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Seagrass Detection in Coastal Water Through Deep Capsule Networks

机译:通过深囊网络在沿海水中检测海草

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Seagrass is an important factor to balance marine ecological systems, and there is a great interest in monitoring its distribution in different parts of the world. This paper presents a deep capsule network for classification of seagrass in high-resolution multispectral satellite images. We tested our method on three satellite images of the coastal areas in Florida and obtained better performances than those achieved by the traditional deep convolutional neural network (CNN) model. We also propose a few-shot deep learning strategy to transfer knowledge learned by the capsule network from one location to another for seagrass detection, in which the capsule network's reconstruction capability is utilized to generate new artificial data for fine-tuning the model at new locations. Our experimental results show that the proposed model achieves superb performances in cross-validation on three satellite images collected in Florida as compared to support vector machine (SVM) and CNN.
机译:海草是平衡海洋生态系统的重要因素,因此对监测其在世界各地的分布引起了极大兴趣。本文提出了一种用于高分辨率多光谱卫星图像中海草分类的深囊网络。我们在佛罗里达州沿海地区的三幅卫星图像上测试了我们的方法,并获得了比传统的深度卷积神经网络(CNN)模型更好的性能。我们还提出了一些简单的深度学习策略,将胶囊网络所学知识从一个位置转移到另一位置进行海草检测,其中利用胶囊网络的重建能力来生成新的人工数据,以便在新位置微调模型。我们的实验结果表明,与支持向量机(SVM)和CNN相比,该模型在佛罗里达州收集的三幅卫星图像上的交叉验证中实现了出色的性能。

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