Firearm Detection and Segmentation Using an Ensemble of Semantic Neural Networks

Alexander Egiazarov, Vasileios Mavroeidis, Fabio Massimo Zennaro, Kamer Vishi
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引用次数: 11

Abstract

In recent years we have seen an upsurge in terror attacks around the world. Such attacks usually happen in public places with large crowds to cause the most damage possible and get the most attention. Even though surveillance cameras are assumed to be a powerful tool, their effect in preventing crime is far from clear due to either limitation in the ability of humans to vigilantly monitor video surveillance or for the simple reason that they are operating passively. In this paper, we present a weapon detection system based on an ensemble of semantic Convolutional Neural Networks that decomposes the problem of detecting and locating a weapon into a set of smaller problems concerned with the individual component parts of a weapon. This approach has computational and practical advantages: a set of simpler neural networks dedicated to specific tasks requires less computational resources and can be trained in parallel; the overall output of the system given by the aggregation of the outputs of individual networks can be tuned by a user to trade-off false positives and false negatives; finally, according to ensemble theory, the output of the overall system will be robust and reliable even in the presence of weak individual models. We evaluated our system running simulations aimed at assessing the accuracy of individual networks and the whole system. The results on synthetic data and real-world data are promising, and they suggest that our approach may have advantages compared to the monolithic approach based on a single deep convolutional neural network.
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基于语义神经网络集成的枪械检测与分割
近年来,我们看到世界各地的恐怖袭击激增。这种袭击通常发生在人群众多的公共场所,以造成最大的破坏,吸引最多的关注。尽管监控摄像头被认为是一种强大的工具,但由于人类警惕监控视频监控的能力有限,或者因为它们是被动操作的简单原因,它们在预防犯罪方面的效果还远未明确。在本文中,我们提出了一种基于语义卷积神经网络集成的武器检测系统,该系统将武器的检测和定位问题分解为与武器各个组成部分有关的一组较小的问题。这种方法具有计算和实用的优点:一组专门用于特定任务的更简单的神经网络需要较少的计算资源,并且可以并行训练;系统的总体输出由单个网络的输出聚合而成,用户可以通过权衡假阳性和假阴性来调整系统的总体输出;最后,根据集成理论,即使存在弱个体模型,整个系统的输出也将是鲁棒和可靠的。我们评估了我们的系统运行模拟,旨在评估单个网络和整个系统的准确性。合成数据和真实世界数据的结果是有希望的,它们表明我们的方法与基于单个深度卷积神经网络的整体方法相比可能具有优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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