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首页> 外文期刊>Ecological informatics: an international journal on ecoinformatics and computational ecology >Real-time fish detection in complex backgrounds using probabilistic background modelling
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Real-time fish detection in complex backgrounds using probabilistic background modelling

机译:使用概率背景建模复杂背景中的实时鱼检测

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Computer vision and image processing approaches for automatic underwater fish detection are gaining attention of marine scientists as quicker and low-cost methods for estimating fish biomass and assemblage in oceans and fresh water bodies. However, the main challenge that is encountered in unconstrained underwater imagery is poor luminosity, turbidity, background confusion and foreground camouflage that make conventional approaches compromise on their performance due to missed detections or high false alarm rates. Gaussian Mixture Modelling is a powerful approach to segment foreground fish from the background objects through learning the background pixel distribution. In this paper, we present an algorithm based on Gaussian Mixture Models together with Pixel-Wise Posteriors for fish detection in complex background scenarios. We report the results of our method on the benchmark Complex Background dataset that is extracted from Fish4Knowledge repository. Our proposed method yields an F-score of 84.3%, which is the highest score reported so far on the aforementioned dataset for detecting fish in an unconstrained environment.
机译:自动水下鱼类检测的计算机视觉和图像处理方法正在提高海洋科学家的关注,作为估计海洋和淡水体中的鱼生物量和组装的更快和低成本的方法。然而,在不受约束的水下图像中遇到的主要挑战是较差的亮度,浊度,背景混淆和前景伪装,使传统方法妥协由于错过的检测或高误报率而导致的性能。高斯混合建模是一种强大的方法,通过学习背景像素分布来段从背景对象进行前景鱼。在本文中,我们介绍了一种基于高斯混合模型的算法以及在复杂的背景场景中的鱼类检测中的像素明智的后索。我们在从Fish4知识存储库中提取的基准复杂背景数据集中报告了我们的方法的结果。我们所提出的方法产生84.3%的F分,这是迄今为止在上述数据集上报告的最高分数,用于检测不受约束环境中的鱼类。

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