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Change Detection by Training a Triplet Network for Motion Feature Extraction | IEEE Journals & Magazine | IEEE Xplore

Change Detection by Training a Triplet Network for Motion Feature Extraction


Abstract:

Change/motion detection is a challenging problem in video analysis and surveillance system. Recently, the state-of-the-art methods using the sample-based background model...Show More

Abstract:

Change/motion detection is a challenging problem in video analysis and surveillance system. Recently, the state-of-the-art methods using the sample-based background model have demonstrated astonishing results with this problem. However, they are ineffective in the dynamic scenes that contain complex motion patterns. In this paper, we introduce a novel data-driven approach that combines the sample-based background model with a feature extractor obtained by training a triplet network. We construct the network by three identical convolutional neural networks, each of which is called a motion feature network. Our network can automatically learn motion patterns from small image patches and transform input images of any size into feature embeddings for high-level representations. The sample-based background model of each pixel is then employed by using the color information and the extracted feature embeddings. We also propose an approach to generate triplet examples from CDNet 2014 for training our network model from scratch. The offline trained network can be used on the fly without re-training on any video sequence before each execution. Therefore, it is feasible for real-time surveillance systems. In this paper, we show that our method outperforms the other state-of-the-art methods on CDNet 2014 and other benchmarks (BMC and Wallflower).
Page(s): 433 - 446
Date of Publication: 22 January 2018

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I. Introduction

Due to the growth of video analysis and surveillance applications, change detection (CD) has emerged as an essential step for advanced tasks such as object tracking [1]–[3], object classification [4], action recognition [5]. CD is considered a two-class classification based on the movement of the objects in a scene. The background class (BG) represents the stationary scenes, objects, or events, and the foreground class (FG) denotes the moving objects of interest. The classes are denoted as a binary image, called a segmentation mask.

Cites in Papers - |

Cites in Papers - IEEE (21)

