Optical flow-based enhancement of spatio-temporal detection in videos

Rana O. Elnaggar, M. Khalil, H. Abdelmunim, Hazem M. Abbas
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Abstract

Accurate optical flow techniques are widely used in spatio-temporal object detection in videos. However, the computational complexity of the currently used techniques limits the effectiveness of spatio-temporal detection in applications such as action detection and event recognition. Therefore, in this paper we aim at employing rapid yet accurate optical flow techniques to promote the effectiveness of the detection system. The proposed design uses novel optical flow estimation techniques that are based on learned flow basis, known as PCA-Flow and PCA-Layers. PCA-Flow estimates dense flow from a linear flow model based on principle components of natural flow. PCA-Layers is an extension of PCA-Flow. PCA-Layers technique uses Markov random field (MRF) to combine several motion layers into dense optical flow. The motion in each layer is estimated by PCA-Flow. Our experimental results show that our approach maintains the overall performance of the baseline framework while 64% reduction in the computation time is achieved.
基于光流的视频时空检测增强
精确光流技术广泛应用于视频中的时空目标检测。然而,目前使用的技术的计算复杂性限制了时空检测在动作检测和事件识别等应用中的有效性。因此,本文旨在采用快速准确的光流技术来提高检测系统的有效性。提出的设计使用基于学习流基础的新型光流估计技术,称为PCA-Flow和PCA-Layers。PCA-Flow从基于自然流的主要成分的线性流模型中估计密集流。PCA-Layers是PCA-Flow的扩展。PCA-Layers技术利用马尔可夫随机场(MRF)将多个运动层组合成密集的光流。每一层的运动用PCA-Flow估计。我们的实验结果表明,我们的方法保持了基准框架的整体性能,同时减少了64%的计算时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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