光合作用做出了重要贡献,并影响作物产量。基于叶面积指数(LAI)的参数校准方法无法满足目前对具有活跃非叶面绿色器官的作物进行高精度产量估算的需求。因此,提出了一种新的作物生长模型校准方法,该方法考虑了非叶面绿色器官和植物光合演替过程,并将其与叶片的光合演替过程相结合,构建了光合面积指数(PAI)。以小麦、油菜和大豆为研究对象,通过提出的作物生长模型校准方法模拟了它们的产量。结果表明,与基于 LAI 的作物模型校准方法相比,利用所提出的校准方法以 PAI 为基础校准世界粮食研究(WOFOST)模型参数提高了产量估算的准确性。储藏器官总干重(TWSO)模拟值的确定系数(R2)从 0.73(使用 LAI)提高到 0.90 以上(使用 PAI)。油菜校准点和验证点的 TWSO R2 值分别为 0.910 和 0.922,大豆校准点和验证点的 TWSO R2 值分别为 0.741 和 0.926。上述结果验证了所提标定方法的可行性和有效性。因此,本文提出的作物模型校正方法的应用对于准确估算非叶面绿色器官活跃植物的作物产量,促进不同类型作物通用作物模型的扩展,实现高精度作物产量估算具有重要意义。
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引用次数: 0
Addressing multidimensional highly correlated data for forecasting in precision beekeeping 处理多维高度相关数据,用于精准养蜂预测
IF 7.7 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2024-08-30 DOI: 10.1016/j.compag.2024.109390

In recent years, there have been relevant advances in precision beekeeping. These advances are mainly focused on proposing sensor systems that collect crucial information for bee welfare, creating integrated architectures that allow beekeepers to monitor the current state of their hive through real-time data. However, there is a lack of predictive models that would allow beekeepers to anticipate specific events that endanger bee welfare and lead to a decline in productivity. Specifically, predictive approaches accounting for the high correlation among internal variables of beehives have not been developed to date. To address this research gap, multivariate predictive models, including auto-regressive state-space and time series models, have been implemented and applied to four different hives from the we4bee project. These models aim to predict the internal variables of beehives (four different temperatures, humidity, and weight) by utilizing the meteorological conditions to which the hives are exposed. A cross-validation adapted to time series data was employed for model generalization assessment. Prediction models based on vector time series exhibited superior performance in forecasting internal hive variables compared to multivariate auto-regressive state-space models. Overall, the approach based on the vector error correction model yielded the best balance between fit, prediction, and computational cost. The VEC-based approach produces predictions with maximum mean absolute errors of 177 (312)g in weight, 3.366 (3.802)% in humidity, and 1.122 (1.685)°C in temperature at 1 (3)-days ahead when dealing with beehives exhibiting a high degree of correlation in their internal variables. Moreover, the VEC-based approach requires less than a second to perform the time series fitting process, which makes it particularly interesting for application in big data environments. The integration of such models into a decision support system would meet the need of beekeepers to anticipate potential threats to the welfare of their bee colonies, streamlining their monitoring processes while eliminating the need for continuous inspections.

近年来,精准养蜂取得了相关进展。这些进展主要集中在提出收集蜜蜂福利关键信息的传感器系统,创建集成架构,使养蜂人能够通过实时数据监控蜂巢的当前状态。然而,目前还缺乏能让养蜂人预测危及蜜蜂福利并导致生产力下降的特定事件的预测模型。具体来说,迄今为止,还没有开发出考虑到蜂箱内部变量之间高度相关性的预测方法。为了填补这一研究空白,我们在 we4bee 项目的四个不同蜂箱中实施并应用了多元预测模型,包括自回归状态空间模型和时间序列模型。这些模型旨在利用蜂箱所处的气象条件来预测蜂箱的内部变量(四种不同的温度、湿度和重量)。为评估模型的通用性,采用了与时间序列数据相适应的交叉验证方法。与多变量自回归状态空间模型相比,基于矢量时间序列的预测模型在预测蜂巢内部变量方面表现出更优越的性能。总体而言,基于向量误差修正模型的方法在拟合、预测和计算成本之间取得了最佳平衡。当蜂箱内部变量高度相关时,基于向量误差校正模型的方法在提前 1 (3) 天进行预测时,重量的最大平均绝对误差为 177 (312)g ,湿度的最大平均绝对误差为 3.366 (3.802)% ,温度的最大平均绝对误差为 1.122 (1.685)°C 。此外,基于 VEC 的方法只需不到一秒钟的时间就能完成时间序列拟合过程,因此特别适合在大数据环境中应用。将这种模型集成到决策支持系统中,可以满足养蜂人预测蜂群福利面临的潜在威胁的需要,简化他们的监测过程,同时消除持续检查的需要。
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引用次数: 0
POLO: Pose estimation with one-stage location-sensitive coding POLO: 利用单级位置敏感编码进行姿态估计
IF 7.7 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2024-08-30 DOI: 10.1016/j.compag.2024.109384

