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ISHD:Intelligent Standing Human Detection of Video Surveillance for the Smart Examination Environment 被引量:1
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作者 Wu Song Yayuan Tang +1 位作者 Wenxue Tan Sheng Ren 《Computer Modeling in Engineering & Sciences》 SCIE EI 2023年第10期509-526,共18页
In the environment of smart examination rooms, it is important to quickly and accurately detect abnormal behavior(human standing) for the construction of a smart campus. Based on deep learning, we propose an intellige... In the environment of smart examination rooms, it is important to quickly and accurately detect abnormal behavior(human standing) for the construction of a smart campus. Based on deep learning, we propose an intelligentstanding human detection (ISHD) method based on an improved single shot multibox detector to detect thetarget of standing human posture in the scene frame of exam room video surveillance at a specific examinationstage. ISHD combines the MobileNet network in a single shot multibox detector network, improves the posturefeature extractor of a standing person, merges prior knowledge, and introduces transfer learning in the trainingstrategy, which greatly reduces the computation amount, improves the detection accuracy, and reduces the trainingdifficulty. The experiment proves that the model proposed in this paper has a better detection ability for the smalland medium-sized standing human body posture in video test scenes on the EMV-2 dataset. 展开更多
关键词 Deep learning object detection video surveillance of exam room smart examination environment
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An Efficient Attention-Based Strategy for Anomaly Detection in Surveillance Video
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作者 Sareer Ul Amin Yongjun Kim +2 位作者 Irfan Sami Sangoh Park Sanghyun Seo 《Computer Systems Science & Engineering》 SCIE EI 2023年第9期3939-3958,共20页
In the present technological world,surveillance cameras generate an immense amount of video data from various sources,making its scrutiny tough for computer vision specialists.It is difficult to search for anomalous e... In the present technological world,surveillance cameras generate an immense amount of video data from various sources,making its scrutiny tough for computer vision specialists.It is difficult to search for anomalous events manually in thesemassive video records since they happen infrequently and with a low probability in real-world monitoring systems.Therefore,intelligent surveillance is a requirement of the modern day,as it enables the automatic identification of normal and aberrant behavior using artificial intelligence and computer vision technologies.In this article,we introduce an efficient Attention-based deep-learning approach for anomaly detection in surveillance video(ADSV).At the input of the ADSV,a shots boundary detection technique is used to segment prominent frames.Next,The Lightweight ConvolutionNeuralNetwork(LWCNN)model receives the segmented frames to extract spatial and temporal information from the intermediate layer.Following that,spatial and temporal features are learned using Long Short-Term Memory(LSTM)cells and Attention Network from a series of frames for each anomalous activity in a sample.To detect motion and action,the LWCNN received chronologically sorted frames.Finally,the anomaly activity in the video is identified using the proposed trained ADSV model.Extensive experiments are conducted on complex and challenging benchmark datasets.In addition,the experimental results have been compared to state-ofthe-artmethodologies,and a significant improvement is attained,demonstrating the efficiency of our ADSV method. 展开更多
关键词 Attention-based anomaly detection video shots segmentation video surveillance computer vision deep learning smart surveillance system violence detection attention model
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A Personalized Video Synopsis Framework for Spherical Surveillance Video
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作者 S.Priyadharshini Ansuman Mahapatra 《Computer Systems Science & Engineering》 SCIE EI 2023年第6期2603-2616,共14页
Video synopsis is an effective way to easily summarize long-recorded surveillance videos.The omnidirectional view allows the observer to select the desired fields of view(FoV)from the different FoVavailable for spheri... Video synopsis is an effective way to easily summarize long-recorded surveillance videos.The omnidirectional view allows the observer to select the desired fields of view(FoV)from the different FoVavailable for spherical surveillance video.By choosing to watch one portion,the observer misses out on the events occurring somewhere else in the spherical scene.This causes the observer to experience fear of missing out(FOMO).Hence,a novel personalized video synopsis approach for the generation of non-spherical videos has been introduced to address this issue.It also includes an action recognition module that makes it easy to display necessary actions by prioritizing them.This work minimizes and maximizes multiple goals such as loss of activity,collision,temporal consistency,length,show,and important action cost respectively.The performance of the proposed framework is evaluated through extensive simulation and compared with the state-of-art video synopsis optimization algorithms.Experimental results suggest that some constraints are better optimized by using the latest metaheuristic optimization algorithms to generate compact personalized synopsis videos from spherical surveillance videos. 展开更多
