Mapping Industrial Poultry Operations at Scale With Deep Learning and Aerial Imagery

IEEE JOURNAL OF SELECTED TOPICS IN APPLIED EARTH OBSERVATIONS AND REMOTE SENSING(2022)

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摘要
Concentrated animal feeding operations (CAFOs) pose serious risks to air, water, and public health, but have proven to be challenging to regulate. The U.S. Government Accountability Office notes that a basic challenge is the lack of comprehensive location information on CAFOs. We use the U.S. Department of Agriculture's National Agricultural Imagery Program 1 m/pixel aerial imagery to detect poultry CAFOs across the continental USA. We train convolutional neural network models to identify individual poultry barns and apply the best-performing model to over 42 TB of imagery to create the first national open-source dataset of poultry CAFOs We validate the model predictions against held-out validation set on poultry CAFO facility locations from ten hand-labeled counties in California and demonstrate that this approach has significant potential to fill gaps in environmental monitoring.
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关键词
Agriculture, Image segmentation, Semantics, Convolutional neural networks, Public healthcare, Training, Standards, Concentrated animal feeding operations (CAF- Os), convolutional neural networks (CNNs), deep learning, National Agricultural Imagery Program (NAIP), poultry barns, semantic segmentation
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