Application of a Continuous Terrestrial Photogrammetric Measurement System for Plot Monitoring in the Beijing Songshan National Nature Reserve
Abstract
:1. Introduction
2. Materials and Methods
2.1. The Profile of the Study Sites
2.2. Development of the PDA Photogrammetry-Based Dendrometer
2.3. Continuous Terrestrial Photogrammetry in Stand Plots
2.3.1. Adjustment Algorithm for Image Correction
2.3.2. Development of Forest Sample Plot Continuous Photogrammetry Software
2.3.3. 3D Point Cloud Modeling and Measuring of Stand Plot
2.4. Additional Surveying of Individual Trees’ Height and DBH
2.4.1. Analytic Algorithm for remote TREE Measurement
2.4.2. Development of Remote Tree Measurement Software
3. Results and Discussion
3.1. Pre-Experiment Preparation
3.2. Experimental Analysis of Continuous Photogrammetry in Stand Plots
- (1)
- The accelerometer in the PDA photogrammetry-based dendrometer is subject to dynamic errors, and gyroscopic drift will induce an orientation angle measurement error. In addition, the idiosyncrasies of the IMU will cause the navigation error to accumulate with time, which will have a negative impact on the navigation precision.
- (2)
- The PDA photogrammetry-based dendrometer’s GPS unit may encounter an unstable or interrupted satellite signal when in a moving vehicle, which will affect the positioning precision.
- (3)
- The stand plot continuous photogrammetric measurement system consists of an integrated PDA photogrammetry-based dendrometer accelerometer, gyroscope, IMU, and GPS. The system integration process and data processing will inevitably generate errors, and the fact that photogrammetry is influenced by the external environment will lead to eccentricity errors, time synchronization errors, and iteration errors in the data processing.
- (4)
- Although the PDA photogrammetry-based dendrometer’s internal orientation elements are assessed and tested, the internal orientation elements will vary slightly in a cyclic fashion with increasing time. Due to the differences between the field survey environments and the laboratory testing environment, the fixed errors of the internal orientation elements will directly affect the positioning precision.
- (5)
- Errors in the integration of the system’s different technologies will lead to some eccentricity between the PDA photogrammetry-based dendrometer’s four independent systems: namely, the accelerometer, gyroscope, IMU, and GPS. Angular eccentricity and eccentric components will exist in the three axial directions, and will directly impact the positioning precision; the angular eccentricity and eccentric components also must be corrected by a calibration facility, and the calibration facility’s fixed errors will further influence positioning results.
3.3. Experimental Analysis of Remote Tree Measurement
4. Conclusions
- (1)
- In response to the hardware problems of the existing system, such as the high cost of the measuring instruments, low measurement efficiency, inconvenience of transporting the instruments, and complicated operation, a PDA photogrammetric dendrometer system was researched and developed that is portable, easy to operate, and affordable. This instrument can obtain image, azimuth, and coordinates accurately and efficiently.
- (2)
- Related to the problems of poor effectiveness and low precision in the reconstruction of ground photogrammetric 3D points, an optimized adjustment algorithm for image correction and software for stand plot continuous photogrammetric measurement were developed. The software can correct, match, and optimize information such as the photograph, azimuth, and coordinates, and can import the optimized images into 3D modeling software to reconstruct 3D stand point clouds.
- (3)
- To address problems such as the difficulty of taking measurements under complex terrain conditions and the loss of point clouds during the 3D reconstruction process, an analytic algorithm and software for remote tree measurement were developed. The software is embedded in the PDA photogrammetric dendrometer, so it can perform remote supplementary measurements of DBH and tree height in inaccessible or missed areas.
Author Contributions
Funding
Conflicts of Interest
Appendix A
Appendix B
Appendix C
Appendix D
Appendix E
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Investigation Factor | A-Level Error | B-Level Error | C-Level Error |
---|---|---|---|
Sub-compartment area | 5 | 5 | 5 |
Tree species composition | 5 | 10 | 20 |
Tree height | 5 | 10 | 15 |
DBH | 5 | 10 | 15 |
Age | 10 | 15 | 20 |
Canopy density | 5 | 10 | 15 |
Sectional area per hectare | 5 | 10 | 15 |
Volume per hectare | 15 | 20 | 25 |
Number of tree per hectare | 5 | 10 | 15 |
Bias | Bias% | RMSE | RSME% | |
---|---|---|---|---|
DBH (cm) | 0.3531 | 0.8784 | 2.3942 | 5.9563 |
Bias | Bias% | RMSE | RSME% | |
---|---|---|---|---|
Tree Height (m) | −0.0190 | 0.5704 | −0.1988 | 5.9634 |
Bias | Bias% | RMSE | RSME% | |
---|---|---|---|---|
DBH (cm) | −0.0636 | 0.5545 | −0.4097 | 3.5736 |
Bias | Bias% | RMSE | RSME% | |
---|---|---|---|---|
Tree Height (m) | −0.0139 | 0.6507 | −0.1435 | 6.6971 |
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Qiu, Z.; Feng, Z.; Jiang, J.; Lin, Y.; Xue, S. Application of a Continuous Terrestrial Photogrammetric Measurement System for Plot Monitoring in the Beijing Songshan National Nature Reserve. Remote Sens. 2018, 10, 1080. https://doi.org/10.3390/rs10071080
Qiu Z, Feng Z, Jiang J, Lin Y, Xue S. Application of a Continuous Terrestrial Photogrammetric Measurement System for Plot Monitoring in the Beijing Songshan National Nature Reserve. Remote Sensing. 2018; 10(7):1080. https://doi.org/10.3390/rs10071080
Chicago/Turabian StyleQiu, Zixuan, Zhongke Feng, Junzhiwei Jiang, Yicheng Lin, and Shaolong Xue. 2018. "Application of a Continuous Terrestrial Photogrammetric Measurement System for Plot Monitoring in the Beijing Songshan National Nature Reserve" Remote Sensing 10, no. 7: 1080. https://doi.org/10.3390/rs10071080
APA StyleQiu, Z., Feng, Z., Jiang, J., Lin, Y., & Xue, S. (2018). Application of a Continuous Terrestrial Photogrammetric Measurement System for Plot Monitoring in the Beijing Songshan National Nature Reserve. Remote Sensing, 10(7), 1080. https://doi.org/10.3390/rs10071080