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Video Background Subtraction

Video background subtraction is a computer vision technique used to separate moving objects (foreground) from the static scene (background) in video feeds, essential for applications like surveillance, motion detection, and object tracking. It involves creating a background model, comparing each new frame to this model, and applying thresholding to identify changes as foreground objects. Methods range from simple frame differencing and running averages to advanced techniques like Gaussian Mixture Models (GMM) and deep learning for handling dynamic scenes. Challenges include dealing with illumination changes, shadows, dynamic backgrounds, and noise. Post-processing is often used to refine results and reduce false positives.

Papers

Showing 110 of 17 papers

TitleStatusHype
Autoencoder-based background reconstruction and foreground segmentation with background noise estimationCode1
A Deep Moving-camera Background ModelCode1
Target Tracking In Real Time Surveillance Cameras and Videos0
CDN-MEDAL: Two-stage Density and Difference Approximation Framework for Motion Analysis0
Fully-Connected Tensor Network Decomposition for Robust Tensor Completion Problem0
Hybrid Subspace Learning for High-Dimensional Data0
Illumination-Aware Multi-Task GANs for Foreground Segmentation0
Learning Spatial-Temporal Regularized Tensor Sparse RPCA for Background Subtraction0
Deeply Learned Robust Matrix Completion for Large-scale Low-rank Data Recovery0
Deep Neural Network Concepts for Background Subtraction: A Systematic Review and Comparative Evaluation0
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