论文标题
无人监督的域的适应和超级分辨率在无人机图像上进行自动干草生物量估计
Unsupervised domain adaptation and super resolution on drone images for autonomous dry herbage biomass estimation
论文作者
论文摘要
对于奶农来说,草药的质量产量和成分估计是确保足够的高质量牧草以放牧和随后的牛奶生产的重要工具。通过准确估计草药质量和成分,可以部署有针对性的氮肥施用策略来改善草药领域中的局部区域,从而有效地减少了过度利用对生物多样性和环境的负面影响。在这种情况下,深度学习算法提供了一种诱人的替代替代种植构成估计的方法,这涉及从草药领域切割样品的破坏性过程,并用草药中的所有植物物种进行手工分类。这个过程是劳动密集型和耗时的,因此农民没有使用。在这种情况下,深度学习已成功地应用于地面高分辨率摄像机收集的图像。但是,将深度学习解决方案转移到无人机成像中,有可能通过将地面估计扩展到田野/围场所占据的大型表面,从而进一步改善草本质量产量和组成估计任务。无人机图像以从高海拔地区获得的田地的较低分辨率视图而产生,并且需要从无人机图像覆盖的大型表面上进一步的草药地面真相收集。本文提议以无监督的方式将上学到的知识转移到原始的无人机图像中。为此,我们使用未配对的图像样式翻译来增强无人机图像的分辨率八倍,并修改它们以使其看起来更靠近其地面层。然后,我们...〜\ url {www.github.com/paulalbert31/clover_ssl}。
Herbage mass yield and composition estimation is an important tool for dairy farmers to ensure an adequate supply of high quality herbage for grazing and subsequently milk production. By accurately estimating herbage mass and composition, targeted nitrogen fertiliser application strategies can be deployed to improve localised regions in a herbage field, effectively reducing the negative impacts of over-fertilization on biodiversity and the environment. In this context, deep learning algorithms offer a tempting alternative to the usual means of sward composition estimation, which involves the destructive process of cutting a sample from the herbage field and sorting by hand all plant species in the herbage. The process is labour intensive and time consuming and so not utilised by farmers. Deep learning has been successfully applied in this context on images collected by high-resolution cameras on the ground. Moving the deep learning solution to drone imaging, however, has the potential to further improve the herbage mass yield and composition estimation task by extending the ground-level estimation to the large surfaces occupied by fields/paddocks. Drone images come at the cost of lower resolution views of the fields taken from a high altitude and requires further herbage ground-truth collection from the large surfaces covered by drone images. This paper proposes to transfer knowledge learned on ground-level images to raw drone images in an unsupervised manner. To do so, we use unpaired image style translation to enhance the resolution of drone images by a factor of eight and modify them to appear closer to their ground-level counterparts. We then ... ~\url{www.github.com/PaulAlbert31/Clover_SSL}.