关键词 Immersive video non-spherical video synopsis spherical video panoramic surveillance video 360°video
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Quantum Computing Based Neural Networks for Anomaly Classification in Real-Time Surveillance Videos
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作者 MD.Yasar Arafath A.Niranjil Kumar 《Computer Systems Science & Engineering》 SCIE EI 2023年第8期2489-2508,共20页
For intelligent surveillance videos,anomaly detection is extremely important.Deep learning algorithms have been popular for evaluating realtime surveillance recordings,like traffic accidents,and criminal or unlawful i... For intelligent surveillance videos,anomaly detection is extremely important.Deep learning algorithms have been popular for evaluating realtime surveillance recordings,like traffic accidents,and criminal or unlawful incidents such as suicide attempts.Nevertheless,Deep learning methods for classification,like convolutional neural networks,necessitate a lot of computing power.Quantum computing is a branch of technology that solves abnormal and complex problems using quantum mechanics.As a result,the focus of this research is on developing a hybrid quantum computing model which is based on deep learning.This research develops a Quantum Computing-based Convolutional Neural Network(QC-CNN)to extract features and classify anomalies from surveillance footage.A Quantum-based Circuit,such as the real amplitude circuit,is utilized to improve the performance of the model.As far as my research,this is the first work to employ quantum deep learning techniques to classify anomalous events in video surveillance applications.There are 13 anomalies classified from the UCF-crime dataset.Based on experimental results,the proposed model is capable of efficiently classifying data concerning confusion matrix,Receiver Operating Characteristic(ROC),accuracy,Area Under Curve(AUC),precision,recall as well as F1-score.The proposed QC-CNN has attained the best accuracy of 95.65 percent which is 5.37%greater when compared to other existing models.To measure the efficiency of the proposed work,QC-CNN is also evaluated with classical and quantum models. 展开更多
关键词 Deep learning video surveillance quantum computing anomaly detection convolutional neural network
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Weapons Detection for Security and Video Surveillance Using CNN and YOLO-V5s 被引量:2
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作者 Abdul Hanan Ashraf Muhammad Imran +5 位作者 Abdulrahman M.Qahtani Abdulmajeed Alsufyani Omar Almutiry Awais Mahmood Muhammad Attique Mohamed Habib 《Computers, Materials & Continua》 SCIE EI 2022年第2期2761-2775,共15页
In recent years,the number of Gun-related incidents has crossed over 250,000 per year and over 85%of the existing 1 billion firearms are in civilian hands,manual monitoring has not proven effective in detecting firear... In recent years,the number of Gun-related incidents has crossed over 250,000 per year and over 85%of the existing 1 billion firearms are in civilian hands,manual monitoring has not proven effective in detecting firearms.which is why an automated weapon detection system is needed.Various automated convolutional neural networks(CNN)weapon detection systems have been proposed in the past to generate good results.However,These techniques have high computation overhead and are slow to provide real-time detection which is essential for the weapon detection system.These models have a high rate of false negatives because they often fail to detect the guns due to the low quality and visibility issues of surveillance videos.This research work aims to minimize the rate of false negatives and false positives in weapon detection while keeping the speed of detection as a key parameter.The proposed framework is based on You Only Look Once(YOLO)and Area of Interest(AOI).Initially,themodels take pre-processed frames where the background is removed by the use of the Gaussian blur algorithm.The proposed architecture will be assessed through various performance parameters such as False Negative,False Positive,precision,recall rate,and F1 score.The results of this research work make it clear that due to YOLO-v5s high recall rate and speed of detection are achieved.Speed reached 0.010 s per frame compared to the 0.17 s of the Faster R-CNN.It is promising to be used in the field of security and weapon detection. 展开更多
关键词 video surveillance weapon detection you only look once convolutional neural networks
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Algorithm Research on Moving Object Detection of Surveillance Video Sequence 被引量:2
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作者 Kuihe Yang Zhiming Cai Lingling Zhao 《Optics and Photonics Journal》 2013年第2期308-312,共5页
In video surveillance, there are many interference factors such as target changes, complex scenes, and target deformation in the moving object tracking. In order to resolve this issue, based on the comparative analysi... In video surveillance, there are many interference factors such as target changes, complex scenes, and target deformation in the moving object tracking. In order to resolve this issue, based on the comparative analysis of several common moving object detection methods, a moving object detection and recognition algorithm combined frame difference with background subtraction is presented in this paper. In the algorithm, we first calculate the average of the values of the gray of the continuous multi-frame image in the dynamic image, and then get background image obtained by the statistical average of the continuous image sequence, that is, the continuous interception of the N-frame images are summed, and find the average. In this case, weight of object information has been increasing, and also restrains the static background. Eventually the motion detection image contains both the target contour and more target information of the target contour point from the background image, so as to achieve separating the moving target from the image. The simulation results show the effectiveness of the proposed algorithm. 展开更多