The precise monitoring of fish keypoints and behavioral patterns is crucial in fish farming, influencing decisions on feeding schedules and assessing fish health. Traditional approaches to multi-object pose estimation often lean towards either Bottom-up or Top-down methods. Our innovative solution introduces a streamlined single-stage multi-object pose estimation framework, utilizing a unique approach to instance assignment based on location. By incorporating position encoding as an index for candidate pose heatmap groups, we achieve end-to-end multi-object pose estimation with reduced redundancy through non-maximum suppression. Our framework, named POLO, has been validated on a meticulously annotated fish keypoint dataset, demonstrating outstanding performance with a remarkable 65.34% OKS AP at 71.4 FPS on Tesla v100. With its real-time capabilities, POLO is highly adaptable, making it suitable for deployment on various edge computing devices and addressing real-world challenges effectively. We believe our framework can serve as a solid baseline for diverse pose estimation tasks across different domains.

精确监测鱼类的关键点和行为模式对养鱼业至关重要,它影响着喂食计划的决策和鱼类健康的评估。传统的多物体姿态估计方法通常倾向于自下而上或自上而下的方法。我们的创新解决方案采用基于位置的实例分配的独特方法,引入了一个简化的单阶段多物体姿态估计框架。通过将位置编码作为候选姿势热图组的索引,我们实现了端到端的多物体姿势估计,并通过非最大抑制减少了冗余。我们的框架被命名为 POLO,已在精心注释的鱼类关键点数据集上进行了验证,在 Tesla v100 上以 71.4 FPS 的速度实现了 65.34% 的 OKS AP,表现出卓越的性能。POLO 具有实时功能,适应性强,适合部署在各种边缘计算设备上,能有效解决现实世界的挑战。我们相信,我们的框架可以为不同领域的各种姿态估计任务提供坚实的基础。
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引用次数: 0
Vision-based trajectory generation and tracking algorithm for maneuvering of a paddy field robot 基于视觉的水田机器人操纵轨迹生成和跟踪算法
IF 7.7 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2024-08-30 DOI: 10.1016/j.compag.2024.109368

In this study, we propose a novel visual-based autonomous trajectory-tracking control method for steering a wheeled robot following the lines of crop row in paddy field. A rice crop rows detection method, based on the region growth sequential clustering − random sample consensus (RANSAC) algorithm, is developed to generate trajectory. Concurrently, a dynamics predictive controller is employed to compute the command for the desired steering angle. The controller leverages a model that incorporates slip dynamics and operates on a low power consumption industrial computer. Experimental results show that the developed algorithm can successfully obtain the correct trajectory in more than 96.25 % of the cases, with the angle error consistently below 3°. Furthermore, the single-image processing time is notably swift at 13.98 ms, underscoring the commendable adaptability and real-time performance of the proposed methodology. During movement in the paddy field, the robot exhibits maximum lateral deviations of 4.55 cm, 5.65 cm, and 6.41 cm at speeds of 0.3 m/s, 0.6 m/s, and 0.9 m/s, respectively, accompanied by corresponding heading angle errors of 4.59°, 5.63°, and 7.39°. Notably, while adeptly tracking rice crop rows at all three speeds, the robot consistently maintains a maximum lateral error below one-fourth of the inter-row spacing of rice planting. This study assumes significance in enhancing the stability of ground-traversing agricultural robots, serving as a valuable reference for advancing the research and development of intelligent and efficient agricultural robotic systems.

