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Semi-supervised Adversarial Domain Adaptation for Seagrass Detection Using Multispectral Images in Coastal Areas

机译:利用沿海地区多光谱图像对海草检测的半监督对抗域改编

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Seagrass form the basis for critically important marine ecosystems. Previously, we implemented a deep convolutional neural network (CNN) model to detect seagrass in multispectral satellite images of three coastal habitats in northern Florida. However, a deep CNN model trained at one location usually does not generalize to other locations due to data distribution shifts. In this paper, we developed a semi-supervised domain adaptation method to generalize a trained deep CNN model to other locations for seagrass detection. First, we utilized a generative adversarial network loss to align marginal data distribution between source domain and target domain using unlabeled data from both data domains. Second, we used a few labelled samples from the target domain to align class specific data distributions between the two domains, based on the contrastive semantic alignment loss. We achieved the best results in 28 out of 36 scenarios as compared to other state-of-the-art domain adaptation methods.
机译:海草为批判性的海洋生态系统构成基础。此前,我们实施了深度卷积神经网络(CNN)模型,以检测佛罗里达州北部三沿海栖息地的多光谱卫星图像中的海草。然而,在一个位置训练的深度CNN模型通常不会引起由于数据分布偏移引起的其他位置。在本文中,我们开发了一个半监督域适应方法,以将培训的深CNN模型概括为海草检测的其他位置。首先,我们利用生成的对抗性网络丢失,使用来自两个数据域的未标记数据对准源域和目标域之间的边缘数据分布。其次,我们使用了来自目标域的一些标记的样本来对准两个域之间的类特定数据分布,基于对比度语义对准损耗。与其他最先进的域适应方法相比,我们在36个情景中获得了最佳结果。

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