Using the Multiple-Sensor-Based Frost Observation System (MFOS) for Image Object Analysis and Model Prediction Evaluation in an Orchard
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area (Apple Farm)
2.2. Observation System
2.3. Extraction of MFOS Surface Temperature
2.3.1. Object Surface Temperature Calculation and Accuracy
2.3.2. Apple Surface Temperature
2.4. Numerical Forecasting Models
3. Results and Discussion
3.1. Preliminary Test: Evaluation of MFOS Surface Temperature
3.1.1. Apple Surface Temperature
3.1.2. LWS Surface Temperature
3.1.3. Comparison of Apple and LWS Surface Temperatures
3.2. Actual Test: Evaluation of Frost Prediction Using MFOS
3.2.1. Case 1 (18 October 2022)
3.2.2. Case 2 (24 October 2022)
4. Summary and Concluding Remarks
- (1)
- Installing and operating this system in an apple orchard confirmed that the accuracy and efficiency of the automatic frost observation improved for both weak and robust frost events, thereby enhancing the usefulness of this observation system as an input for frost prediction models.
- (2)
- Resolution matching of the RGB and thermal infrared images was performed by resizing the images, matching them through horizontal movement, and conducting apple-centered averaging.
- (3)
- An evaluation of the frost forecast results from the LAMP/WRF numerical model showed that frost forecast evaluations could be conducted hourly, and the model could be validated in a shorter time by increasing its output frequency.
- (4)
- When objects were partially obscured by obstacles such as leaves, the accuracy significantly decreased, leading to failure in object detection. Unlike fruits, the wind sways tree leaves, and their position changes considerably depending on the time of image capture, resulting in relatively low accuracy in surface temperature estimation. Further research should be conducted on this topic, which will help in developing techniques for measuring the temperatures of various parts of crops.
- (1)
- To observe fruit tree surface temperatures in summer to examine the applicability of the studied system in high temperatures, such as during heat waves;
- (2)
- To upgrade the classification algorithm to estimate the surface temperatures of fruit trees using LWS and observe fruit damage from low and high temperatures;
- (3)
- To keep producing image (and video) observations for use in frost prediction models, and include them in a database;
- (4)
- To improve the representation of surface vegetation in the numerical weather model so that orchard farms can be more realistically implemented (e.g., [22]).
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Kim, S.H.; Lee, S.-M.; Lee, S.-J. Using the Multiple-Sensor-Based Frost Observation System (MFOS) for Image Object Analysis and Model Prediction Evaluation in an Orchard. Atmosphere 2024, 15, 906. https://doi.org/10.3390/atmos15080906
Kim SH, Lee S-M, Lee S-J. Using the Multiple-Sensor-Based Frost Observation System (MFOS) for Image Object Analysis and Model Prediction Evaluation in an Orchard. Atmosphere. 2024; 15(8):906. https://doi.org/10.3390/atmos15080906
Chicago/Turabian StyleKim, Su Hyun, Seung-Min Lee, and Seung-Jae Lee. 2024. "Using the Multiple-Sensor-Based Frost Observation System (MFOS) for Image Object Analysis and Model Prediction Evaluation in an Orchard" Atmosphere 15, no. 8: 906. https://doi.org/10.3390/atmos15080906
APA StyleKim, S. H., Lee, S. -M., & Lee, S. -J. (2024). Using the Multiple-Sensor-Based Frost Observation System (MFOS) for Image Object Analysis and Model Prediction Evaluation in an Orchard. Atmosphere, 15(8), 906. https://doi.org/10.3390/atmos15080906