Contrastive learning methods have been applied to a range of domains and modalities by training models to identify similar "views" of data points. However, specialized scientific modalities pose a challenge for this paradigm, as identifying good views for each scientific instrument is complex and time-intensive. In this paper, we focus on applying contrastive learning approaches to a variety of remote sensing datasets. We show that Viewmaker networks, a recently proposed method for generating views, are promising for producing views in this setting without requiring extensive domain knowledge and trial and error. We apply Viewmaker to four multispectral imaging problems, each with a different format, finding that Viewmaker can outperform cropping- and reflection-based methods for contrastive learning in every case when evaluated on downstream classification tasks. This provides additional evidence that domain-agnostic methods can empower contrastive learning to scale to real-world scientific domains. Open source code can be found at https://github.com/jbayrooti/divmaker.
翻译:聚焦于对比学习在不同科学领域中应用的问题,本文针对遥感数据应用多光谱视觉增强技术探讨了视图的生成问题。我们提出了一个新的视觉增强方法Viewmaker,可以有效地为各种遥感数据生成相似度高的视图。我们在四个多光谱成像问题上验证了Viewmaker网络的有效性,并发现它在对比学习领域中相对于基于裁剪和镜像的方法的性能更突出。该研究为对比学习的在实际科学领域的应用提供了一定的参考价值,同时我们的开放代码也有助于大家进一步学习和研究。