| Literature DB >> 31261757 |
Jorge Martinez-Guanter1, Ángela Ribeiro2, Gerassimos G Peteinatos3, Manuel Pérez-Ruiz4, Roland Gerhards3, José María Bengochea-Guevara2, Jannis Machleb3, Dionisio Andújar5.
Abstract
Plant modeling can provide a more detailed overview regarding the basis of plant development throughout the life cycle. Three-dimensional processing algorithms are rapidly expanding in plant phenotyping programmes and in decision-making for agronomic management. Several methods have already been tested, but for practical implementations the trade-off between equipment cost, computational resources needed and the fidelity and accuracy in the reconstruction of the end-details needs to be assessed and quantified. This study examined the suitability of two low-cost systems for plant reconstruction. A low-cost Structure from Motion (SfM) technique was used to create 3D models for plant crop reconstruction. In the second method, an acquisition and reconstruction algorithm using an RGB-Depth Kinect v2 sensor was tested following a similar image acquisition procedure. The information was processed to create a dense point cloud, which allowed the creation of a 3D-polygon mesh representing every scanned plant. The selected crop plants corresponded to three different crops (maize, sugar beet and sunflower) that have structural and biological differences. The parameters measured from the model were validated with ground truth data of plant height, leaf area index and plant dry biomass using regression methods. The results showed strong consistency with good correlations between the calculated values in the models and the ground truth information. Although, the values obtained were always accurately estimated, differences between the methods and among the crops were found. The SfM method showed a slightly better result with regard to the reconstruction the end-details and the accuracy of the height estimation. Although the use of the processing algorithm is relatively fast, the use of RGB-D information is faster during the creation of the 3D models. Thus, both methods demonstrated robust results and provided great potential for use in both for indoor and outdoor scenarios. Consequently, these low-cost systems for 3D modeling are suitable for several situations where there is a need for model generation and also provide a favourable time-cost relationship.Entities:
Keywords: RGB-D; Structure from Motion; plant phenotyping
Year: 2019 PMID: 31261757 PMCID: PMC6651267 DOI: 10.3390/s19132883
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Position of the shoots during image acquisition.
Figure 2Examples from different perspectives of different crop models reconstructed using Kinect v2 (top) and photogrammetry (bottom) reconstruction methods.
Approximation of time-accuracy for the studied methods. The presented values show an average of the models and the averaged values obtained during the process.
| Distance to plant (cm) | Acquisition time (s) | Processing time (s) | Deviation (mm) | |
|---|---|---|---|---|
| SfM | 50 | 200 | 1800 | 2 |
| RGB-D | 50 | 10 | 30 | 5 |
| Planar | 50 | 1 | 1 | 0 |
Figure 3Regression analyses comparing actual plant height versus estimated height using 3D modeling methods.
Figure 4Regression analyses comparing actual leaf area versus estimated leaf area using 3D modeling methods.
Root mean square error (RMSE) and mean absolute percentage error (MAPE) calculated values for photogrammetry and Kinect v2 methods in three different crops.
| Photogrammetry | Kinect v2 | ||||||
|---|---|---|---|---|---|---|---|
| Maize | Sunflower | Sugar Beet | Maize | Sunflower | Sugar Beet | ||
| Height (cm) | |||||||
| RMSE | 4.48 | 0.89 | 0.81 | 7.58 | 1.68 | 0.91 | |
| MAPE | 3.08 | 2.7 | 4.14 | 4.34 | 3.61 | 3.87 | |
| Leaf Area (cm2) | |||||||
| RMSE | 4393.4 | 1175.7 | 472.7 | 2,2667.7 | 9146.7 | 4033.5 | |
| MAPE | 3.88 | 0.8 | 0.57 | 11.66 | 8.31 | 11.26 | |
Figure 5Regression analyses comparing actual leaf area versus measured dry biomass using 3D modeling methods.