关键词 video surveillance MOVING Object Detection FRAME DIFFERENCE BACKGROUND SUBTRACTION
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UTILITY OPTIMIZATION SCHEDULING FOR MULTI-POINT VIDEO SURVEILLANCE IN UBIQUITOUS NETWORK 被引量:1
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作者 Zhang Chen Huang Liusheng Xu Hongli 《Journal of Electronics(China)》 2013年第1期1-8,共8页
Resource allocation is an important problem in ubiquitous network. Most of the existing resource allocation methods considering only wireless networks are not suitable for the ubiquitous network environment, and they ... Resource allocation is an important problem in ubiquitous network. Most of the existing resource allocation methods considering only wireless networks are not suitable for the ubiquitous network environment, and they will harm the interest of individual users with instable resource requirements. This paper considers the multi-point video surveillance scenarios in a complex network environment with both wired and wireless networks. We introduce the utility estimated by the total costs of an individual network user. The problem is studied through mathematical modeling and we propose an improved problem-specific branch-and-cut algorithm to solve it. The algorithm follows the divide-and-conquer principle and fully considers the duality feature of network selection. The experiment is conducted by simulation through C and Lingo. And it shows that compared with a centralized random allocation scheme and a cost greed allocation scheme, the proposed scheme has better per- formance of reducing the total costs by 13.0% and 30.6% respectively for the user. 展开更多
关键词 视频监控系统 网络环境 优化调度 资源分配 无线网络 个人用户 成本估计 分配方案
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Intelligent Mobile Video Surveillance System with Multilevel Distillation
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作者 Yuan-Kai Wang Hung-Yu Chen 《Journal of Electronic Science and Technology》 CAS CSCD 2017年第2期133-140,共8页
This paper proposes a mobile video surveillance system consisting of intelligent video analysis and mobile communication networking. This multilevel distillation approach helps mobile users monitor tremendous surveill... This paper proposes a mobile video surveillance system consisting of intelligent video analysis and mobile communication networking. This multilevel distillation approach helps mobile users monitor tremendous surveillance videos on demand through video streaming over mobile communication networks. The intelligent video analysis includes moving object detection/tracking and key frame selection which can browse useful video clips. The communication networking services, comprising video transcoding, multimedia messaging, and mobile video streaming, transmit surveillance information into mobile appliances. Moving object detection is achieved by background subtraction and particle filter tracking. Key frame selection, which aims to deliver an alarm to a mobile client using multimedia messaging service accompanied with an extracted clear frame, is reached by devising a weighted importance criterion considering object clarity and face appearance. Besides, a spatial- domain cascaded transcoder is developed to convert the filtered image sequence of detected objects into the mobile video streaming format. Experimental results show that the system can successfully detect all events of moving objects for a complex surveillance scene, choose very appropriate key frames for users, and transcode the images with a high power signal-to-noise ratio (PSNR). 展开更多
关键词 Index Terms---Mobile video streaming moving object detection key frame extraction video surveillance video transcoding.
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Human Detection for Video Surveillance in Hospital
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作者 Cheng-Hung Chuang Zhen-You Lian +1 位作者 Po-Ren Teng Miao-Jen Lin 《Journal of Electronic Science and Technology》 CAS CSCD 2017年第2期147-152,共6页
This paper presents a human detection system in a vision-based hospital surveillance environment. The system is composed of three subsystems, i.e. background segmentation subsystem (BSS), human feature extraction su... This paper presents a human detection system in a vision-based hospital surveillance environment. The system is composed of three subsystems, i.e. background segmentation subsystem (BSS), human feature extraction subsystem (HFES), and human recognition subsystem (HRS). The codebook background model is applied in the BSS, the histogram of oriented gradients (HOG) features are used in the HFES, and the support vector machine (SVM) classification is employed in the HRS. By means of the integration of these subsystems, the human detection in a vision-based hospital surveillance environment is performed. Experimental results show that the proposed system can effectively detect most of the people in hospital surveillance video sequences. 展开更多
关键词 Index Terms--Background segmentation CODEBOOK histogram of oriented gradients (HOG) human classification support vector machine (SVM) video surveillance.
