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Buried object detection using handheld WEMI with task-driven extended functions of multiple instances

机译:使用手持式WEMI具有多个实例的任务驱动扩展功能的掩埋物体检测

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Many effective supervised discriminative dictionary learning methods have been developed in the literature. However, when training these algorithms, precise ground-truth of the training data is required to provide very accurate point-wise labels. Yet, in many applications, accurate labels are not always feasible. This is especially true in the case of buried object detection in which the size of the objects are not consistent. In this paper, a new multiple instance dictionary learning algorithm for detecting buried objects using a handheld WEMI sensor is detailed. The new algorithm, Task Driven Extended Functions of Multiple Instances, can overcome data that does not have very precise point-wise labels and still learn a highly discriminative dictionary. Results are presented and discussed on measured WEMI data.
机译:文献中已经开发了许多有效的监督判别词典学习方法。但是,在训练这些算法时,需要精确的训练数据真实性以提供非常精确的逐点标签。然而,在许多应用中,准确的标签并不总是可行的。在物体尺寸不一致的掩埋物体检测情况下尤其如此。在本文中,详细介绍了一种新的多实例字典学习算法,该算法使用手持式WEMI传感器检测掩埋物体。新算法“多实例的任务驱动扩展功能”可以克服没有非常精确的逐点标签的数据,并且仍然可以学习具有高度区分性的字典。给出并讨论了有关测得的WEMI数据的结果。

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