Semantic Segmentation with Multispectral Satellite Images of Waterfowl Habitat

Mateo Gannod, Nicholas M. Masto, Collins Owusu, Cory J. Highway, Katherine E. Brown, Abigail G. Blake‐Bradshaw, Jamie C. Feddersen, H. Hagy, Douglas A. Talbert, Bradley Cohen
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Abstract

Migratory waterfowl (i.e., ducks, geese, and swans) management relies on landscape bioenergetic models to inform on-the-ground habitat conditions and conservation practices. Therefore, conservation planners rely on accurate predictions of wetland habitats for waterfowl at regional scales. Unharvested flooded corn is a popular management tool on public and private lands that greatly increases landscape-level energy compared to other wetlands; thus, landscape bioenergetic models are particularly sensitive to these habitat features. Despite their importance to conservation planning and implementation, the abundance and distribution of unharvested flooded corn fields across North America is unknown. Furthermore, training data is difficult to collect and accurate predictions are challenging given their unique attributes and discreteness at landscape-level lens. Advances in multispectral imagery and deep learning algorithms may enable continuous and autonomous detection of these habitat features. Therefore, we conducted modeling experiments using training data of unharvested flooded corn fields in West Tennessee and multispectral imagery collected from Sentinel-2 satellite missions. We performed several experiments using individual band combination composites and/or vegetation indices to identify optimal bands using MRUNET architectures. We subsequently used 3 ensemble models of important individual networks. We found the use of multispectral bands was necessary and although the CIR composite and OSAVI index improved precision, the 12-band composite increased recall, the metric we were most interested in. Moreover, all ensembles exhibited poor performance. Here, we present results of our initial modeling experiments and suggest future modeling exercises including temporal image and vegetation index stacking using multi-modal and/or recurrent neural network architectures.
水禽栖息地多光谱卫星图像的语义分割
迁徙水禽(即鸭、鹅和天鹅)的管理依赖于景观生物能量模型来告知地面栖息地条件和保护措施。因此,保护规划者依赖于在区域尺度上对水禽湿地栖息地的准确预测。未收获的淹水玉米是公共和私人土地上一种流行的管理工具,与其他湿地相比,它大大增加了景观水平的能量;因此,景观生物能量模型对这些栖息地特征尤为敏感。尽管它们对保护规划和实施很重要,但北美未收获的洪水玉米田的数量和分布尚不清楚。此外,由于训练数据在景观层面的独特属性和离散性,很难收集和准确预测。多光谱图像和深度学习算法的进步可能使这些栖息地特征的连续和自主检测成为可能。因此,我们利用西田纳西州未收获的淹水玉米田的训练数据和Sentinel-2卫星任务收集的多光谱图像进行了建模实验。我们使用单个波段组合复合材料和/或植被指数进行了几次实验,以确定使用MRUNET架构的最佳波段。我们随后使用了3个重要个体网络的集成模型。我们发现多光谱波段的使用是必要的,尽管CIR复合指数和OSAVI指数提高了精度,但12波段复合指数提高了召回率,这是我们最感兴趣的指标。此外,所有合奏都表现不佳。在这里,我们展示了我们最初的建模实验结果,并建议未来的建模练习,包括使用多模态和/或循环神经网络架构的时间图像和植被指数叠加。
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