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Guest Editorial:Intelligent Video Surveillance and Related Technologies
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作者 Chung-Lin Huang Cheng-Chang Lien +1 位作者 I-Cheng Chang Chih-Yang Lin 《Journal of Electronic Science and Technology》 CAS CSCD 2017年第2期113-114,共2页
Due to the increasing demand for developing a secure and smart living environment, the intelligent video surveillance technology has attracted considerable attention. Building an automatic, reliable, secure, and intel... Due to the increasing demand for developing a secure and smart living environment, the intelligent video surveillance technology has attracted considerable attention. Building an automatic, reliable, secure, and intelligent video surveillance system has spawned large research projects and triggered many popular research topics in several international conferences and workshops recently. This special issue of Journal of ElecWonic Science and Technology (JEST) aims to present recent advances in video surveillance systems which address the observation of people in an environment, leading to a real-time description of their actions and interactions. 展开更多
关键词 IS for been Guest Editorial Intelligent video surveillance and Related Technologies of in BODY that
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Action Recognition in Surveillance Videos with Combined Deep Network Models
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作者 ZHANG Diankai ZHAO Rui-Wei +3 位作者 SHEN Lin CHEN Shaoxiang SUN Zhenfeng JIANG Yu-Gang 《ZTE Communications》 2016年第B12期54-60,共7页
Action recognition is an important topic in computer vision. Recently, deep learning technologies have been successfully used in lots of applications including video data for sloving recognition problems. However, mos... Action recognition is an important topic in computer vision. Recently, deep learning technologies have been successfully used in lots of applications including video data for sloving recognition problems. However, most existing deep learning based recognition frameworks are not optimized for action in the surveillance videos. In this paper, we propose a novel method to deal with the recognition of different types of actions in outdoor surveillance videos. The proposed method first introduces motion compensation to improve the detection of human target. Then, it uses three different types of deep models with single and sequenced images as inputs for the recognition of different types of actions. Finally, predictions from different models are fused with a linear model. Experimental results show that the proposed method works well on the real surveillance videos. 展开更多
关键词 action recognition deep network models model fusion surveillance video
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Visibility Enhancement of Scene Images Degraded by Foggy Weather Condition: An Application to Video Surveillance
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作者 Ghulfam Zahra Muhammad Imran +4 位作者 Abdulrahman M.Qahtani Abdulmajeed Alsufyani Omar Almutiry Awais Mahmood Fayez Eid Alazemi 《Computers, Materials & Continua》 SCIE EI 2021年第9期3465-3481,共17页
:In recent years,video surveillance application played a significant role in our daily lives.Images taken during foggy and haze weather conditions for video surveillance application lose their authenticity and hence r... :In recent years,video surveillance application played a significant role in our daily lives.Images taken during foggy and haze weather conditions for video surveillance application lose their authenticity and hence reduces the visibility.The reason behind visibility enhancement of foggy and haze images is to help numerous computer and machine vision applications such as satellite imagery,object detection,target killing,and surveillance.To remove fog and enhance visibility,a number of visibility enhancement algorithms and methods have been proposed in the past.However,these techniques suffer from several limitations that place strong obstacles to the real world outdoor computer vision applications.The existing techniques do not perform well when images contain heavy fog,large white region and strong atmospheric light.This research work proposed a new framework to defog and dehaze the image in order to enhance the visibility of foggy and haze images.The proposed framework is based on a Conditional generative adversarial network(CGAN)with two networks;generator and discriminator,each having distinct properties.The generator network generates fog-free images from foggy images and discriminator network distinguishes between the restored image and the original fog-free image.Experiments are conducted on FRIDA dataset and haze images.To assess the performance of the proposed method on fog dataset,we use PSNR and SSIM,and for Haze dataset use e,r−,andσas performance metrics.Experimental results shows that the proposed method achieved higher values of PSNR and SSIM which is 18.23,0.823 and lower values produced by the compared method which are 13.94,0.791 and so on.Experimental results demonstrated that the proposed framework Has removed fog and enhanced the visibility of foggy and hazy images. 展开更多
关键词 video surveillance degraded images image restoration transmission map visibility enhancement
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Smart Deep Learning Based Human Behaviour Classification for Video Surveillance
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作者 Esam A.Al.Qaralleh Fahad Aldhaban +2 位作者 Halah Nasseif Malek Z.Alksasbeh Bassam A.Y.Alqaralleh 《Computers, Materials & Continua》 SCIE EI 2022年第9期5593-5605,共13页
