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To autonomously detect wildlife images captured by camera traps on a platform with limited resources and address challenges such as filtering out photos without optimal objects, as well as classifying and localizing species in photos with objects, we introduce a specialized wildlife object detector tailored for camera traps. This detector is developed using a dataset acquired by the Saola Working Group (SWG) through camera traps deployed in Vietnam and Laos. Utilizing the YOLOv6-N object detection algorithm as its foundation, the detector is enhanced by a tailored optimizer for improved model performance. We deliberately introduce asymmetric convolutional branches to enhance the feature characterization capability of the Backbone network. Additionally, we streamline the Neck and use CIoU loss to improve detection performance. For quantitative deployment, we refine the RepOptimizer to train a pure VGG-style network. Experimental results demonstrate that our proposed method empowers the model to achieve an 88.3% detection accuracy on the wildlife dataset in this paper. This accuracy is 3.1% higher than YOLOv6-N, and surpasses YOLOv7-T and YOLOv8-N by 5.5% and 2.8%, respectively. The model consistently maintains its detection performance even after quantization to the INT8 precision, achieving an inference speed of only 6.15 ms for a single image on the NVIDIA Jetson Xavier NX device. The improvements we introduce excel in tasks related to wildlife image recognition and object localization captured by camera traps, providing practical solutions to enhance wildlife monitoring and facilitate efficient data acquisition. Our current work represents a significant stride toward a fully automated animal observation system in real-time in-field applications.
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http://dx.doi.org/10.3390/ani14081152 | DOI Listing |
Estimates of abundance are fundamental for the management and conservation of threatened species. The Mahogany Glider () is an Endangered marsupial endemic to the Wet Tropics of northeastern Australia. Despite its status, there is no reliable estimate of abundance.
View Article and Find Full Text PDFHumans, as super predators, influence wildlife behavior through both direct predation and indirect fear effects, prompting spatial and temporal adaptations. In landscapes where human-wildlife coexistence is prevalent, understanding the spatiotemporal strategies employed by rare wildlife in response to anthropogenic disturbance is essential for effective biodiversity conservation. From July 2019 to September 2024, we deployed 62 camera traps in the Kazila Mountain region of Yajiang County, Sichuan Province, resulting in 6204 independent detections of rare wildlife and 722 recorded human activity events.
View Article and Find Full Text PDFViruses
July 2025
Department of Fisheries, Wildlife and Conservation Biology, University of Minnesota, 2003 Upper Buford Circle, Suite 135, St. Paul, MN 55108, USA.
White-tailed deer () in the wild and on cervid farms have drawn the attention of state wildlife agencies and animal health agencies as Chronic Wasting Disease (CWD) has spread across North America. Deer farm regulations have been implemented to reduce direct contact between wild and farmed cervids; however, evidence suggests that indirect contact to infectious prions passed through the alimentary tracts of scavengers may be an important transmission pathway. The objective of this study was to characterize mammalian scavenger and wild deer activities associated with deer farms and link these activities with site-specific spatial covariates utilizing a network of camera traps, mounted to farm perimeter fences.
View Article and Find Full Text PDFEcohealth
August 2025
Department of Biotechnology & Microbiology, School of Sciences, Noida International University, Greater Noida, Gautam Budh Nagar, Uttar Pradesh, India.
Environmental monitoring is essential for understanding and minimizing human impact on ecosystems. Traditional methods like manual sampling and laboratory testing, while accurate, are often costly, time-consuming, and difficult to scale, especially in low-resource settings. Artificial intelligence (AI) is increasingly addressing these limitations by enabling automated data collection, real-time analysis, and predictive modeling.
View Article and Find Full Text PDFJ Anim Ecol
August 2025
Department of Life Science, Tunghai University, Taichung, Taiwan.
As behavioural and physiological processes can be costly for animals to employ, deception and other dishonest strategies may become necessary for sit-and-wait predators. Sheet-web spiders Psechrus clavis have been known to use their body colour and webs as visual cues to deceptively lure and immediately consume lepidopteran insects. However, they do not immediately consume trapped male fireflies Diaphanes lampyroides; instead, the spiders retain them in their webs while the fireflies continue to emit their bioluminescent signal for up to an hour.
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