Mansouri Wahida, Alohali Manal Abdullah, Alqahtani Hamed, Alruwais Nuha, Alshammeri Menwa, Mahmud Ahmed
Department of Computer Science and Information Technology, Faculty of Sciences and Arts, Turaif, Northern Border University, 91431, Arar, Saudi Arabia.
Department of Information Systems, College of Computer and Information Sciences, Princess Nourah Bint Abdulrahman University, P.O. Box 84428, 11671, Riyadh, Kingdom of Saudi Arabia.
Sci Rep. 2025 Feb 17;15(1):5759. doi: 10.1038/s41598-025-90430-4.
The concept of a smart city has spread as a solution ensuring wider availability of data and services to citizens, apart from as a means to lower the environmental footprint of cities. Crowd density monitoring is a cutting-edge technology that enables smart cities to monitor and effectively manage crowd movements in real time. By utilizing advanced artificial intelligence and video analytics, valuable insights are accumulated from crowd behaviour, assisting cities in improving operational efficiency, improving public safety, and urban planning. This technology also significantly contributes to resource allocation and emergency response, contributing to smarter, safer urban environments. Crowd density classification in smart cities using deep learning (DL) employs cutting-edge NN models to interpret and analyze information from sensors such as IoT devices and CCTV cameras. This technique trains DL models on large datasets to accurately count people in a region, assisting traffic management, safety, and urban planning. By utilizing recurrent neural networks (RNNs) for time-series data and convolutional neural networks (CNNs) for image processing, the model adapts to varying crowd scenarios, lighting, and angles. This manuscript presents a Deep Convolutional Neural Network-based Crowd Density Monitoring for Intelligent Urban Planning (DCNNCDM-IUP) technique on smart cities. The proposed DCNNCDM-IUP technique utilizes DL methods to detect crowd densities, which can significantly assist in urban planning for smart cities. Initially, the DCNNCDM-IUP technique performs image preprocessing using Gaussian filtering (GF). The DCNNCDM-IUP technique utilizes the SE-DenseNet approach, which effectually learns complex feature patterns for feature extraction. Moreover, the hyperparameter selection of the SE-DenseNet approach is accomplished by using the red fox optimization (RFO) methodology. Finally, the convolutional long short-term memory (ConvLSTM) methodology recognizes varied crowd densities. A comprehensive simulation analysis is conducted to demonstrate the improved performance of the DCNNCDM-IUP technique. The experimental validation of the DCNNCDM-IUP technique portrayed a superior accuracy value of 98.40% compared to existing DL models.
智慧城市的概念已广泛传播,它不仅是降低城市环境足迹的一种手段,更是确保为市民提供更广泛数据和服务的解决方案。人群密度监测是一项前沿技术,可使智慧城市实时监测并有效管理人群流动。通过利用先进的人工智能和视频分析技术,从人群行为中积累有价值的见解,协助城市提高运营效率、改善公共安全和进行城市规划。该技术还对资源分配和应急响应有显著贡献,有助于打造更智能、更安全的城市环境。在智慧城市中,使用深度学习(DL)进行人群密度分类采用前沿的神经网络(NN)模型来解释和分析来自物联网设备和闭路电视摄像头等传感器的信息。该技术在大型数据集上训练DL模型,以准确统计区域内的人数,辅助交通管理、安全保障和城市规划。通过将循环神经网络(RNN)用于时间序列数据,卷积神经网络(CNN)用于图像处理,该模型可适应不同的人群场景、光照和角度。本文提出了一种基于深度卷积神经网络的智能城市规划人群密度监测(DCNNCDM - IUP)技术。所提出的DCNNCDM - IUP技术利用DL方法检测人群密度,这可显著协助智慧城市的城市规划。最初,DCNNCDM - IUP技术使用高斯滤波(GF)进行图像预处理。DCNNCDM - IUP技术采用SE - DenseNet方法,该方法能有效地学习复杂特征模式以进行特征提取。此外,SE - DenseNet方法的超参数选择通过红狐优化(RFO)方法完成。最后,卷积长短期记忆(ConvLSTM)方法识别不同的人群密度。进行了全面的仿真分析以证明DCNNCDM - IUP技术的改进性能。与现有DL模型相比,DCNNCDM - IUP技术的实验验证显示出98.40%的卓越准确率。