在这项研究中,我们提出了一种新颖的基于视觉的自主轨迹跟踪控制方法,用于引导轮式机器人沿着稻田中的作物行行进。我们开发了一种基于区域生长顺序聚类-随机样本共识(RANSAC)算法的水稻作物行检测方法来生成轨迹。同时,采用动态预测控制器来计算所需转向角的指令。该控制器利用一个包含滑移动力学的模型,并在低功耗工业计算机上运行。实验结果表明,所开发的算法能在 96.25% 以上的情况下成功获得正确的轨迹,角度误差始终低于 3°。此外,单张图像的处理时间仅为 13.98 毫秒,非常迅速,这表明所提出的方法具有良好的适应性和实时性。机器人在稻田中移动时,在速度为 0.3 米/秒、0.6 米/秒和 0.9 米/秒时,最大横向偏差分别为 4.55 厘米、5.65 厘米和 6.41 厘米,相应的航向角误差分别为 4.59°、5.63° 和 7.39°。值得注意的是,在这三种速度下,机器人都能很好地跟踪水稻作物行,最大横向误差始终保持在插秧行距的四分之一以下。这项研究对提高地面行走农业机器人的稳定性具有重要意义,对推动智能高效农业机器人系统的研发具有重要参考价值。
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引用次数: 0
Research on wheat broken rate and impurity rate detection method based on DeepLab-EDA model and system construction 基于 DeepLab-EDA 模型的小麦破碎率和杂质率检测方法研究及系统构建
IF 7.7 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2024-08-30 DOI: 10.1016/j.compag.2024.109375

The broken rate and impurity rate of wheat are important indicators for assessing the quality of combine harvester operations. In view of the overlapping, occlusion and dense adhesion between the scattered grains during the operation of the combine harvester, it is difficult to obtain the grain crushing characteristics and impurity mass, which leads to low detection accuracy. In this paper, a method for detecting wheat broken rate and impurity rate based on DeepLab-EDA semantic segmentation model was proposed, and a detection system was built. In the detection system, an image acquisition device was designed and developed based on the principle of electromagnetic vibration, and the deep learning model was deployed in the embedded processor. Through the human–computer interaction interface design, the online processing and analysis of wheat image data and the display of the detection results of broken rate and impurity rate were realized. Comparative experiments with traditional semantic segmentation models showed that the MIoU, MP and MR of the DeepLab-EDA model were 89.41 %, 95.97 % and 94.83 %, respectively, representing improvements of 9.94%, 7.41%, and 7.52% over the baseline model, and indicating a significant enhancement in the accurate identification and segmentation of broken grain and impurities. Based on this, indoor group matching experiments were conducted with three groups of broken rate and impurity rate levels set at 0.5%, 1.5%, and 2.5%, showing the average errors of 7.54% and 6.30% for broken rate and impurity rate detection systems, respectively. Furthermore, the detection device was installed under the grain outlet of the GM80 combine harvester for field experiments, which showed average errors of 13.32% and 9.77% for wheat broken rate and impurity rate, respectively. The effectiveness and accuracy of the wheat broken rate and impurity rate detection system meet the requirements, which can provide a data basis for intelligent control of combine harvester operation parameters by the operator.

