Crossing the Great Divide: Bridging the Researcher–Practitioner Gap to Maximize the Utility of Remote Sensing for Invasive Species Monitoring and Management
Abstract
:1. Introduction
2. Materials and Methods
3. Results
3.1. Remote Sensing Applications to Invasive Species Mapping and Management
3.1.1. Mismatches
3.1.2. Basic Data Needs and Satellite Imagery Obstacles
Case Study: Hemlock Woolly Adelgid
3.2. Restoration and Regeneration
3.3. Role of Students and Universities
4. Discussion
4.1. Lessons Learned from Researcher–Practitioner Collaborations
- Some practitioner groups may rely on volunteeers or interns for much of their field data collection. These practitioner groups often also have limited resources and/or access to staff with specialized training in acquiring and analyzing RS imagery and data products. This is a major barrier to the integration of sophisticated RS approaches described in the scientific literature into practitioner monitoring and management efforts. As such, there is a real need for easily replicated RS products and workflows that rely on freely available data and tools. Ease of replication is essential to keep these RS approaches consistent, and to prevent wasted efforts from one-off case studies or applications. Practitioners would benefit from the ability to update these products over time as new imagery becomes available and without commissioning RS researchers.
- Satellite RS imagery is often more efficient at detecting the evidence of invasive species rather than the invasive species itself. For example, in the case of HWA, RS products can detect areas of declining forest health likely related to an HWA infestation, but not the insect itself. This was highly informative to the practitioner community and provided a better understanding of both the capacity and limitations of these technologies. This highlights the importance of clear communication regarding what can actually be detected versus what needs to be inferred indirectly by RS analyses.
- RS products are only as good as the field data used to calibrate and validate the resultant models. Resources for research are often quite limited, and this can be especially true for research focused on ecological applications. However, we found there to be real synergistic opportunities through collaborations between researchers and practitioners. Practitioners regularly send crews to field sites to assess a variety of attributes related to detection of invasive species and characterizations of the ecological impacts of these invasive species. However, as our researchers learned, the methods used by field crews may not be consistent across the different organizations conducting these surveys and the types of data being collected, while suitable for practitioner objectives, can be of limited use for the development of RS models. For example, practitioners might characterize infestation or forest health metrics at a stand scale, which can be much larger than the spatial resolution of the RS imagery used by researchers. Because these stands typically exhibit a high degree of spatial heterogeneity, a single stand-level metric often does not provide the spatial resolution necessary for pairing with RS imagery. A similar scale mismatch occurs when field data refer to individual trees, which are typically much smaller than satellite RS spatial resolution; thus the problem can exist in either of two ways.
- Metrics of “success” can vary considerably between researchers and practitioners. As we discussed earlier, field-based surveys are the most commonly used approach by practitioners to map the distribution of invasive species. These surveys are the most effective way to find the actual organism of concern (e.g., the poppyseed-sized HWA can be physically observed). However, in the words of the practitioners on our team, this approach “is a bit like throwing darts in the dark” and has a low success rate at finding new occurrences, particularly for emerging pests. As such, easy to use RS products that can identify the locations of hemlock trees (in the case of HWA) and areas where stands might be in a state of decline can greatly improve the efficacy and efficiency of their mapping and monitoring efforts. This is out of step with metrics of “success” typically used by the scientific community and can result in the scientific community overlooking important RS approaches that can significantly benefit practitioner communities.
