SAMSelect:光谱索引搜索海洋碎片可视化使用分段任何

Joost van Dalen;Yuki M. Asano;Marc Rußwurm
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摘要

这项工作提出了SAMSelect,一种算法,以获得显著的三通道可视化的多光谱图像。我们开发了SAMSelect,并向海洋科学家展示了它在哨兵2号图像中视觉解释漂浮海洋垃圾的用途。众所周知,由于这些碎片在中等分辨率的图像中成分不均匀,很难可视化。尽管存在这些困难,但对显示海洋垃圾的图像进行视觉解释仍然是领域专家的常用做法,他们根据常用做法和启发式方法逐案选择波段和光谱指数。SAMSelect通过分段任意模型(SAM)在一个小的带注释数据集上选择达到最佳分类精度的频带或索引组合。其核心假设是三通道可视化实现了最准确的分割结果,并为光解译提供了良好的视觉信息。我们在加纳阿克拉和南非德班的三个包含一般海洋垃圾的Sentinel-2场景中评估了SAMSelect,并部署了来自塑料垃圾项目(PLP)的塑料目标。这揭示了以前未使用的新波段组合的潜力(例如,B8的归一化差异指数(NDI), ${B}2$),与基于文献的指数相比,它表现出更高的性能。我们在这封信中描述了算法,并提供了一个开源代码库,这将有助于领域科学家进行视觉照片解释,特别是在海洋领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SAMSelect: A Spectral Index Search for Marine Debris Visualization Using Segment Anything
This work proposes SAMSelect, an algorithm to obtain a salient three-channel visualization for multispectral images. We develop SAMSelect and show its use for marine scientists visually interpreting floating marine debris in Sentinel-2 imagery. These debris are notoriously difficult to visualize due to their compositional heterogeneity in medium-resolution imagery. Out of these difficulties, a visual interpretation of imagery showing marine debris remains a common practice by domain experts, who select bands and spectral indices on a case-by-case basis informed by common practices and heuristics. SAMSelect selects the band or index combination that achieves the best classification accuracy on a small annotated dataset through the segment anything model (SAM). Its central assumption is that the three-channel visualization achieves the most accurate segmentation results also provide good visual information for photointerpretation. We evaluate SAMSelect in three Sentinel-2 scenes containing generic marine debris in Accra, Ghana, and Durban, South Africa, and deployed plastic targets from the Plastic Litter Project (PLP). This reveals the potential of new previously unused band combinations (e.g., a normalized difference index (NDI) of B8, ${B}2$ ), which demonstrate improved performance compared with literature-based indices. We describe the algorithm in this letter and provide an open-source code repository that will be helpful for domain scientists doing visual photo interpretation, especially in the marine field.
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