Revisiting the Past: A comparative study for semantic segmentation of historical images of Adelaide Island using U-nets

Felix Dahle, Roderik Lindenbergh, Bert Wouters
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引用次数: 0

Abstract

The TriMetrogon Aerial (TMA) archive is an archive of historical images of Antarctica taken by the US Navy between 1940 and 2000 with analogue cameras. The analysis of such historic data can give a view of Antarctica's glaciers predating modern satellite imagery and provide unique insights into the long-term impact of changing climate conditions with essential validation data for climate modelling. However, the lack of semantic information for these images presents a challenge for large-scale computer-driven analysis.

Such information can be added to the data using semantic segmentation, but traditional algorithms fail on these scanned historical grayscale images, due to varying image quality, lack of colour information and artefacts in the images. To address this, we present a deep-learning-based U-net workflow. Our approach includes creating training data by pre-processing and labelling the raw images. Furthermore, different versions of the U-net are trained to optimize its hyperparameters and augmentation methods. With the optimal hyper-parameters and augmentation methods, a final model has been trained for a use-case to segment 118 images covering Adelaide Island.

We tested our approach by segmenting challenging historical images using a U-net model with just 80 training images, achieving an accuracy of 73% for 20 validation images. While no test data is available for our use case, a visual examination of the segmented images shows that our method performs effectively.

The comparison of the hyper-parameters and augmentation methods provides directions for training other U-net-based models so that the presented workflow can be used to segment other archives with historical imagery. Additionally, the labelled training data and the segmented images of the test are publicly available at https://github.com/fdahle/antarctic_segmentation.

重温过去:使用 U 型网对阿德莱德岛历史图像进行语义分割的比较研究
TriMetrogon Aerial (TMA) 档案是美国海军在 1940 年至 2000 年期间使用模拟相机拍摄的南极洲历史图像档案。通过对这些历史数据的分析,可以了解现代卫星图像之前的南极洲冰川情况,并为气候建模提供重要的验证数据,从而对气候条件变化的长期影响有独特的见解。这些信息可以通过语义分割添加到数据中,但由于图像质量参差不齐、缺乏色彩信息以及图像中的人工痕迹,传统算法在这些扫描的历史灰度图像上失效。为了解决这个问题,我们提出了一种基于深度学习的 U-net 工作流程。我们的方法包括通过预处理和标记原始图像来创建训练数据。此外,对不同版本的 U-net 进行训练,以优化其超参数和增强方法。使用最佳超参数和增强方法,我们训练出了一个最终模型,用于分割覆盖阿德莱德岛的 118 幅图像。我们仅用 80 幅训练图像就使用 U-net 模型分割了具有挑战性的历史图像,并对 20 幅验证图像进行了测试,准确率达到 73%。对超参数和增强方法的比较为训练其他基于 U-net 的模型提供了方向,因此所介绍的工作流程可用于分割其他档案中的历史图像。此外,标注的训练数据和测试的分割图像可在 https://github.com/fdahle/antarctic_segmentation 上公开获取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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