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Extracting moving shapes by evidence gathering

机译:通过证据收集来提取移动形状

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摘要

Many approaches can track objects moving in sequences of images but can suffer in occlusion and noise, and often require initialisation. These factors can be handled by techniques that extract objects from image sequences, especially when phrased in terms of evidence gathering. Since the template approach is proven for arbitrary shapes, we re-deploy it for moving arbitrary shapes, but in a way aimed to avoid discretisation problems. In this way, the discrete mapping operation is deferred as far as possible, by using continuous shape descriptions. A further advantage is reduction in computational demand, as seen in use of templates for shape extraction. This prior specification of motion avoids the need to use an expensive parametric model to capture data that is already known. Furthermore, the complexity of the motion template model remains unchanged with increase in the complexity of motion, whereas a parametric model would require increasingly more parameters leading to an enormous increase in computational requirements. The new approach combining moving arbitrary shape description with motion templates permits us to achieve the objective of low dimensionality extraction of arbitrarily moving arbitrary shapes with performance advantage as reflected by the results this new technique can achieve. (C) 2002 Pattern Recognition Society. Published by Elsevier Science Ltd. All rights reserved. [References: 18]
机译:许多方法可以跟踪在图像序列中移动的对象,但是会遭受遮挡和噪声的困扰,并且通常需要初始化。这些因素可以通过从图像序列中提取对象的技术来处理,尤其是在收集证据时。由于模板方法已针对任意形状进行了证明,因此我们重新部署它可以移动任意形状,但其目的是避免离散化问题。这样,通过使用连续的形状描述,尽可能推迟了离散映射操作。如使用模板进行形状提取所看到的,另一个优点是减少了计算需求。运动的这种先前规范避免了使用昂贵的参数模型来捕获已知数据的需要。此外,运动模板模型的复杂性随着运动复杂性的增加而保持不变,而参数模型将需要越来越多的参数,从而导致计算需求的巨大增加。新方法将移动任意形状的描述与运动模板结合在一起,使我们能够实现具有任意性能的任意移动任意形状的低维提取的目标,这一新技术可以实现的结果反映了这一优势。 (C)2002模式识别学会。由Elsevier Science Ltd.出版。保留所有权利。 [参考:18]

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