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Reduced Residual Nets (Red-Nets): Low Powered Adversarial Outlier Detectors

机译:减少的残留网络(红色网络):低功率对抗性离群值检测器

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The evolution of information science has seen an immense growth in multimedia data, specially in the case of CCTV live stream capture. The tremendously large volumes of multimedia data give rise to a particularly challenging problem called the outlier events of interest detection. In the wake of growing school shootings in the United States, there needs to be a rethinking of our security strategies regarding the safety of children at school utilizing multimedia data mining research. This paper proposes a novel method to identify faces of interest using live stream CCTV data. By integrating the adversarial information, the proposed framework can help imbalance facial recognition and enhance rare class mining even with trivial scores from the minority class. Experimental results on the Faces in the Wile (FIW) dataset demonstrate the effectiveness of the proposed framework with promising performance. The proposed method was implemented on a low powered Nvidia TX2 for real-time face recognition. The proposed framework was benchmarked against several existing state-of-the-art methods for accuracy, computational complexity, and real-time power measurement. The proposed method performs very well under the power and complexity constraints.
机译:信息科学的发展见证了多媒体数据的巨大增长,特别是在CCTV实时流捕获的情况下。大量的多媒体数据引发了一个特别具有挑战性的问题,即兴趣检测的异常事件。随着美国学校枪击事件的增加,需要对我们利用多媒体数据挖掘研究的学校儿童安全的安全策略进行重新思考。本文提出了一种使用实时CCTV数据识别感兴趣面孔的新颖方法。通过整合对抗性信息,提出的框架可以帮助平衡面部识别并增强稀有阶级的挖掘能力,即使少数族裔的分数也不高。 Wile人脸(FIW)数据集上的实验结果证明了所提出框架的有效性,并具有良好的性能。所提出的方法是在低功耗Nvidia TX2上实现的,用于实时人脸识别。所提出的框架已针对几种现有的最先进的方法进行了基准测试,以提高准确性,计算复杂性和实时功率测量。所提出的方法在功率和复杂性约束下表现良好。

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