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首页> 外文期刊>International Journal of Applied Pattern Recognition >Modelling land water composition scene for maritime traffic surveillance
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Modelling land water composition scene for maritime traffic surveillance

机译:为海上交通监视建模陆地水组成场景

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摘要

Background modelling, used in many vision systems, must be robust to environmental change, yet sensitive enough to identify all moving objects of interest. Existing background modelling approaches have been developed to interpret images in terrestrial situations, such as car parks and stretches of road, where objects move in a smooth manner and the background is relatively consistent. In the context of maritime boat ramps surveillance, this paper proposes a cognitive background modelling method for land and water composition scenes (CBM-lw) to interpret the traffic of boats passing across boat ramps. We compute an adaptive learning rate to account for changes on land and water composition scenes, in which a geometrical model is integrated with pixel classification to determine the portion of water changes caused by tidal dynamics and other environmental influences. Experimental comparative tests and quantitative performance evaluations of real-world boat-flow monitoring traffic sequences demonstrate the benefits of the proposed algorithm.
机译:许多视觉系统中使用的背景建模必须对环境变化具有鲁棒性,但必须足够灵敏以识别所有感兴趣的运动对象。已经开发了现有的背景建模方法来解释地面情况下的图像,例如停车场和路段,其中物体以平滑的方式运动并且背景相对一致。在海上舷梯监视的背景下,本文提出了一种用于陆地和水域构成场景的认知背景建模方法(CBM-lw),以解释穿越舷梯的船只的通行情况。我们计算自适应学习率以说明土地和水组成场景的变化,其中将几何模型与像素分类集成在一起,以确定潮汐动力和其他环境影响导致的水变化部分。实验比较测试和现实船流量监控交通序列的定量性能评估证明了该算法的优势。

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