Abstract

Moving object segmentation is the most fundamental task for many vision-based applications. In the past decade, it has been performed on the stationary camera, or moving camera, respectively. In this paper, we show that the moving object segmentation can be addressed in a unified framework for both type of cameras. The proposed method consists of two stages: (1) In the first stage, a novel multi-frame homography model is generated to describe the background motion. Then, the inliers and outliers of that model are classified as background trajectories and moving object trajectories by the designed cumulative acknowledgment strategy. (2) In the second stage, a super-pixel-based Markov Random Fields model is used to refine the spatial accuracy of initial segmentation and obtain final pixel level labeling, which has integrated trajectory classification information, a dynamic appearance model, and spatial temporal cues. The proposed method overcomes the limitations of existing object segmentation algorithms and resolves the difference between stationary and moving cameras. The algorithm is tested on several challenging open datasets. Experiments show that the proposed method presents significant performance improvement over state-of-the-art techniques quantitatively and qualitatively.

Highlights

  • Unsupervised moving object segmentation is a challenging problem for many applications, such as video semantic analysis, intelligent transportation system, automated video surveillance [1], and so on

  • We introduce a unified framework for automatic video object segmentation from moving camera or stationary camera by: (1) constructing a multi-frame homography model that relates adjacent frames in the whole video; (2) designing a trajectory classification method based on cumulative acknowledgment strategy; (3) incorporating trajectory classification, dynamic appearance, spatial temporal cues for the final labeling

  • We present a novel and modular object segmentation algorithm for both, a stationary camera and a moving camera

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Summary

Introduction

Unsupervised moving object segmentation is a challenging problem for many applications, such as video semantic analysis, intelligent transportation system, automated video surveillance [1], and so on. The algorithm should segment the foreground moving objects from complex videos automatically, where cluttered backgrounds [2,3], scale diversification, and motion blurs exist. Various unsupervised algorithms have been proposed to deal with the videos captured by the stationary camera, where the camera does not move and the scene in the video does not change. The videos used for sematic analysis are almost captured by the handheld cameras. In such cases, the background subtraction methods used in the stationary background circumvent cannot be applied

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