Robust marker detection and identification using deep learning in underwater images for close range photogrammetry

Jost Wittmann , Sangam Chatterjee , Thomas Sure
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Abstract

The progressing industrialization of oceans mandates reliable, accurate and automatable subsea survey methods. Close-range photogrammetry is a promising discipline, which is frequently applied by archaeologists, fish-farmers, and the offshore energy industry. This paper presents a robust approach for the reliable detection and identification of photogrammetric markers in subsea images. The proposed method is robust to severe image degradation, which is frequently observed in underwater images due to turbidity, light absorption, and optical aberrations. This is the first step towards a highly automated work-flow for single-camera underwater photogrammetry. The newly developed approach comprises several machine learning models, which are trained by 10,122 real-world subsea images, showing a total of 338,301 photogrammetric markers. The performance is evaluated using an object detection metrics, and through a comparison with the commercially available software Metashape by Agisoft. Metashape delivers satisfactory results when the image quality is good. In images with strong noise, haze or little light, only the novel approach retrieves sufficient information for a high degree of automation of the subsequent bundle adjustment. While the need for offshore personnel and the time-to-results decreases, the robustness of the survey increases.

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利用深度学习在水下图像中进行稳健的标记检测和识别,用于近距离摄影测量
随着海洋工业化的不断发展,需要采用可靠、准确和自动化的海底勘测方法。近距离摄影测量是一门前景广阔的学科,经常被考古学家、渔民和近海能源工业所应用。本文提出了一种在海底图像中可靠检测和识别摄影测量标记的稳健方法。由于浑浊、光吸收和光学像差等原因,水下图像经常出现严重的图像劣化现象,而本文提出的方法对这种劣化现象具有很强的鲁棒性。这是实现单相机水下摄影测量高度自动化工作流程的第一步。新开发的方法由多个机器学习模型组成,这些模型由 10,122 幅真实水下图像训练而成,共显示 338,301 个摄影测量标记。使用对象检测指标对其性能进行了评估,并与 Agisoft 公司的商用软件 Metashape 进行了比较。当图像质量较好时,Metashape 能提供令人满意的结果。而在有强烈噪音、雾霾或光线不足的图像中,只有新方法能检索到足够的信息,从而实现后续捆绑调整的高度自动化。在减少对海上人员的需求和缩短取得成果的时间的同时,勘测的稳健性也得到了提高。
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