Remote Sensing and GIS for Habitat Quality Monitoring: New Approaches and Future Research
Abstract
:- “Habitat quality” is a concept mostly used in ecology and conservation, defined as the ability of the environment to provide conditions appropriate for individual and population persistence [2].
- “Ecosystem health” is a metric originating from the science of systems, combining system vigour, resilience and organization [3].
- Finally, “conservation status” is the concept most favoured by protected area management, defined as “the sum of the influences acting on a natural habitat and its typical species that may affect its long-term natural distribution, structure and functions as well as the long-term survival of its typical species within the territory” [4].
- At level 1, the mapping of habitat location, the operationalisation of the country-wide application of remote sensing is an important frontier. In our Special Issue, Lindgren et al. [20] provide an operational example of data integration for systematic landscape inventorying on a national scale.Several studies in our Special Issue explore grasslands, which are rarely investigated from the remote sensing perspective. Grasslands require very high spatial resolution, but also pose problems to remote sensing since they are spectrally very similar. Using airborne hyperspectral imagery, Burai et al. successfully mapped up to 20 grassland classes [21] and Zlinszky et al. reached a spatial resolution up to 0.5 m using dual-season full-waveform airborne laser scanning [22,23]. Grasslands also necessitate an alternative approach to categorization: successful examples include using fuzzy set theory to determine probabilities of class membership [23], or the study of Neumann et al. where floristic composition was investigated using species ordination without using classes at all [24].
- At level 2, new sensors and new processing algorithms have allowed mapping the main driver of habitat quality at a range of spatial scales. Mandlburger et al. have coupled airborne laser bathymetry [25] with a hydrodynamic model at the micro-habitat and meso-habitat scale to predict habitat quality for nase (Chondrostoma nasus) and how this is changed by flood events. Levick et al. applied high-density airborne laser scanning to map invasion of savannah ecosystems by an alien grass species (Andropogon gayanus) [26] at sub-regional to regional scale. Monitoring grassland management at large scales is also a challenge: MODIS data time series were successfully processed by Halabuk et al. to infer meadow cutting regimes at the scale of a whole country [27].
- At level 3, the mapping of biodiversity and conservation status, verification is an important issue, typically done through the presence and absence of the species of interest. However, in our Special Issue, several alternatives for verification are presented. Hill et al. deployed a network of nest boxes equipped with scales, directly measuring the breeding success of songbirds and correlating this with forest structure quantified from airborne laser scanning [28].Multiple indicator datasets allow an investigation of synergies and trade-offs between habitat quality from the perspective of several taxonomic and functional groups. An example of this is the correlation of satellite imagery and laser scanning-derived indices with the abundance and species richness of birds and flying and ground-dwelling insects by Lindberg et al. [29].Integration with current terrestrial habitat quality monitoring schemes is also an important requirement that is often considered impossible to meet due to the complexity of habitat quality [30]. The most extensive habitat monitoring scheme in Europe (or in fact, globally) is arguably the Natura 2000 programme, where each EU member state develops its own guidelines for field-based conservation status monitoring. These guidelines require detailed surveying of many ecologically relevant variables, most of these classically considered out of reach for remote sensing [30]. Neumann et al. [24] meticulously calculated vegetation species composition of each pixel based on an analysis of hyperspectral imagery, and from this successfully inferred Natura 2000 conservation status for a site where field access is problematic due to the presence of unexploded military ordnance. Zlinszky et al. [23] successfully mapped 12 out of 13 conservation status parameters requested by the local field-based monitoring guidelines using airborne LIDAR, and integrated the resulting datasets using the weighting prescribed by the same scheme. The result was a remote sensing-derived conservation status map that meets the requirements of Natura 2000 monitoring.
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Zlinszky, A.; Heilmeier, H.; Balzter, H.; Czúcz, B.; Pfeifer, N. Remote Sensing and GIS for Habitat Quality Monitoring: New Approaches and Future Research. Remote Sens. 2015, 7, 7987-7994. https://doi.org/10.3390/rs70607987
Zlinszky A, Heilmeier H, Balzter H, Czúcz B, Pfeifer N. Remote Sensing and GIS for Habitat Quality Monitoring: New Approaches and Future Research. Remote Sensing. 2015; 7(6):7987-7994. https://doi.org/10.3390/rs70607987
Chicago/Turabian StyleZlinszky, András, Hermann Heilmeier, Heiko Balzter, Bálint Czúcz, and Norbert Pfeifer. 2015. "Remote Sensing and GIS for Habitat Quality Monitoring: New Approaches and Future Research" Remote Sensing 7, no. 6: 7987-7994. https://doi.org/10.3390/rs70607987
APA StyleZlinszky, A., Heilmeier, H., Balzter, H., Czúcz, B., & Pfeifer, N. (2015). Remote Sensing and GIS for Habitat Quality Monitoring: New Approaches and Future Research. Remote Sensing, 7(6), 7987-7994. https://doi.org/10.3390/rs70607987