Select All
1.
Qing Guo, Ruofei Wang, Rui Huang, Renjie Wan, Shuifa Sun, Yuxiang Zhang, "IDET: Iterative Difference-Enhanced Transformers for High-Quality Change Detection", IEEE Transactions on Emerging Topics in Computational Intelligence, vol.9, no.2, pp.1093-1106, 2025.
2.
Shengning Zhou, Genji Yuan, Zhen Hua, Jinjiang Li, "DGFEG: Dynamic Gate Fusion and Edge Graph Perception Network for Remote Sensing Change Detection", IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, vol.18, pp.3581-3598, 2025.
3.
Mehvish Nissar, Badri Narayan Subudhi, Amit Kumar Mishra, Vinit Jakhetiya, "NICASU: Neurotransmitter Inspired Cognitive AI Architecture for Surveillance Underwater", IEEE Transactions on Artificial Intelligence, vol.6, no.3, pp.626-638, 2025.
4.
Shuying Li, Chao Ren, Yuemei Qin, Qiang Li, "Semantic-Explicit Filtering Network for Remote Sensing Image Change Detection", IEEE Transactions on Geoscience and Remote Sensing, vol.62, pp.1-11, 2024.
5.
Upasana Panigrahi, Manoj Kumar Panda, Prabodh Kumar, Smita Rani Parija, Deepak Kumar Rout, Aswini Kumar Samantaray, "Moving Object Detection for Thermal Video Using Encoder-Decoder Type Deep Learning Framework", 2024 Parul International Conference on Engineering and Technology (PICET), pp.1-6, 2024.
6.
Prabodh Kumar Sahoo, Manoj Kumar Panda, Upasana Panigrahi, Ganapati Panda, Prince Jain, Md. Shabiul Islam, Mohammad Tariqul Islam, "An Improved VGG-19 Network Induced Enhanced Feature Pooling for Precise Moving Object Detection in Complex Video Scenes", IEEE Access, vol.12, pp.45847-45864, 2024.
7.
Nhat Minh Chung, Synh Viet-Uyen Ha, "BgSubNet: Robust Semisupervised Background Subtraction in Realistic Scenes", IEEE Sensors Journal, vol.24, no.6, pp.9172-9186, 2024.
8.
Xinyang Song, Zhen Hua, Jinjiang Li, "Context Spatial Awareness Remote Sensing Image Change Detection Network Based on Graph and Convolution Interaction", IEEE Transactions on Geoscience and Remote Sensing, vol.62, pp.1-16, 2024.
9.
Seonhoon Lee, Jong-Hwan Kim, "Semi-Supervised Scene Change Detection by Distillation from Feature-metric Alignment", 2024 IEEE/CVF Winter Conference on Applications of Computer Vision (WACV), pp.1215-1224, 2024.
10.
Manoj Kumar Panda, Badri Narayan Subudhi, Thangaraj Veerakumar, Vinit Jakhetiya, "Modified ResNet-152 Network With Hybrid Pyramidal Pooling for Local Change Detection", IEEE Transactions on Artificial Intelligence, vol.5, no.4, pp.1599-1612, 2024.
11.
Enqiang Guo, Xinsha Fu, "Local-Specificity and Wide-View Attention Network With Hard Sample Aware Contrastive Loss for Street Scene Change Detection", IEEE Access, vol.11, pp.129009-129030, 2023.
12.
Tin-Thai Trung, Synh Viet-Uyen Ha, "Post Processing Algorithm for Background Subtraction Model based on Entropy Approximation and Style Transfer Neural Network", 2022 RIVF International Conference on Computing and Communication Technologies (RIVF), pp.422-427, 2022.
13.
Jae-Yeul Kim, Jong-Eun Ha, "Foreground Object Detection in Visual Surveillance With Spatio-Temporal Fusion Network", IEEE Access, vol.10, pp.122857-122869, 2022.
14.
Jin-Man Park, Ue-Hwan Kim, Seon-Hoon Lee, Jong-Hwan Kim, "Dual Task Learning by Leveraging Both Dense Correspondence and Mis-Correspondence for Robust Change Detection With Imperfect Matches", 2022 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR), pp.13739-13749, 2022.
15.
Murari Mandal, Santosh Kumar Vipparthi, "An Empirical Review of Deep Learning Frameworks for Change Detection: Model Design, Experimental Frameworks, Challenges and Research Needs", IEEE Transactions on Intelligent Transportation Systems, vol.23, no.7, pp.6101-6122, 2022.
16.
Murari Mandal, Santosh Kumar Vipparthi, "Scene Independency Matters: An Empirical Study of Scene Dependent and Scene Independent Evaluation for CNN-Based Change Detection", IEEE Transactions on Intelligent Transportation Systems, vol.23, no.3, pp.2031-2044, 2022.
17.
Fei Gao, Yunyang Li, Shufang Lu, "Extracting Moving Objects More Accurately: A CDA Contour Optimizer", IEEE Transactions on Circuits and Systems for Video Technology, vol.31, no.12, pp.4840-4849, 2021.
18.
Murari Mandal, Vansh Dhar, Abhishek Mishra, Santosh Kumar Vipparthi, Mohamed Abdel-Mottaleb, "3DCD: Scene Independent End-to-End Spatiotemporal Feature Learning Framework for Change Detection in Unseen Videos", IEEE Transactions on Image Processing, vol.30, pp.546-558, 2021.
19.
Long Hoang Pham, Hung Ngoc Phan, Nhat Minh Chung, Tuan-Anh Vu, Synh Viet-Uyen Ha, "A Robust Multiclass Vehicle Detection and Classification Algorithm for Traffic Surveillance System", 2020 RIVF International Conference on Computing and Communication Technologies (RIVF), pp.1-6, 2020.
20.
Murari Mandal, Lav Kush Kumar, Mahipal Singh Saran, Santosh Kumar Vipparthi, "MotionRec: A Unified Deep Framework for Moving Object Recognition", 2020 IEEE Winter Conference on Applications of Computer Vision (WACV), pp.2723-2732, 2020.
21.
Murari Mandal, Vansh Dhar, Abhishek Mishra, Santosh Kumar Vipparthi, "3DFR: A Swift 3D Feature Reductionist Framework for Scene Independent Change Detection", IEEE Signal Processing Letters, vol.26, no.12, pp.1882-1886, 2019.

Cites in Papers - Other Publishers (20)

