Olivi Leonardo, Santero Mormile Edoardo, Tartaglione Enzo
, Turin, Italy.
University of Trento, Trento, Italy.
Sci Rep. 2025 May 23;15(1):18046. doi: 10.1038/s41598-025-99192-5.
In recent years, the application of Deep Learning techniques has shown remarkable success in various computer vision tasks, paving the way for their deployment in extraterrestrial exploration. Transfer learning has emerged as a powerful strategy for addressing the scarcity of labeled data in these novel environments. This paper represents one of the first efforts in evaluating the feasibility of employing adapters toward efficient transfer learning for rock segmentation in extraterrestrial landscapes, mainly focusing on lunar and martian terrains. Our work suggests that the use of adapters, strategically integrated into a pre-trained backbone model, can be successful in reducing both bandwidth and memory requirements for the target extraterrestrial device. In this study, we considered two memory-saving strategies: layer fusion (to reduce to zero the inference overhead) and an "adapter ranking" (to also reduce the transmission cost). Finally, we evaluate these results in terms of task performance, memory, and computation on embedded devices, evidencing trade-offs that open the road to more research in the field. The code will be open-sourced upon acceptance of the article.
近年来,深度学习技术在各种计算机视觉任务中取得了显著成功,为其在外层空间探索中的应用铺平了道路。迁移学习已成为应对这些新环境中标记数据稀缺问题的有力策略。本文是评估使用适配器进行高效迁移学习以实现外星景观岩石分割可行性的首批努力之一,主要聚焦于月球和火星地形。我们的工作表明,将适配器策略性地集成到预训练的骨干模型中,能够成功降低目标外星设备的带宽和内存需求。在本研究中,我们考虑了两种节省内存的策略:层融合(将推理开销降至零)和“适配器排序”(也降低传输成本)。最后,我们在嵌入式设备上根据任务性能、内存和计算对这些结果进行评估,揭示了权衡之处,为该领域的更多研究开辟了道路。文章被接受后,代码将开源。