利用主动轮廓和基础模型在近距离光学图像中分割海冰浮冰

Giulio Passerotti, Alberto Alberello, Marcello Vichi, Luke G. Bennetts, Alessandro Toffoli
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引用次数: 0

摘要

浮冰的大小和形状在影响海洋-大气能量交换、海冰浓度、反照率以及冰覆盖水域的波传播方面起着至关重要的作用。尽管有多种图像分割技术可用于分析海冰图像,但准确探测和测量浮冰仍是一项相当大的挑战。本研究提出了一种原位海冰图像采集的精确方法,包括自动正射矫正透视畸变。该图像数据集是在南极冬季考察期间收集的,用于评估各种自动图像分割方法:传统的 GVFSnake 算法和先进的深度学习模型 Segment Anything Model(SAM)。针对每种方法的局限性,提出了一种结合传统和人工智能技术的混合算法。通过对浮冰检测精度、浮冰大小和冰浓度统计的详细分析,验证了这些方法的有效性,并将结果与人工分割基准进行了归一化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Segmenting sea ice floes in close-range optical imagery with active contour and foundation models
The size and shape of sea ice floes play a crucial role in influencing ocean-atmosphere energy exchanges, sea ice concentrations, albedo, and wave propagation through ice-covered waters. Despite the availability of diverse image segmentation techniques for analyzing sea ice imagery, accurately detecting and measuring floes remains a considerable challenge. This study presents a precise methodology for in-situ sea ice imagery acquisition, including automated orthorectification to correct perspective distortions. The image dataset, collected during an Antarctic winter expedition, was used to evaluate various automated image segmentation approaches: the traditional GVF Snake algorithm and the advanced deep learning model, Segment Anything Model (SAM). To address the limitations of each method, a hybrid algorithm combining traditional and AI-based techniques is proposed. The effectiveness of these approaches was validated through a detailed analysis of ice floe detection accuracy, floe size, and ice concentration statistics, with the outcomes normalized against a manually segmented benchmark.
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