4.6 Article

Deep Transfer Learning Enabled Intelligent Object Detection for Crowd Density Analysis on Video Surveillance Systems

期刊

APPLIED SCIENCES-BASEL
卷 12, 期 13, 页码 -

出版社

MDPI
DOI: 10.3390/app12136665

关键词

object detection; object tracking; video surveillance; computer vision; crowd density estimation; deep learning; parameter optimization

资金

  1. King Khalid University [42/43]
  2. Princess Nourah Bint Abdulrahman University, Riyadh, Saudi Arabia [PNURSP2022R77]
  3. Umm Al-Qura University [22UQU4210118DSR22]
  4. Majmaah University [R-2022-xxx]

向作者/读者索取更多资源

This paper proposes a Metaheuristics with Deep Transfer Learning Enabled Intelligent Crowd Density Detection and Classification (MDTL-ICDDC) model for video surveillance systems. The MDTL-ICDDC model primarily leverages a Salp Swarm Algorithm (SSA) for feature extraction, a weighted extreme learning machine (WELM) for crowd density and classification, and the krill swarm algorithm (KSA) for parameter optimization. Experimental results show that the MDTL-ICDDC system outperforms other models in terms of performance.
Object detection is a computer vision based technique which is used to detect instances of semantic objects of a particular class in digital images and videos. Crowd density analysis is one of the commonly utilized applications of object detection. Since crowd density classification techniques face challenges like non-uniform density, occlusion, inter-scene, and intra-scene deviations, convolutional neural network (CNN) models are useful. This paper presents a Metaheuristics with Deep Transfer Learning Enabled Intelligent Crowd Density Detection and Classification (MDTL-ICDDC) model for video surveillance systems. The proposed MDTL-ICDDC technique mostly concentrates on the effective identification and classification of crowd density on video surveillance systems. In order to achieve this, the MDTL-ICDDC model primarily leverages a Salp Swarm Algorithm (SSA) with NASNetLarge model as a feature extraction in which the hyperparameter tuning process is performed by the SSA. Furthermore, a weighted extreme learning machine (WELM) method was utilized for crowd density and classification process. Finally, the krill swarm algorithm (KSA) is applied for an effective parameter optimization process and thereby improves the classification results. The experimental validation of the MDTL-ICDDC approach was carried out with a benchmark dataset, and the outcomes are examined under several aspects. The experimental values indicated that the MDTL-ICDDC system has accomplished enhanced performance over other models such as Gabor, BoW-SRP, Bow-LBP, GLCM-SVM, GoogleNet, and VGGNet.

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