We describe the lessons learned from targeting agricultural detection problem-solving, when subject to low resolution input maps, by means of Machine Learning-based super-resolution approaches. The underlying domain is the so-called agro-detection class of problems, and the specific objective is to learn a complementary ensemble of sporadic input maps. While super-resolution algorithms are branded with the capacity to enhance various attractive features in generic photography, we argue that they must meet certain requirements, and more importantly, that their outcome does not necessarily guarantee an improvement in engineering detection problem-solving (unlike so-called aesthetics/artistic super-resolution in ImageNet-like datasets). By presenting specific data-driven case studies, we outline a set of limitations and recommendations for deploying super-resolution algorithms for agro-detection problems. Another conclusion states that super-resolution algorithms can be used for learning missing spectral channels, and that their usage may result in some desired side-effects such as channels' synchronization.
翻译:我们描述了在采用低分辨率输入图的情况下,通过基于机器学习的超分辨率方法解决农业探测问题而确定农业探测问题的经验教训。 基础领域是所谓的农业探测问题类别,具体目标是学习零星输入图的互补组合。 虽然超级分辨率算法具有提升通用摄影中各种有吸引力特征的品牌,但我们认为,它们必须满足某些要求,更重要的是,其结果并不一定保证工程探测问题的解决得到改善(在图像网络类数据集中类似于所谓的美学/艺术超级分辨率 ) 。 通过提出具体的由数据驱动的案例研究,我们概述了为农业探测问题部署超分辨率算法的一套限制和建议。 另一个结论指出,超分辨率算法可用于学习缺失的光谱频道,使用超分辨率算法可能会产生某些预期的副作用,如频道同步。</s>