激光扫描传感器在温室喷雾应用中的改进冠层表征

IF 1.4 4区 农林科学 Q3 AGRICULTURAL ENGINEERING
Uchit Nair, P. Ling, Heping Zhu
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引用次数: 1

摘要

HighlightsAn算法用于处理激光传感器数据,以更准确地测量冠层尺寸。该算法分离单个冠层,去除失真,并估计数据集的遮挡部分。该算法在均方根误差(RMSE)方面减少了46%的测量误差。传感器高度低于和高于计算的最佳传感器高度时,RMSE更高。用于温室应用的激光制导智能喷雾技术需要能够精确测量植物尺寸的传感器。本研究提出了一种新的方法,通过引入一种处理算法来克服当前的局限性,该算法可以操纵噪声数据集并确定最佳传感器高度,从而更好地测量冠层宽度。处理算法包括配准、聚类和镜像的组合。配准对同一场景的多个扫描进行对齐,以提高分辨率。聚类将单个植物冠层从数据集中分离出来,以便进行进一步处理。镜像用于解决数据集的失真和遮挡问题,并预测数据集中的缺失信息。通过计算冠层宽度测量的均方根误差(RMSE)来评价处理算法的性能。其结果与早期研究报告的测量结果进行了比较,在早期研究中,激光传感器数据的处理有限。与早期的研究相比,处理算法将RMSE值降低了46%,对于距离传感器1.5 m以上的物体,可以看到最大的改进。观察到传感器高度与RMSE值成反比。处理算法的平均RMSE为25 mm,而早期研究中激光传感器高度为1 m时的RMSE为47 mm。另一个实验设置用于测试传感器高度与算法性能之间关系的极限,同时使用更能代表植物冠层形状的对象。当传感器高度高于或低于最优传感器高度时,处理算法的精度会下降,这是由早期研究的计算得出的。该处理算法具有提高喷雾效率的潜力。关键词:自动化,聚类,激光雷达,点云数据处理,可变速率喷雾。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved Canopy Characterization with Laser Scanning Sensor for Greenhouse Spray Applications
HighlightsAn algorithm was developed to process laser sensor data to make more accurate measurements of canopy dimensions.The algorithm isolated individual canopies, removed distortion, and estimated the occluded portions of the dataset.The algorithm reduced measured error by 46% in terms of root mean square error (RMSE).The RMSE was higher for sensor heights below and above a calculated optimal sensor height.Abstract. Laser-guided intelligent spray technology for greenhouse applications requires sensors that can accurately measure plant dimensions. This study proposed a new method to overcome current limitations by introducing a processing algorithm that manipulates the noisy dataset and determines the optimal sensor height to produce better measurements of the canopy width. The processing algorithm involves a combination of registration, clustering, and mirroring. Registration aligns multiple scans of the same scene to improve resolution. Clustering isolates individual plant canopies from the dataset to enable further processing. Mirroring is used to resolve the problems of distortion and occlusion and predict missing information in the dataset. The performance of the processing algorithm was evaluated by calculating the root mean square error (RMSE) in the canopy width measurements. Its results were compared with the measurements reported in earlier research, where there was limited processing of the laser sensor data. The processing algorithm reduced RMSE values by 46% compared to the earlier research, and the largest improvements were seen for objects placed beyond 1.5 m from the sensor. The sensor height was observed to be inversely proportional to the RMSE values. The average RMSE of the processing algorithm was 25 mm, compared to 47 mm in the earlier research when the laser sensor was at a height of 1 m. Another experimental setup was used to test the limits of the relationship between sensor height and algorithm performance while using objects that were more representative of plant canopy shapes. The accuracy of the processing algorithm decreased when the sensor height was either above or below the optimal sensor height, which was derived from calculations made in earlier research. The processing algorithm has potential to improve spray efficiencies. Keywords: Automation, Clustering, LiDAR, Point cloud data processing, Variable-rate spray.
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来源期刊
Transactions of the ASABE
Transactions of the ASABE AGRICULTURAL ENGINEERING-
CiteScore
2.30
自引率
0.00%
发文量
0
审稿时长
6 months
期刊介绍: This peer-reviewed journal publishes research that advances the engineering of agricultural, food, and biological systems. Submissions must include original data, analysis or design, or synthesis of existing information; research information for the improvement of education, design, construction, or manufacturing practice; or significant and convincing evidence that confirms and strengthens the findings of others or that revises ideas or challenges accepted theory.
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