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Image fusion and influence function for performance improvement of ATM vandalism action recognition

机译:atm破坏行动识别绩效改进的图像融合与影响功能

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Rising rate of vandalism against Automatic Teller Machines (ATMs) is a serious issue within banking industries, prompting needs of a technology to autonomously recognize such events. A vision based fusion method proposed here for classifying these incidents is rooted on visually recognizing heavy or sharp objects potentially used for detecting vandalism actions inferred from optical flow. The recognition performance has been improved chiefly by a novel employment of influence functions in selecting data points of each class useful in learning. We show that the tool recognition performance can be improved when the training data is selected from the ImageNet data set as guided by the influence function.
机译:对自动柜员机(ATMS)的破坏率升高是银行业内部的严重问题,促使技术的需要自主认识此类事件。这里提出的基于视觉的用于分类这些事件的融合方法植根于视觉上识别潜在地用于检测从光学流动推断的破坏作用动作的重或尖锐物体。识别性能主要通过对选择在学习中的每个阶级的数据点来实现影响函数的新建立性能。我们表明,当从ImageNet数据集中选择训练数据,可以改善工具识别性能,以通过影响功能为指导。

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