小麦的破碎率和含杂率是评价联合收割机作业质量的重要指标。鉴于联合收割机作业过程中,散落的麦粒之间存在重叠、遮挡和密集粘附等现象,难以获得麦粒破碎特征和杂质质量,导致检测精度较低。本文提出了一种基于 DeepLab-EDA 语义分割模型的小麦破碎率和杂质率检测方法,并构建了检测系统。在检测系统中,基于电磁振动原理设计开发了图像采集装置,并在嵌入式处理器中部署了深度学习模型。通过人机交互界面设计,实现了对小麦图像数据的在线处理和分析,以及破碎率和杂质率检测结果的显示。与传统语义分割模型的对比实验表明,DeepLab-EDA模型的MIoU、MP和MR分别为89.41 %、95.97 %和94.83 %,比基线模型分别提高了9.94%、7.41%和7.52%,表明在破碎粒和杂质的准确识别和分割方面有了显著提升。在此基础上,对破碎率和杂质率水平设定为 0.5%、1.5% 和 2.5% 的三组破碎率和杂质率进行了室内组匹配实验,结果显示破碎率和杂质率检测系统的平均误差分别为 7.54% 和 6.30%。此外,将检测装置安装在 GM80 联合收割机的出粮口下方进行田间试验,结果显示小麦破碎率和杂质率的平均误差分别为 13.32% 和 9.77%。小麦破碎率和含杂率检测系统的有效性和准确性均符合要求,可为操作人员智能控制联合收割机的运行参数提供数据依据。
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引用次数: 0
A novel method for tomato stem diameter measurement based on improved YOLOv8-seg and RGB-D data 基于改进的 YOLOv8-seg 和 RGB-D 数据的番茄茎直径测量新方法
IF 7.7 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2024-08-30 DOI: 10.1016/j.compag.2024.109387

The automatic acquisition of crop information can promote the rapid development of precision agriculture. Tomatoes, as a representative greenhouse crop, can demonstrate their growth status and overall health could be exhibited by measuring the diameters of their main stems. Automated measurement of the diameters of the trunk stems can not only reduce labor costs, but also enhance efficiency, thereby facilitating the improvement of tomato cultivation and planting management. Therefore, this study proposes a novel method based on an instance segmentation algorithm combined with RGB-D data to measure the diameter of a tomato trunk. First, we utilize the improved YOLOv8-seg to acquire the masks and bounding boxes of the buds and stems. Namely, we replace the SPPF module with Soft-SPPF to enhance the model’s capability to extract multi-scale features. Additionally, we improve the neck layer using cross-stage and weighted feature fusion to enhance the feature fusion effect. Then, we design a method to calculate the diameter of the tomato trunk by utilizing the instance segmentation results and depth information. Specifically, we first obtain the measurement point and the ROI (Region of Interest) to be measured by identifying the intersection between the bounding box of the bud and the straight line fitted by the stem mask in an image. We then filter out irrelevant depth information using the mask within the ROI, optimize the coordinate values of the measurement point, and calculate the main stem diameter. The results demonstrate that the measurements obtained in this study have a RMSE (Root Mean Square Error) of 1.5 mm and a MAPE (Mean Absolute Percentage Error) of 12.37 % compared with the manual measurements. Compared with the method based on object detection, the direct acquisition of contour information for the target instances by the instance segmentation algorithm reduces the algorithmic complexity of the subsequent processing. The proposed method can offer precise and reliable information on the diameter of the main stem of a tomato in real-world scenarios. It can be extended to other types of crops in greenhouses.

自动获取作物信息可以促进精准农业的快速发展。番茄作为温室作物的代表,通过测量其主茎的直径可以展示其生长状态和整体健康状况。自动测量主茎直径不仅能降低劳动力成本,还能提高工作效率,从而促进番茄栽培和种植管理水平的提高。因此,本研究提出了一种基于实例分割算法并结合 RGB-D 数据的新型方法来测量番茄主干的直径。首先,我们利用改进的 YOLOv8-seg 获取芽和茎的遮罩和边界框。此外,我们用 Soft-SPPF 代替 SPPF 模块,以增强模型提取多尺度特征的能力。此外,我们还利用交叉阶段和加权特征融合改进了颈部层,以增强特征融合效果。然后,我们设计了一种利用实例分割结果和深度信息计算番茄树干直径的方法。具体来说,我们首先通过识别图像中花蕾边界框与茎遮罩拟合直线的交点,获得测量点和待测区域(ROI)。然后,我们利用 ROI 内的掩膜过滤掉无关的深度信息,优化测量点的坐标值,并计算主茎直径。结果表明,与人工测量相比,本研究获得的测量结果的 RMSE(均方根误差)为 1.5 毫米,MAPE(平均绝对百分比误差)为 12.37%。与基于物体检测的方法相比,实例分割算法直接获取目标实例的轮廓信息降低了后续处理的算法复杂度。所提出的方法可以在实际场景中提供精确可靠的西红柿主茎直径信息。它还可以扩展到温室中的其他类型作物。
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引用次数: 0
Early warning system for nocardiosis in largemouth bass (Micropterus salmoides) based on multimodal information fusion 基于多模态信息融合的大口鲈鱼(Micropterus salmoides)球虫病预警系统
IF 7.7 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2024-08-30 DOI: 10.1016/j.compag.2024.109393

