An intelligent deep learning based capsule network model for human detection in indoor surveillance videos

被引:0
作者
S. Ushasukhanya
T. Y. J. Naga Malleswari
M. Karthikeyan
C. Jayavarthini
机构
[1] SRM Institute of Science and Technology,Department of Networking and Communications
[2] SRM Institute of Science and Technology,Department of Computing Technologies
来源
Soft Computing | 2024年 / 28卷
关键词
Human detection; Indoor surveillance; Deep learning; Object detection; CapsNet; Faster RCNN;
D O I
暂无
中图分类号
学科分类号
摘要
At present times, indoor surveillance becomes a hot research topic among researchers and business sectors. Human detection is one of the vital areas of focus in the surveillance system owing to its significance in proper person detection, human activity identification, and scene classification. Since the indoor spaces comprise poor lighting, variable illuminations, shadowing, and complex background, the human detection process becomes a tedious task. The advent of computer vision and deep learning (DL) models is commonly employed for human detection. This article presents a new intelligent deep learning model for human detection in indoor surveillance videos (IDL-HDIS). As data augmentation process is one of the most renowned ways to increase the size of the dataset which is highly essential for enhancing the prediction accuracy of the model, the same is carried out as a part of even this research work which includes performing rotation, translation and flipping. The IDL-GDIS model uses Faster Region Convolutional Neural Network (Faster R-CNN) model for human detection. The Faster R-CNN comprises of Fast R-CNN and Region Proposal Network (RPN). The RPN uses Capsule Networks (CapsNet) model as a shared convolution neural network (CNN), which acts as a feature extractor and generates the feature map. Besides, dropout is employed to avoid overfitting problem in the CapsNet architecture, the validation of IDL-HDIS model is done by a comprehensive simulation analysis under different aspects. The validation is supported by the evident results of the IDL-HDIS model which is given in the paper.
引用
收藏
页码:737 / 747
页数:10
相关论文
共 56 条
[1]  
An F(2019)Facial expression recognition algorithm based on parameter adaptive initialization of CNN and LSTM Vis Comput 35 1-16
[2]  
Liu Z(2017)Tracking people by detection using CNN features Proc Comput Sci 124 167-172
[3]  
Chahyati D(2019)Pedestrian detection under partial occlusion by using logic inference, HOG and SVM IEEE Lat Am Trans 17 1552-1559
[4]  
Fanany MI(2017)Face recognition using both visible light image and near-infrared image and a deep network CAAI Trans Intell Technol 2 39-47
[5]  
Arymurthy AM(2020)Understanding dropout as an optimization trick Neurocomputing 398 64-70
[6]  
Flores Calero MJ(2020)Human detection and tracking with deep convolutional neural networks under the constrained of noise and occluded scenes Multimed Tools Appl 79 30685-30708
[7]  
Aldás M(2020)Enhanced pedestrian detection using optimized deep convolution neural network for smart building surveillance Soft Comput 24 17081-17092
[8]  
Lázaro J(2020)Multimodel deep learning for person detection in aerial images Electronics 9 1459-475
[9]  
Gardel A(2016)Landmark perturbation-based data augmentation for unconstrained face recognition Signal Process Image Commun 47 465-37
[10]  
Onofa N(2019)Efficient and robust Pedestrian Detection using deep learning for human-aware navigation Robot Auton Syst 113 23-1310