人类对于Sentinel-2的土地覆盖来说是很差的分类器

M. Rußwurm, Sherrie Wang, D. Tuia
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引用次数: 1

摘要

学习从少数数据样本中准确预测是现代数据饥渴型机器学习的核心挑战。在自然图像上,人类视觉通常在少量图像学习上优于深度学习方法。然而,我们假设航空和卫星图像对人眼更具挑战性。这尤其适用于图像分辨率相对较低的情况,例如Sentinel-2的地面采样距离为10米。在这项研究中,我们使用Sen12MS数据集上的Sentinel-2图像对人类参与者进行了几次土地覆盖分类,并对模型不可知元学习(MAML)算法进行了基准测试。我们发现,对于参与者来说,从全球分布的区域对土地覆盖进行分类是一项困难的任务,他们对给定图像的分类不如mml训练的模型准确,并且成功率变化很大。这表明,在处理新的土地覆盖分类问题时,直接在Sentinel-2图像上手工标记土地覆盖并不是最佳选择。与多人手动标记相比,仅标记少量图像并使用经过训练的元学习模型来完成此任务可能会产生更准确和一致的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Humans are Poor Few-Shot Classifiers for Sentinel-2 Land Cover
Learning to predict accurately from a few data samples is a central challenge in modern data-hungry machine learning. On natural images, human vision typically outperforms deep learning approaches on few-shot learning. However, we hypothesize that aerial and satellite images are more challenging to the human eye. This applies particularly when the image resolution is comparatively low, as with the 10m ground sampling distance of Sentinel-2. In this study, we benchmark model-agnostic meta-learning (MAML) algorithms against human participants on few-shot land cover classification with Sentinel-2 imagery on the Sen12MS dataset. We find that categorization of land cover from globally distributed regions is a difficult task for the participants, who classified the given images less accurately than the MAML-trained model and with a highly variable success rate. This suggest that hand-labeling land cover directly on Sentinel-2 imagery is not optimal when tackling a new land cover classification problem. Labeling only a few images and employing a trained meta-learning model to this task may lead to more accurate and consistent solutions compared to hand labeling by multiple individuals.
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