Firearms on Twitter: A Novel Object Detection Pipeline

Ryan Harvey, R. Lebret, Stéphane Massonnet, K. Aberer, Gianluca Demartini
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引用次数: 1

Abstract

Social media is an important source of real-time imagery concerning world events. One subset of social media posts which may be of particular interest are those featuring firearms. These posts can give insight into weapon movements, troop activity and civilian safety. Object detection tools offer important opportunities for insight into these images. Unfortunately, these images can be visually complex, poorly lit and generally challenging for object detection models. We present an analysis of existing gun detection datasets, and find that these datasets to not effectively address the challenge of gun detection on real-life images. Following this, we present a novel object detection pipeline. We train our pipeline on a number of datasets including one created for this investigation made up of Twitter images of the Russo-Ukrainian War. We compare the performance of our model as trained on the different datasets to baseline numbers provided by original authors as well as a YOLO v5 benchmark. We find that our model outperforms the state-of-the-art benchmarks on contextually rich, real-life-derived imagery of firearms.
推特上的枪支:一种新的目标检测管道
社交媒体是有关世界事件的实时图像的重要来源。社交媒体帖子中可能特别令人感兴趣的一个子集是那些涉及枪支的帖子。这些哨所可以深入了解武器的动向、部队活动和平民安全。目标检测工具为深入了解这些图像提供了重要的机会。不幸的是,这些图像在视觉上可能很复杂,光线很差,并且通常对目标检测模型具有挑战性。我们对现有的枪支检测数据集进行了分析,发现这些数据集并不能有效地解决对现实图像进行枪支检测的挑战。在此基础上,提出了一种新的目标检测管道。我们在许多数据集上训练我们的管道,包括为这次调查创建的一个数据集,该数据集由推特上的俄乌战争图像组成。我们将在不同数据集上训练的模型的性能与原始作者提供的基线数字以及YOLO v5基准进行比较。我们发现我们的模型在情境丰富、真实的枪支图像上优于最先进的基准。
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