基于非完美折线标签的弱监督空间深度学习地球图像分割

Zhe Jiang, Wenchong He, M. Kirby, Arpan Man Sainju, Shaowen Wang, L. Stanislawski, E. Shavers, E. L. Usery
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引用次数: 4

摘要

近年来,深度学习在计算机视觉图像分割应用方面取得了巨大的成功。这些模型的性能在很大程度上依赖于大规模高质量训练标签的可用性(例如,PASCAL VOC 2012)。不幸的是,在地球科学和遥感的许多现实世界的空间或时空问题(例如,为水资源管理绘制全国河流)中,往往无法获得这种大规模的高质量训练数据。尽管已经做出了广泛的努力来减少对标记数据的依赖(例如,半监督或无监督学习,少射学习),但在将预训练模型从一个地区转移到另一个地区时,地理数据的复杂性(如空间异质性)仍然需要足够的训练标签。另一方面,通常更容易收集与地球图像像素不完全对齐的低质量训练标签(例如,通过非专业志愿者解释粗糙图像)。然而,直接在带有几何标注错误的不完美标签上训练深度神经网络会显著影响模型的性能。现有的克服不完善训练标签的研究要么集中在标签类语义上的错误,要么集中在像素级的标签定位错误。这些方法没有充分考虑到矢量表示中标签定位误差的几何特性。为了填补这一空白,本文提出了一个弱监督学习框架,以同时更新深度学习模型参数并推断隐藏的真实向量标签位置。具体来说,我们对向量表示中的标签位置误差进行建模,以部分保留几何属性(例如,线段内的空间连续性)。对国家水文数据集(NHD)精化应用中的真实数据集的评估表明,所提出的框架在分类精度上优于基线方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Weakly Supervised Spatial Deep Learning for Earth Image Segmentation Based on Imperfect Polyline Labels
In recent years, deep learning has achieved tremendous success in image segmentation for computer vision applications. The performance of these models heavily relies on the availability of large-scale high-quality training labels (e.g., PASCAL VOC 2012). Unfortunately, such large-scale high-quality training data are often unavailable in many real-world spatial or spatiotemporal problems in earth science and remote sensing (e.g., mapping the nationwide river streams for water resource management). Although extensive efforts have been made to reduce the reliance on labeled data (e.g., semi-supervised or unsupervised learning, few-shot learning), the complex nature of geographic data such as spatial heterogeneity still requires sufficient training labels when transferring a pre-trained model from one region to another. On the other hand, it is often much easier to collect lower-quality training labels with imperfect alignment with earth imagery pixels (e.g., through interpreting coarse imagery by non-expert volunteers). However, directly training a deep neural network on imperfect labels with geometric annotation errors could significantly impact model performance. Existing research that overcomes imperfect training labels either focuses on errors in label class semantics or characterizes label location errors at the pixel level. These methods do not fully incorporate the geometric properties of label location errors in the vector representation. To fill the gap, this article proposes a weakly supervised learning framework to simultaneously update deep learning model parameters and infer hidden true vector label locations. Specifically, we model label location errors in the vector representation to partially reserve geometric properties (e.g., spatial contiguity within line segments). Evaluations on real-world datasets in the National Hydrography Dataset (NHD) refinement application illustrate that the proposed framework outperforms baseline methods in classification accuracy.
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