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CNN-Based Crowd Counting Through IoT: Application For Saudi Public Places

机译:基于CNN的人群计数通过IOT:对沙特公共场所的申请

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Crowd counting in specific places has recently been considered as a significant contribution in many applications in terms of security and economic values. Recently, the Kingdom of Saudi Arabia has considered new ways and methods to diversify sources of income, where many non-traditional establishments in several fields have been initiated and put in place. However, controlling the number of visitors and participants to events and exhibitions has always been a challenge, as it has always been considered as an important success factor to any event. Smart public places approach is one of the inevitable directions of development in Saudi Arabia, where security, comfort, and safety of crowds is to be controlled and managed using machine learning techniques, more specifically, IoT-based crowd counting techniques. Such a technology will not only help in resolving security and safety problems, but also will play a significant role in reducing waiting time for visitors, by giving indicators, projections and advices on crowded places. In this paper, a mobile-based model is proposed for counting people in high and low crowded public places in Saudi Arabia under various scene conditions with no prior knowledge. The proposed model is built based on pre-trained convolutional neural network (CNN) called VGG-16 with some modifications on the last layer of the CNN to increase the efficiency of the training model. In addition to the improvement of efficiency, the proposed method accepts images of arbitrary sizes/scales as inputs. The applicability of the proposed method has been evaluated by incorporating IoT architecture, where surveillance cameras to be connected to the Internet to capture live pictures of different public places. To achieve this goal, New and special Saudi people dataset as well as some other existing dataset, have been produced and used to train the network. The result shows a significant improvement to the efficiency of the DCNN over the existing counting networks.
机译:在特定地方的人群计数最近被认为是在安全和经济价值方面的许多应用中的重大贡献。最近,沙特阿拉伯王国已经考虑了多元化收入来源的新方法和方法,其中许多领域的许多非传统机构都已启动和实施。然而,控制参观者和参与者的活动和参与者的人数始终是一个挑战,因为它一直被认为是任何事件的重要成功因素。智能公共场所方法是沙特阿拉伯的不可避免的发展方向之一,其中人群的安全性,舒适和安全是使用机器学习技术进行控制和管理,更具体地说,是基于物联网的人群计数技术。这种技术不仅可以解决安全和安全问题,而且在减少游客的等待时间,通过给予拥挤地点的指标,预测和建议,也将发挥重要作用。在本文中,提出了一种基于移动的模型,用于在不同现场条件下计算沙特阿拉伯的高低拥挤公共场所的人们,没有先验知识。所提出的模型是基于预先训练的卷积神经网络(CNN),称为VGG-16,在CNN的最后一层上有一些修改,以提高训练模型的效率。除了提高效率之外,所提出的方法还接受任意大小/尺度的图像作为输入。通过结合IOT架构来评估所提出的方法的适用性,其中监视摄像机连接到互联网以捕获不同公共场所的实时图片。为了实现这一目标,新的和特殊的沙特人数据集以及其他一些现有数据集已被制作并用于培训网络。结果显示了对现有计数网络的DCNN效率的显着改善。

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