Real-time video surveillance system is commonly employed to aid security professionals in preventing crimes.The use of deep learning(DL)technologies has transformed real-time video surveillance into smart video survei... Real-time video surveillance system is commonly employed to aid security professionals in preventing crimes.The use of deep learning(DL)technologies has transformed real-time video surveillance into smart video surveillance systems that automate human behavior classification.The recognition of events in the surveillance videos is considered a hot research topic in the field of computer science and it is gaining significant attention.Human action recognition(HAR)is treated as a crucial issue in several applications areas and smart video surveillance to improve the security level.The advancements of the DL models help to accomplish improved recognition performance.In this view,this paper presents a smart deep-based human behavior classification(SDL-HBC)model for real-time video surveillance.The proposed SDL-HBC model majorly aims to employ an adaptive median filtering(AMF)based pre-processing to reduce the noise content.Also,the capsule network(CapsNet)model is utilized for the extraction of feature vectors and the hyperparameter tuning of the CapsNet model takes place utilizing the Adam optimizer.Finally,the differential evolution(DE)with stacked autoencoder(SAE)model is applied for the classification of human activities in the intelligent video surveillance system.The performance validation of the SDL-HBC technique takes place using two benchmark datasets such as the KTH dataset.The experimental outcomes reported the enhanced recognition performance of the SDL-HBC technique over the recent state of art approaches with maximum accuracy of 0.9922. 展开更多
关键词 Human action recognition video surveillance intelligent systems deep learning SECURITY image classification
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Detection of Objects in Motion—A Survey of Video Surveillance
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作者 Jamal Raiyn 《Advances in Internet of Things》 2013年第4期73-78,共6页
Video surveillance system is the most important issue in homeland security field. It is used as a security system because of its ability to track and to detect a particular person. To overcome the lack of the conventi... Video surveillance system is the most important issue in homeland security field. It is used as a security system because of its ability to track and to detect a particular person. To overcome the lack of the conventional video surveillance system that is based on human perception, we introduce a novel cognitive video surveillance system (CVS) that is based on mobile agents. CVS offers important attributes such as suspect objects detection and smart camera cooperation for people tracking. According to many studies, an agent-based approach is appropriate for distributed systems, since mobile agents can transfer copies of themselves to other servers in the system. 展开更多
关键词 video surveillance OBJECT DETECTION Image Analysis
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Framework for distributed video surveillance in heterogeneous environment
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作者 FU Xiang ZENG Jie-xian NIE Yun-feng 《通讯和计算机(中英文版)》 2009年第2期25-28,共4页
关键词 有线网络 视频监控 移动电话 信号 通信技术
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Semi-automatic Video Annotation Tool to Generate Ground Truth for Intelligent Video Surveillance Systems
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作者 Ryu-Hyeok Gwon Jin-Tak Park Hakil Kim Yoo-Sung Kim 《Journal of Electrical Engineering》 2014年第4期160-168,共9页
关键词 电气控制 控制理论 电气测量 集中参数
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Towards Collaborative Robotics in Top View Surveillance:A Framework for Multiple Object Tracking by Detection Using Deep Learning 被引量:7
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作者 Imran Ahmed Sadia Din +2 位作者 Gwanggil Jeon Francesco Piccialli Giancarlo Fortino 《IEEE/CAA Journal of Automatica Sinica》 SCIE EI CSCD 2021年第7期1253-1270,共18页
Collaborative Robotics is one of the high-interest research topics in the area of academia and industry.It has been progressively utilized in numerous applications,particularly in intelligent surveillance systems.It a... Collaborative Robotics is one of the high-interest research topics in the area of academia and industry.It has been progressively utilized in numerous applications,particularly in intelligent surveillance systems.It allows the deployment of smart cameras or optical sensors with computer vision techniques,which may serve in several object detection and tracking tasks.These tasks have been considered challenging and high-level perceptual problems,frequently dominated by relative information about the environment,where main concerns such as occlusion,illumination,background,object deformation,and object class variations are commonplace.In order to show the importance of top view surveillance,a collaborative robotics framework has been presented.It can assist in the detection and tracking of multiple objects in top view surveillance.The framework consists of a smart robotic camera embedded with the visual processing unit.The existing pre-trained deep learning models named SSD and YOLO has been adopted for object detection and localization.The detection models are further combined with different tracking algorithms,including GOTURN,MEDIANFLOW,TLD,KCF,MIL,and BOOSTING.These algorithms,along with detection models,help to track and predict the trajectories of detected objects.The pre-trained models are employed;therefore,the generalization performance is also investigated through testing the models on various sequences of top view data set.The detection models achieved maximum True Detection Rate 93%to 90%with a maximum 0.6%False Detection Rate.The tracking results of different algorithms are nearly identical,with tracking accuracy ranging from 90%to 94%.Furthermore,a discussion has been carried out on output results along with future guidelines. 展开更多
