AI-based Pilgrim Detection using Convolutional Neural Networks

Marwa Ben Jabra, Adel Ammar, A. Koubâa, O. Cheikhrouhou, H. Hamam
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引用次数: 4

Abstract

Pilgrimage represents the most important Islamic religious gathering in the world where millions of pilgrims visit the holy places of Makkah and Madinah to perform their rituals. The safety and security of pilgrims is the highest priority for the authorities. In Makkah, 5000 cameras are spread around the holy mosques for monitoring pilgrims, but it is almost impossible to track all events by humans considering the huge number of images collected every second. To address this issue, we propose to use an artificial intelligence technique based on deep learning and convolutional neural networks to detect and identify Pilgrims and their features. For this purpose, we built a comprehensive dataset for the detection of pilgrims and their genders. Then, we develop two convolutional neural networks based on YOLOv3 and Faster-RCNN for the detection of Pilgrims. Experiment results show that Faster RCNN with Inception v2 feature extractor provides the best mean average precision over all classes (51%). A video demonstration that illustrates a real-time pilgrim detection using our proposed model is available at [1].
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基于人工智能的卷积神经网络朝圣者检测
朝圣是世界上最重要的伊斯兰宗教集会,数百万朝圣者前往麦加和麦地那圣地进行仪式。朝圣者的安全和保障是当局的最高优先事项。在麦加,为了监视朝觐者,在各大清真寺周围布置了5000台摄像机,但考虑到每秒采集的大量图像,人类几乎不可能跟踪所有事件。为了解决这个问题,我们建议使用基于深度学习和卷积神经网络的人工智能技术来检测和识别朝圣者及其特征。为此,我们建立了一个全面的数据集,用于检测朝圣者及其性别。然后,我们开发了基于YOLOv3和Faster-RCNN的两种卷积神经网络来检测朝圣者。实验结果表明,使用Inception v2特征提取器的更快RCNN在所有类别中提供了最好的平均精度(51%)。视频演示演示了使用我们提出的模型进行实时朝圣者检测[1]。
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