The high-density culture of the recirculating aquaculture system (RAS) makes bacterial and parasitic diseases in fish likely to spread within these systems. Therefore, preventing and controlling the occurrence of fish diseases in RAS is crucial for the future development of aquaculture. However, the current circulating water system lacks early warning measures to prevent and control diseases, resulting in poor accuracy in early warning and detection of diseases. To tackle this challenge, this study introduces an early warning system for largemouth bass (Micropterus salmoides) disease, which is based on You Only Look Once vision 8 (YOLOv8), ByteTrack, Long-Short-Term-Memory (LSTM), and Fuzzy Inference System (FIS). The system utilizes the water quality, surface characteristics, and behavioral traits of diseased fish to predict and prevent disease outbreaks. The system achieved an accuracy of 79.33% for identifying infected body surface features, 80.65% for identifying diseased water quality, and 81.08% for predicting diseased behavior. The experimental results indicate that the early warning system is highly reliable and effective, achieving integrated disease identification accuracy as high as 94.08%. This study enhances the accuracy of early disease warning in fish disease conditions, achieving early warning of nocardiosis in largemouth bass. The study provides crucial technical support for the sustainable and high-quality development of the aquaculture industry.

循环水养殖系统(RAS)的高密度养殖使得鱼类的细菌和寄生虫病很可能在这些系统内传播。因此,预防和控制 RAS 中鱼类疾病的发生对水产养殖业的未来发展至关重要。然而,目前的循环水系统缺乏预防和控制疾病的预警措施,导致疾病预警和检测的准确性不高。为应对这一挑战,本研究介绍了一种大口鲈鱼(Micropterus salmoides)疾病预警系统,该系统基于 You Only Look Once vision 8(YOLOv8)、ByteTrack、Long-Short-Term-Memory(LSTM)和模糊推理系统(FIS)。该系统利用病鱼的水质、体表特征和行为特征来预测和预防疾病爆发。该系统识别感染体表特征的准确率为 79.33%,识别病害水质的准确率为 80.65%,预测病害行为的准确率为 81.08%。实验结果表明,该预警系统非常可靠有效,疾病综合识别准确率高达 94.08%。该研究提高了鱼类疾病早期预警的准确性,实现了对大口鲈鱼诺卡氏菌病的早期预警。该研究为水产养殖业的可持续和高质量发展提供了重要的技术支持。
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引用次数: 0
Towards automatic urban tree inventory: Enhancing tree instance segmentation via moving object removal and a chord length-based DBH estimation approach 实现城市树木自动清点:通过移动物体移除和基于弦长的 DBH 估算方法加强树木实例分割
IF 7.7 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2024-08-29 DOI: 10.1016/j.compag.2024.109378

To enhance urban forestry efficacy in Hong Kong, implementing a paradigm shift towards an automated urban tree inventory that utilizes advanced sensing technologies and artificial intelligence is essential for streamlined data collection and analysis. This study advances this objective by creating a comprehensive framework for estimating diameter at breast height (DBH) and extracting tree images. This framework encompasses five key stages: (1) data acquisition utilizing StructXray, a mobile mapping system equipped with a 360° camera and a multi-beam flash LiDAR sensor; (2) vegetation point clouds extraction using deep learning techniques; (3) individual tree segmentation through machine learning algorithms; (4) DBH estimation; and (5) tree image extraction. Six datasets were collected, yielding tree detection precision, recall and F1 score of 0.88, 0.95 and 0.91 respectively. The presence of moving objects within the 3D point cloud map, exhibiting diverse geometric structures, hinders precise vegetation point cloud segmentation by the pointwise neural network. To tackle this challenge, SalsaNext was employed to rectify the predictions of a pointwise neural network, specifically RandLA-Net in this study, eliminating 91 % of misclassified moving object point clouds and completely removing them from 47 % of affected individual tree point clouds. Additionally, a chord length-based method was proposed to enhance DBH estimation accuracy by dividing the point cloud slice into sectors and summing the chord lengths to estimate the tree trunk perimeter. Compared to the ellipse least squares fitting method, this approach reduced the root-mean-square error of the estimated DBH by 1.31 cm.

