Temperature/Emissivity Separation of Typical Grassland of Northwestern China Based on Hyper-CAM and Its Potential for Grassland Drought Monitoring
Abstract
:1. Introduction
2. Test Area
3. Specification of Hyper-CAM
4. Methodology and Experiments
4.1. Temperature/Emissivity Separation Algorithm for Hyper-CAM Dataset
4.2. Experimental Design and Collection of Datasets
4.2.1. Experiment 1
Observation Targets
Artemisia subulata Nakai
Polygonum divaricatum
Haplophyllum dauricum
Potentilla chinensis
Cichorium intybus
Stipa capillata
Observation Target: Artemisia frigida
4.2.2. Experiment 2
5. Results and Discussion
5.1. Research on the Characteristics of the Emissivity Curves of Different Types of Grassland Vegetation Based on Experiment 1
5.1.1. Temperature and Emissivity Retrieval of Haplophyllum dauricum
5.1.2. Temperature and Emissivity Retrieval of Artemisia subulata Nakai and Stipa capillata
5.1.3. Temperature and Emissivity Retrieval of Potentilla chinensis
5.1.4. Temperature and Emissivity Retrieval of Cichorium intybus
5.1.5. Temperature and Emissivity Retrieval of Polygonum divaricatum
5.2. Characteristic Changes in the Emissivity of Artemisia annua under Different Moisture Conditions Based on Experiment 2
6. Conclusions and Suggestions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Habitat Distribution Types | Cosmopolitan | Pantropic | Temperate | |
---|---|---|---|---|
Plant Species Types | ||||
Carex Meadow | 70.8% | 4.2% | 20.8% | |
Typical Steppe | 85% | 5% | 10% | |
Sandy Vegetation | 69.2% | 7.7% | 23.1% | |
Artificial Populus Davidiana Forests | 75% | 10% | 15% | |
Salix Pentandra Meadow | 82.4% | 7.6% | ||
Achnatherum Splendens Meadow | 87.5% | 12.5% |
Parameters | Unit | Mini. | Typical | Max. |
---|---|---|---|---|
Spectral range | μm | 8 | 11 | |
Spectral resolution | cm−1 | 0.25 | 4 | 150 |
Spatial resolution | pixels | 320 × 256 | ||
Single beam FOV | Mrad | 0.35 | ||
Noise equivalent | nW/cm2 sr cm−1 | 25 at 10 um | ||
Radiometric accuracy | K | <1 | ||
Commucation | Ethernet 10/100 Mbps | Ethernet 10/100 Mbps | ||
Data transfer | Cameral Link | |||
Detector cooling | Closed Cycle | |||
Weight | kg | 27 |
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Liu, P.; Huo, H.; Guo, L.; Leng, P.; He, L. Temperature/Emissivity Separation of Typical Grassland of Northwestern China Based on Hyper-CAM and Its Potential for Grassland Drought Monitoring. Remote Sens. 2022, 14, 4809. https://doi.org/10.3390/rs14194809
Liu P, Huo H, Guo L, Leng P, He L. Temperature/Emissivity Separation of Typical Grassland of Northwestern China Based on Hyper-CAM and Its Potential for Grassland Drought Monitoring. Remote Sensing. 2022; 14(19):4809. https://doi.org/10.3390/rs14194809
Chicago/Turabian StyleLiu, Pengfei, Hongyuan Huo, Li Guo, Pei Leng, and Long He. 2022. "Temperature/Emissivity Separation of Typical Grassland of Northwestern China Based on Hyper-CAM and Its Potential for Grassland Drought Monitoring" Remote Sensing 14, no. 19: 4809. https://doi.org/10.3390/rs14194809