Learning Temporal Distribution and Spatial Correlation Towards Universal Moving Object Segmentation
Guanfang Dong, Chenqiu Zhao, Xichen Pan, Anup Basu

TL;DR
This paper introduces a universal moving object segmentation method combining temporal distribution learning and spatial correlation refinement, demonstrating superior performance across diverse natural scene videos.
Contribution
The paper presents a novel scene-independent approach using DIDL and SBR networks, enhancing generalization and accuracy in moving object segmentation.
Findings
Outperforms state-of-the-art methods on multiple datasets
Effective across diverse and complex natural scenes
Achieves scene-independent segmentation with fixed parameters
Abstract
The goal of moving object segmentation is separating moving objects from stationary backgrounds in videos. One major challenge in this problem is how to develop a universal model for videos from various natural scenes since previous methods are often effective only in specific scenes. In this paper, we propose a method called Learning Temporal Distribution and Spatial Correlation (LTS) that has the potential to be a general solution for universal moving object segmentation. In the proposed approach, the distribution from temporal pixels is first learned by our Defect Iterative Distribution Learning (DIDL) network for a scene-independent segmentation. Notably, the DIDL network incorporates the use of an improved product distribution layer that we have newly derived. Then, the Stochastic Bayesian Refinement (SBR) Network, which learns the spatial correlation, is proposed to improve the…
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Taxonomy
TopicsVideo Surveillance and Tracking Methods · Advanced Image and Video Retrieval Techniques · Data Management and Algorithms