关键词 Collaborative robotics deep learning object detection and tracking top view video surveillance
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Review for Anomaly Detection in Video Surveillance System Based on Deep Learning
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作者 Yuchang Si 《IJLAI Transactions on Science and Engineering》 2024年第1期63-72,共10页
In this paper,abnormal target detection and location in video surveillance system are studied.In recent years,with the rapid development of network information technology,video surveillance technology has been widely ... In this paper,abnormal target detection and location in video surveillance system are studied.In recent years,with the rapid development of network information technology,video surveillance technology has been widely used,artificial anomaly detection methods have no way to meet the effective growth of video surveillance data,with 3D technology,face recognition technology,etc.,also promote the development of the field of computer vision,for the rapid analysis of a large number of video data to provide effective support.At present,abnormal target detection methods in video surveillance system mainly include the following two methods:One is to extract two-dimensional data features from video surveillance data,and effectively express video targets according to the extracted features.The information expressed mainly includes time information and spatial information.The second is to directly learn 3D space-time features for the module with motion information to detect the location of the abnormal target.Finally,the paper summarizes the full text and looks forward to the future development direction of video anomaly detection from three aspects:data set,method and evaluation index. 展开更多
关键词 Anomaly detection video surveillance Deep learning
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Background Subtraction and Frame Difference Based Moving Object Detection for Real-Time Surveillance 被引量:5
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作者 黄中文 戚飞虎 岑峰 《Journal of Donghua University(English Edition)》 EI CAS 2003年第1期15-19,共5页
A new real.time algorithm is proposed in this paper for detecting moving object in color image sequences taken from stationary cameras. This algorithm combines a temporal difference with an adaptive background subtrac... A new real.time algorithm is proposed in this paper for detecting moving object in color image sequences taken from stationary cameras. This algorithm combines a temporal difference with an adaptive background subtraction where the combination is novel. When changes occur, the background is automatically adapted to suit the new conditions. For the background model, a new model is proposed with each frame decomposed into regions and the model is based not only upon single pixel but also on the characteristic of a region. The hybrid presentation includes a model for single pixel information and a model for the pixel's neighboring area information. This new model of background can both improve the accuracy of segmentation due to that spatial information is taken into account and saliently speed up the processing procedure because portion of neighboring pixel can be selected into modeling. The algorithm was successfully used in a videosurveillance system and the experiment result shows it can obtain a clearer foreground than the single frame difference or background subtraction method. 展开更多
关键词 运动目标检测 实时监控 图像处理 背景回退法
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Automatic Detection of Weapons in Surveillance Cameras Using Efficient-Net
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作者 Erssa Arif Syed Khuram Shahzad +3 位作者 Muhammad Waseem Iqbal Muhammad Arfan Jaffar Abdullah S.Alshahrani Ahmed Alghamdi 《Computers, Materials & Continua》 SCIE EI 2022年第9期4615-4630,共16页
The conventional Close circuit television(CCTV)cameras-based surveillance and control systems require human resource supervision.Almost all the criminal activities take place using weapons mostly a handheld gun,revolv... The conventional Close circuit television(CCTV)cameras-based surveillance and control systems require human resource supervision.Almost all the criminal activities take place using weapons mostly a handheld gun,revolver,pistol,swords etc.Therefore,automatic weapons detection is a vital requirement now a day.The current research is concerned about the real-time detection of weapons for the surveillance cameras with an implementation of weapon detection using Efficient–Net.Real time datasets,from local surveillance department’s test sessions are used for model training and testing.Datasets consist of local environment images and videos from different type and resolution cameras that minimize the idealism.This research also contributes in the making of Efficient-Net that is experimented and results in a positive dimension.The results are also been represented in graphs and in calculations for the representation of results during training and results after training are also shown to represent our research contribution.Efficient-Net algorithm gives better results than existing algorithms.By using Efficient-Net algorithms the accuracy achieved 98.12%when epochs increase as compared to other algorithms. 展开更多
关键词 Detection algorithms machine learning machine vision video surveillance
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