Machine learning to classify animal species in camera trap images: applications in ecology
收藏DataONE2020-06-30 更新2025-04-19 收录
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Motionâactivated cameras (âcamera trapsâ) are increasingly used in ecological and management studies for remotely observing wildlife and are amongst the most powerful tools for wildlife research. However, studies involving camera traps result in millions of images that need to be analysed, typically by visually observing each image, in order to extract data that can be used in ecological analyses.
We trained machine learning models using convolutional neural networks with the ResNetâ18 architecture and 3,367,383 images to automatically classify wildlife species from camera trap images obtained from five states across the United States. We tested our model on an independent subset of images not seen during training from the United States and on an outâofâsample (or âoutâofâdistributionâ in the machine learning literature) dataset of ungulate images from Canada. We also tested the ability of our model to distinguish empty images from those with animals in another outâofâsample dataset fr...
创建时间:
2025-04-06



