高光谱数据中的多实例和上下文依赖学习

P. Torrione, Christopher R. Ratto, L. Collins
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引用次数: 18

摘要

高光谱成像(HSI)是各种遥感任务的强大工具,包括农业建模和地雷/未爆弹药清除。虽然标准监督学习技术在HSI数据中的应用已经被探索过,但高光谱数据收集和地面真值标记的几个方面使得标准机器学习技术的一些假设无效。例如,恒指指数高度依赖于当地的环境条件,而恒指指数数据的逐像素标签往往不可用。因此,高光谱传感在各种场景下的数据通常不是i.i.d的,在学习决策边界的同时,必须从训练数据中推断出正确的数据标签。在这项工作中,我们探索了这些问题的两种可能的解决方案:用于克服集合之间差异的上下文依赖学习,以及用于同时推断局部目标标签和全局目标决策边界的多实例学习。结果与标准逻辑判别分类方法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiple instance and context dependent learning in hyperspectral data
Hyperspectral imaging (HSI) is a powerful tool for various remote sensing tasks including agricultural modeling and landmine/ unexploded ordnance clearance. Although the application of standard supervised learning techniques to HSI data has previously been explored, several aspects of hyperspectral data collection and ground truth labeling make some of the assumptions underlying standard machine learning techniques invalid. For example, HSI is highly dependent upon local environmental conditions, and pixel-by-pixel labels for HSI data are often not available. As a result, data from hyperspectral sensing under various scenarios is not typically i.i.d., and correct data labels must be inferred from training data while learning decision boundaries. In this work we explore two possible solutions to these problems: context-dependent learning for overcoming variations between collections, and multiple instance learning for simultaneously inferring local target labels and global target decision boundaries. Results are compared to standard logistic discriminant classification approaches.
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