1.
Synh Viet-Uyen Ha, Tien-Cuong Nguyen, Hung Ngoc Phan, Phuong Hoai Ha, "Real-Time Change Detection with Convolutional Density Approximation", Vietnam Journal of Computer Science, pp.1, 2024.
2.
Ali Akbar Siddique, Syed Muhammad Umar Talha, Muhammad Umar Khan, Amber Israr, Umair Jilani, Vali Uddin, "Efficient Online Lecture Platform: Design and Implementation of Optimized Temporal Masking Technique for Compressed Video Streaming", Wireless Personal Communications, 2023.
3.
Yizhong Yang, Dajin Li, Xiang Li, Zhang Zhang, Guangjun Xie, "A multi-scale inputs and labels model for background subtraction", Signal, Image and Video Processing, 2023.
4.
Jing Wang, Baiqing Liu, "Analyzing the feature extraction of football player’s offense action using machine vision, big data, and internet of things", Soft Computing, 2023.
5.
H. Y. Swathi, G. Shivakumar, "Audio-visual multi-modality driven hybrid feature learning model for crowd analysis and classification", Mathematical Biosciences and Engineering, vol.20, no.7, pp.12529, 2023.
6.
Rafael Padilla, Allan F. da Silva, Eduardo A.B. da Silva, Sergio L. Netto, "Change detection in moving-camera videos with limited samples using twin-CNN features and learnable morphological operations", Signal Processing: Image Communication, pp.116969, 2023.
7.
Fatma Gouizi, Ahmed Chaouki Megherbi, "Nested-Net: a deep nested network for background subtraction", International Journal of Multimedia Information Retrieval, vol.12, no.1, 2023.
8.
Yuan Jiang, Xiaohong Su, Christoph Treude, Chao Shang, Tiantian Wang, "Does Deep Learning improve the performance of duplicate bug report detection? An empirical study", Journal of Systems and Software, pp.111607, 2023.
9.
Olga Ilina, Vadim Ziyadinov, Nikolay Klenov, Maxim Tereshonok, "A Survey on Symmetrical Neural Network Architectures and Applications", Symmetry, vol.14, no.7, pp.1391, 2022.
10.
Ji-Yu Tian, Zu-Min Wang, Hui Fang, Li-Ming Chen, Jing Qin, Jie Chen, Zhi-He Wang, "Few-Shot Learning-Based Network Intrusion Detection through an Enhanced Parallelized Triplet Network", Security and Communication Networks, vol.2022, pp.1, 2022.
11.
Shuying Zhang, Jing Zhang, Yizhou Wang, Li Zhuo, "Short video fingerprint extraction: from audio?visual fingerprint fusion to multi-index hashing", Multimedia Systems, 2022.
12.
Rudrika Kalsotra, Sakshi Arora, "Background subtraction for moving object detection: explorations of recent developments and challenges", The Visual Computer, vol.38, no.12, pp.4151, 2022.
13.
Jeyabharathi Duraipandy, Kesavaraja D., Sasireka Duraipandy, "Automatic Animal Detection and Collision Avoidance System (ADCAS) Using Thermal Camera", Handbook of Research on Machine Learning Techniques for Pattern Recognition and Information Security, pp.75, 2021.
14.
Silvio Ricardo Rodrigues Sanches, Antonio Carlos Sementille, Ivan Abdo Aguilar, Valdinei Freire, "Recommendations for evaluating the performance of background subtraction algorithms for surveillance systems", Multimedia Tools and Applications, vol.80, no.3, pp.4421, 2021.
15.
Synh Viet-Uyen Ha, Nhat Minh Chung, Hung Ngoc Phan, Cuong Tien Nguyen, "TensorMoG: A Tensor-Driven Gaussian Mixture Model with Dynamic Scene Adaptation for Background Modelling", Sensors, vol.20, no.23, pp.6973, 2020.
16.
Wenzhong Shi, Min Zhang, Rui Zhang, Shanxiong Chen, Zhao Zhan, "Change Detection Based on Artificial Intelligence: State-of-the-Art and Challenges", Remote Sensing, vol.12, no.10, pp.1688, 2020.
17.
Mahmoud Ahmadi, Wael Ouarda, Adel M. Alimi, "Efficient and Fast Objects Detection Technique for Intelligent Video Surveillance Using Transfer Learning and Fine-Tuning", Arabian Journal for Science and Engineering, vol.45, no.3, pp.1421, 2020.
18.
Kimin Yun, Yongjin Kwon, Sungchan Oh, Jinyoung Moon, Jongyoul Park, "Vision?based garbage dumping action detection for real?world surveillance platform", ETRI Journal, vol.41, no.4, pp.494, 2019.
19.
Sujoy Madhab Roy, Ashish Ghosh, "Real-time record sensitive background classifier (RSBC)", Expert Systems with Applications, vol.119, pp.104, 2019.
20.
Yijun Yan, Huimin Zhao, Fu-Jen Kao, Valentin Masero Vargas, Sophia Zhao, Jinchang Ren, "Deep Background Subtraction of Thermal and Visible Imagery for Pedestrian Detection in Videos", Advances in Brain Inspired Cognitive Systems, vol.10989, pp.75, 2018.
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