Image-to-image (I2I) translation is an established way of translating data from one domain to another but the usability of the translated images in the target domain when working with such dissimilar domains as the SAR/optical satellite imagery ones and how much of the origin domain is translated to the target domain is still not clear enough. This article address this by performing translations of labelled datasets from the optical domain to the SAR domain with different I2I algorithms from the state-of-the-art, learning from transferred features in the destination domain and evaluating later how much from the original dataset was transferred. Added to this, stacking is proposed as a way of combining the knowledge learned from the different I2I translations and evaluated against single models.
翻译:图像到图像( I2I) 翻译是将数据从一个领域翻译到另一个领域的既定方法,但在目标领域与SAR/光学卫星图像等不同领域合作时,所翻译的图像在目标领域的可用性,以及将多少原产域转化为目标域,仍然不够清楚。 本条通过将光学域的标签数据集翻译成SAR域,与最新技术的I2I算法进行不同的I2I算法,学习目的地域中已转移的特性,以及后来评估原始数据集的转移量,来解决这个问题。 此外,建议将堆放作为将从不同I2I翻译中获得的知识与单一模型评估相结合的一种方法。