Spelling suggestions: "subject:"wildlife conservation"" "subject:"wildlife konservation""
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Area-sensitivity, landscape habitat associattions and distribution of breeding marsh birds within the glaciated region of Ohio, USA.Kahler, Benjamin M. 27 August 2013 (has links)
No description available.
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Landscape Genetics, Demographic Models and Conservation of the Eastern Massasauga Rattlesnake (Sistrurus catenatus)Martin, Scott Anthony 16 August 2022 (has links)
No description available.
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Chronic stress and conservation: Applying allostatic load to lemurs in human care and native rangesSeeley, Kathryn E. January 2022 (has links)
No description available.
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Edge Machine Learning for Wildlife Conservation : A part of the Ngulia project / Maskininlärning i Noden för Bevarandet av Djurlivet på Savannen : En del av Ngulia projektetGotthard, Richard, Broström, Marcus January 2023 (has links)
The prominence of Edge Machine Learning is increasing swiftly as the performance of microcontrollers continues to improve. By deploying object detection and classification models on edge devices with camera sensors, it becomes possible to locate and identify objects in their vicinity. This technology finds valuable applications in wildlife conservation, particularly in camera traps used in African sanctuaries, and specifically in the Ngulia sanctuary, to monitor endangered species and provide early warnings for potential intruders. When an animal crosses the path of a an edge device equipped with a camera sensor, an image is captured, and the animal's presence and identity are subsequently determined. The performance of three distinct object detection models: SSD MobileNetV2, FOMO MobileNetV2, and YOLOv5 is evaluated. Furthermore, the compatibility of these models with three different microcontrollers ESP32 TimerCam from M5Stack, Sony Spresence, and LILYGO T-Camera S3 ESP32-S is explored. The deployment of Over-The-Air updates to edge devices stationed in remote areas is presented. It illustrates how an edge device, initially deployed with a model, can collect field data and be iteratively updated using an active learning pipeline. This project evaluates the performance of three different microcontrollers in conjunction with their respective camera sensors. A contribution of this work is a successful field deployment of a LILYGO T-Camera S3 ESP32-S running the FOMO MobileNetV2 model. The data captured by this setup fuels an active learning pipeline that can be iteratively retrain the FOMO MobileNetV2 model and update the LILYGO T-Camera S3 ESP32-S with new firmware through Over-The-Air updates. / Project Ngulia
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Distribution of woodpecker activity relative to wooden utility structure usage in the southeastern United StatesWright, Hannah Chelsea 06 August 2021 (has links)
Woodpeckers are a group of avian species that cause damage to wooden power utility structures. In the southeastern United States, Tennessee Valley Authority (TVA), has accrued an estimated $5 million USD annually from woodpecker damage. Previous work has focused on effectiveness of reactive mitigation and restoration efforts with little investigation of preventative methods. To address this knowledge gap, this study will i) use species distribution model techniques to predict damage suitability across the TVA service area, ii) use Bayesian hierarchical community model techniques to estimate species richness of the woodpecker community in the service area, and iii) recommend target areas for increased preventative measures in the service area. The suitability map indicated that damage was most likely to occur in the southwestern portions of the TVA service area. Woodpecker species richness was stable across the environmental covariate values estimated with 2-3 species found throughout the service area.
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Easily Overlooked: Modelling coastal dune habitat occupancy of threatened and endangered beach mice (Peromyscus polionotus spp.) using high-resolution aerial imagery and elevation models of the Northern Gulf of MexicoBurger, Wesley 07 August 2020 (has links)
The Gulf of Mexico dune system is a broad and dynamic environment that varies greatly in geomorphology and vegetative composition across the Gulf coastline. Beach mice (Peromyscus polionotus spp.) are an endangered species that rely on coastal habitat structure. I hypothesized that beach mouse occupancy would be dependent upon coastal dune land cover and landform features. I identified coastal landforms using high-resolution elevation data and landform models in GRASS GIS and identified coastal dune vegetation classes using high-resolution aerial imagery and object oriented vegetation classification. These features were used to create a dynamic occupancy model to determine occupancy patterns in three subspecies of beach mice over multiple years of sampling. Beach mice demonstrated no distinct pattern in habitat occupancy over the study period. However, dynamic occupancy models demonstrated that habitat occupancy varied between individual sites, indicating that habitat selection may be population specific.
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Movement and Ecology of the Eastern Box Turtle(Terrapene carolina carolina) in a Heterogeneous LandscapeWilson, Steven D. 12 April 2012 (has links)
No description available.
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Gene Flow Patterns of the Five Lined Skink (Eumeces Fasciatus) in the Fragmented Landscape of Northeast OhioBuk, Tara B. 23 May 2014 (has links)
No description available.
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Effects of Flood Pulsing and Predation on Larval AnuransWalker, Matthew P. 23 April 2014 (has links)
No description available.
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Space Use by Coyotes (Canis latrans) in an Urbanizing Landscape, and Implications for ManagementFranckowiak, Gregory Allen 16 May 2014 (has links)
No description available.
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