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Going Deeper with CNN in Malicious Crowd Event Classification

机译:与CNN一起深入探讨恶意人群事件分类

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Terror attacks are often targeted towards the civilians gathered in one location (e.g., Boston Marathon bombing). Distinguishing such 'malicious' scenes from the 'normal' ones, which are semantically different, is a difficult task as both scenes contain large groups of people with high visual similarity. To overcome the difficulty, previous methods exploited various contextual information, such as language-driven keywords or relevant objects. Although useful, they require additional human effort or dataset. In this paper, we show that using more sophisticated and deeper Convolutional Neural Networks (CNNs) can achieve better classification accuracy even without using any additional information outside the image domain. We have conducted a comparative study where we train and compare seven different CNN architectures (AlexNet, VGG-M. VGG16, GoogLeNet. ResNet-50, ResNet-101, and ResNet-152). Based on the experimental analyses, we found out that deeper networks typically show better accuracy, and that GoogLeNet is the most favorable among the seven architectures for the task of malicious event classification.
机译:恐怖袭击通常针对聚集在一处的平民(例如,波士顿马拉松轰炸)。要将这种“恶意”场景与语义上不同的“正常”场景区分开来是一项艰巨的任务,因为这两个场景都包含大批具有高度视觉相似性的人。为了克服这一困难,以前的方法利用了各种上下文信息,例如语言驱动的关键字或相关对象。尽管有用,但它们需要额外的人工或数据集。在本文中,我们表明,即使不使用图像域外的任何其他信息,使用更复杂,更深入的卷积神经网络(CNN)也可以实现更好的分类精度。我们进行了一项比较研究,我们在其中训练和比较了七个不同的CNN架构(AlexNet,VGG-M。VGG16,GoogLeNet。ResNet-50,ResNet-101和ResNet-152)。根据实验分析,我们发现更深的网络通常显示出更高的准确性,而GoogLeNet在七个用于恶意事件分类任务的体系结构中是最有利的。

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