Ice Velocity in Upstream of Heilongjiang Based on UAV Low-Altitude Remote Sensing and the SIFT Algorithm
Abstract
:1. Introduction
2. Materials and Methods
2.1. Overview of the Research Area
2.2. Research Method
2.2.1. Feature Point Selection
2.2.2. Feature Point Matching
2.2.3. Match Result Filtering
2.2.4. Ice Velocity Calculation
3. Results
4. Discussion
4.1. Ice Velocity Analysis
4.2. Ice Velocity Verification
5. Conclusions
- Feature points were selected as local extreme points. Only ice surfaces, edges, and corners can produce dense and stable feature points. The SIFT algorithm provided the advantages of high precision and notable robustness. The SIFT and RANSAC algorithms were jointly employed to track the feature points, which realized ice velocity monitoring.
- At 16:00 on 25 April 2021, the ice velocity was mostly in the range 2.40~2.50 m/s, accounting for 30.02% of all velocity values. The maximum, minimum, and average ice velocities were2.65 m/s, 1.11 m/s, and 2.00 m/s, respectively. At 8:00 on 26 April 2021, the ice velocity was mainly in the range 0.90~1.00 m/s, accounting for 50.33% of all velocity values. The maximum, minimum, and average ice velocities were1.04 m/s, 0.38 m/s, and 0.74 m/s, respectively. The areas with the highest ice velocity in the studied reach were concentrated on the right side of the river center, and the ice velocity tended to decrease toward the banks on both sides. In addition, based on the ice velocity field, ice accumulation formation on the bank slope was highly related to the ice velocity.
- Under the influence of illumination changes and ice collisions, the local extreme points varied. The matching results were further screened with the RANSAC algorithm. The error between the ice velocity obtained with the SIFT algorithm and the manually calculated ice velocity was less than 0.02 m/s, which was in line with the actual situation.
- Compared to traditional ice velocity monitoring methods, the proposed method attained a high precision, and greatly reduced time and labor costs. The research method in this paper provides a new technical means for large-scale ice change information monitoring. In the future, we can perform further research on ice jams and ice dams based on this technique.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Wang, E.; Hu, S.; Han, H.; Li, Y.; Ren, Z.; Du, S. Ice Velocity in Upstream of Heilongjiang Based on UAV Low-Altitude Remote Sensing and the SIFT Algorithm. Water 2022, 14, 1957. https://doi.org/10.3390/w14121957
Wang E, Hu S, Han H, Li Y, Ren Z, Du S. Ice Velocity in Upstream of Heilongjiang Based on UAV Low-Altitude Remote Sensing and the SIFT Algorithm. Water. 2022; 14(12):1957. https://doi.org/10.3390/w14121957
Chicago/Turabian StyleWang, Enliang, Shengbo Hu, Hongwei Han, Yuang Li, Zhifeng Ren, and Shilin Du. 2022. "Ice Velocity in Upstream of Heilongjiang Based on UAV Low-Altitude Remote Sensing and the SIFT Algorithm" Water 14, no. 12: 1957. https://doi.org/10.3390/w14121957
APA StyleWang, E., Hu, S., Han, H., Li, Y., Ren, Z., & Du, S. (2022). Ice Velocity in Upstream of Heilongjiang Based on UAV Low-Altitude Remote Sensing and the SIFT Algorithm. Water, 14(12), 1957. https://doi.org/10.3390/w14121957