用于实时特征检测的海洋雪检测

Alexandre Cardaillac, M. Ludvigsen
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引用次数: 0

摘要

由于后向散射、光衰减和光伪影,水下图像常常会出现退化。它的一个重要方面是海洋雪,这是不同形状和大小的颗粒。计算机视觉技术可能受到它们的强烈影响,因此可能提供不正确和有偏见的结果。在机器人应用中,在线处理的计算能力有限。提出了一种基于时空数据多步处理的海洋积雪实时检测方法。在对RGB彩色图像进行分解之前,将其转换为YCbCr颜色空间,使用引导滤波器对第一批候选图像进行分离高频信息。然后应用统一核卷积对候选点进行进一步分析。该方法在水下特征检测和图像增强两个用例中得到了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Marine Snow Detection for Real Time Feature Detection
Underwater images are often degraded due to backscatter, light attenuation and light artifacts. One important aspect of it is marine snow, which are particles of varying shape and size. Computer vision technologies can be strongly affected by them and may therefore provide incorrect and biased results. In robotic applications, there is limited computational power for online processing. A method for real time marine snow detection is proposed in this paper based on a multi-step process of spatial-temporal data. The RGB colored images are converted to the YCbCr color space before they are decomposed to isolate the high frequency information using a guided filter for a first selection of candidates. Convolution with an uniform kernel is then applied for further analysis of the candidates. The method is demonstrated in two use cases, underwater feature detection and image enhancement.
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