CVDCFeb 16, 2017

An Analysis of Parallelized Motion Masking Using Dual-Mode Single Gaussian Models

arXiv:1702.05156v11 citationsHas Code
Originality Synthesis-oriented
AI Analysis

This work addresses motion detection for video surveillance and robotics, but it is incremental as it applies an existing method with parallelization.

The paper tackled motion detection in video by implementing and parallelizing a Dual-Mode Single Gaussian Model method using Intel TBB and NVIDIA CUDA, resulting in a theoretical analysis of speedup improvements.

Motion detection in video is important for a number of applications and fields. In video surveillance, motion detection is an essential accompaniment to activity recognition for early warning systems. Robotics also has much to gain from motion detection and segmentation, particularly in high speed motion tracking for tactile systems. There are a myriad of techniques for detecting and masking motion in an image. Successful systems have used Gaussian Models to discern background from foreground in an image (motion from static imagery). However, particularly in the case of a moving camera or frame of reference, it is necessary to compensate for the motion of the camera when attempting to discern objects moving in the foreground. For example, it is possible to estimate motion of the camera through optical flow methods or temporal differencing and then compensate for this motion in a background subtraction model. We selection a method by Yi et al. using Dual-Mode Single Gaussian Models which does just this. We implement the technique in Intel's Thread Building Blocks (TBB) and NVIDIA's CUDA libraries. We then compare parallelization improvements with a theoretical analysis of speedups based on the characteristics of our selected model and attributes of both TBB and CUDA. We make our implementation available to the public.

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