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Weight estimation from frame sequences using computational intelligence techniques

机译:使用计算智能技术从帧序列中估计权重

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Soft biometric techniques can perform a fast and unobtrusive identification within a limited number of users, be used as a preliminary screening filter, or combined in order to increase the recognition accuracy of biometric systems. The weight is a soft biometric trait which offers a good compromise between distinctiveness and permanence, and is frequently used in forensic applications. However, traditional weight measurement techniques are time-consuming and have a low user acceptability. In this paper, we propose a method for a contactless, low-cost, unobtrusive, and unconstrained weight estimation from frame sequences representing a walking person. The method uses image processing techniques to extract a set of features from a pair of frame sequences captured by two cameras. Then, the features are processed using a computational intelligence approach, in order to learn the relations between the extracted characteristics and the weight of the person. We tested the proposed method using frame sequences describing eight different walking directions, and captured in uncontrolled light conditions. The obtained results show that the proposed method is feasible and can achieve a view-independent weight estimation, also without the need of computing a complex model of the body parts.
机译:软生物识别技术可以在有限数量的用户中执行快速且清晰的识别,可以用作初步筛选过滤器,也可以结合使用,以提高生物识别系统的识别精度。重量是一种柔软的生物特征,在独特性和持久性之间提供了很好的折衷,并且经常在法医学应用中使用。然而,传统的体重测量技术很耗时并且用户接受度低。在本文中,我们提出了一种用于从代表步行者的帧序列进行非接触,低成本,无干扰且不受约束的权重估计的方法。该方法使用图像处理技术从由两个照相机捕获的一对帧序列中提取一组特征。然后,使用计算智能方法对特征进行处理,以了解提取的特征与人的体重之间的关系。我们使用描述八个不同步行方向的帧序列测试了提出的方法,并在不受控制的光照条件下捕获了该方法。获得的结果表明,该方法是可行的,并且可以实现与视图无关的重量估计,而且无需计算复杂的身体部位模型。

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