为了提高香港城市林业的效率,必须实现模式转变,利用先进的传感技术和人工智能自动编制城市树木清单,以简化数据收集和分析工作。本研究通过创建一个估算胸径(DBH)和提取树木图像的综合框架,推进了这一目标的实现。该框架包括五个关键阶段:(1) 利用配备 360° 摄像机和多波束闪光激光雷达传感器的移动测绘系统 StructXray 采集数据;(2) 利用深度学习技术提取植被点云;(3) 通过机器学习算法分割单棵树;(4) 估算 DBH;(5) 提取树木图像。收集到的六个数据集的树木检测精度、召回率和 F1 分数分别为 0.88、0.95 和 0.91。三维点云图中存在移动物体,其几何结构多种多样,这阻碍了点神经网络对植被点云的精确分割。为解决这一难题,本研究采用 SalsaNext 来修正点式神经网络(特别是 RandLA-Net)的预测结果,从而消除了 91% 被错误分类的移动物体点云,并从 47% 受影响的单个树木点云中完全消除了移动物体。此外,还提出了一种基于弦长的方法,通过将点云切片划分为扇形,并将弦长相加来估算树干周长,从而提高 DBH 估算的准确性。与椭圆最小二乘拟合方法相比,这种方法将估计的 DBH 均方根误差降低了 1.31 厘米。
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引用次数: 0
Versatile method for grapevine row detection in challenging vineyard terrains using aerial imagery 利用航空图像在具有挑战性的葡萄园地形中检测葡萄行的多功能方法
IF 7.7 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Pub Date : 2024-08-29 DOI: 10.1016/j.compag.2024.109372

Accurate detection and differentiation of grapevine canopies from other vegetation, along with individual grapevine row identification, pose significant challenges in precision viticulture (PV), especially within irregularly structured vineyards shaped by natural terrain slopes. This study employs aerial imagery captured by unmanned aerial vehicles (UAVs) and introduces an image processing methodology that relies on the orthorectified raster data obtained through UAVs. The proposed method adopts a data-driven approach that combines visible indices and elevation data to achieve precise grapevine row detection. Thoroughly tested across various vineyard configurations, including irregular and terraced landscapes, the findings underscore the method’s effectiveness in identifying grapevine rows of diverse shapes and configurations. This capability is crucial for accurate vineyard monitoring and management. Furthermore, the method enables clear differentiation between inter-row spaces and grapevine vegetation, representing a fundamental advancement for comprehensive vineyard analysis and PV planning. This study contributes to the field of PV by providing a reliable tool for grapevine row detection and vineyard feature classification. The proposed methodology is applicable to vineyards with varying layouts, offering a versatile solution for enhancing precision viticulture practices.

准确检测和区分葡萄树树冠与其他植被,以及识别葡萄树单行,是精准葡萄栽培(PV)面临的重大挑战,尤其是在自然地形坡度形成的不规则结构葡萄园中。本研究利用无人飞行器 (UAV) 拍摄的航空图像,并介绍了一种依赖于通过无人飞行器获得的正射影像栅格数据的图像处理方法。建议的方法采用数据驱动法,结合可见光指数和高程数据,实现精确的葡萄行检测。通过对各种葡萄园配置(包括不规则地形和梯田地形)的全面测试,研究结果表明该方法能有效识别不同形状和配置的葡萄行。这种能力对于准确监控和管理葡萄园至关重要。此外,该方法还能明确区分行间空间和葡萄植被,是葡萄园综合分析和光伏规划的一大进步。本研究为葡萄行检测和葡萄园特征分类提供了可靠的工具,为光伏领域做出了贡献。所提出的方法适用于不同布局的葡萄园,为加强精准葡萄栽培实践提供了多功能解决方案。
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引用次数: 0
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Computers and Electronics in Agriculture
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