4.1.1. Workshops and Stakeholder Meetings
4.1.2. The Importance of Field Data for Remote Sensing
4.1.3. Engaging with Civic Ecologists and Community-Based Monitoring Programs
4.1.4. Open Data
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Metrics | Field Variables | Benefit to RS | Collection Methods | Challenges for Implementation | Typically Measured? |
---|---|---|---|---|---|
Location and Date | Latitude, longitude, date, and time | Spatially and temporally explicit measurements. | GPS receiver | Some expertise and equipment required. | Yes |
Structure | Tree height | Accounts for variation in heights between field plots that can affect RS signals. | Hypsometer | Some expertise and equipment required. | No |
Leaf angle distribution | Provides context for the reflectance of vegetation and serves as a key parameter for measuring other vegetation metrics with RS, such as LAI. | Field assessment | High expertise and time-consuming. | No | |
Composition | Tree species | Provides context for the reflectance of vegetation and the composition of the RS signal. | Field assessment | Some expertise and time required. | Not generally done for hemlock surveys |
Relative Leaf Chlorophyll Content | Provides context for the reflectance of vegetation and common RS indices such as NDVI. | Laboratory assessment | High expertise, time-consuming, and equipment required. | No | |
Background/Landcover | Accounts for variation in landscape composition. | Field assessment | Relatively easy to acquire. | Not regularly taken | |
Spectrometer (highly detailed) | High expertise, time-consuming, and expensive equipment required. | ||||
Satellite data products | Some expertise required. | ||||
Condition | Canopy Transparency and/or Crown Vigor | A measure of foliage gain/loss. | Field assessment | Some expertise required. | Yes |
Hemispherical photography | Some expertise and equipment required. | ||||
LAI | A measure of foliage gain/loss. | LAI Plant Canopy Analyzer | High expertise and expensive equipment required. | No | |
Hemispherical photography | Some expertise and equipment required. | ||||
Mortality | A binary measure of the impacts of an invasive. | Field assessment | Relatively easy to acquire. | Sometimes | |
Aerial survey | High expertise and expense required. | ||||
Presence (and ideally, absence) of the invasive | A binary measure of invasive occurrence. | Field assessment | Some expertise required. | Yes | |
Abundance of the invasive | A continuous measure of invasive occurrence. | Field assessment | Some expertise required. | Yes |
App Name | Description | User Groups | Platforms |
---|---|---|---|
Healthy Trees Healthy Cities | Health check module tracks tree health using non-stressor-specific symptoms. Pest check module records signs and symptoms of pests. | Civic Ecologists, Scientists, Land Managers | Apple, Android, Web |
iMapInvasives | Tracks invasive species and management efforts. | Civic Ecologists, Scientists, Land Managers, Land Owners | Apple, Android, Web |
Forest Tree Diagnosis | Decision support tool for identifying signs and symptoms of common pests and diseases of economically important tree species in the eastern U.S. | Foresters, Landowners, Land Managers | Android |
EDD MapS | Mapping system for documenting invasive species and pest distribution. | Civic Ecologists, Educators, Land Managers, Conservation Biologists | Apple, Android, Web |
Wild Spotter | Engaging and empowering the public to help find, map, and prevent invasive species in America’s wilderness areas. | Civic Ecologists | Apple, Android |
Inaturalist | Record and share observations of plants and animals. | Civic Ecologists/Scientists | Apple/Android |
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Parker, K.; Elmes, A.; Boucher, P.; Hallett, R.A.; Thompson, J.E.; Simek, Z.; Bowers, J.; Reinmann, A.B. Crossing the Great Divide: Bridging the Researcher–Practitioner Gap to Maximize the Utility of Remote Sensing for Invasive Species Monitoring and Management. Remote Sens. 2021, 13, 4142. https://doi.org/10.3390/rs13204142
Parker K, Elmes A, Boucher P, Hallett RA, Thompson JE, Simek Z, Bowers J, Reinmann AB. Crossing the Great Divide: Bridging the Researcher–Practitioner Gap to Maximize the Utility of Remote Sensing for Invasive Species Monitoring and Management. Remote Sensing. 2021; 13(20):4142. https://doi.org/10.3390/rs13204142
Chicago/Turabian StyleParker, Kelsey, Arthur Elmes, Peter Boucher, Richard A. Hallett, John E. Thompson, Zachary Simek, Justin Bowers, and Andrew B. Reinmann. 2021. "Crossing the Great Divide: Bridging the Researcher–Practitioner Gap to Maximize the Utility of Remote Sensing for Invasive Species Monitoring and Management" Remote Sensing 13, no. 20: 4142. https://doi.org/10.3390/rs13204142
APA StyleParker, K., Elmes, A., Boucher, P., Hallett, R. A., Thompson, J. E., Simek, Z., Bowers, J., & Reinmann, A. B. (2021). Crossing the Great Divide: Bridging the Researcher–Practitioner Gap to Maximize the Utility of Remote Sensing for Invasive Species Monitoring and Management. Remote Sensing, 13(20), 4142. https://doi.org/10.3390/rs13204142