Actionable saliency detection: Independent motion detection without independent motion estimation

Georgios Georgiadis, Alper Ayvaci, Stefano Soatto
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引用次数: 11

Abstract

We present a model and an algorithm to detect salient regions in video taken from a moving camera. In particular, we are interested in capturing small objects that move independently in the scene, such as vehicles and people as seen from aerial or ground vehicles. Many of the scenarios of interest challenge existing schemes based on background subtraction (background motion too complex), multi-body motion estimation (insufficient parallax), and occlusion detection (uniformly textured background regions). We adopt a robust statistical inference approach to simultaneously estimate a maximally reduced regressor, and select regions that violate the null hypothesis (co-visibility under an epipolar domain deformation) as “salient”. We show that our algorithm can perform even in the absence of camera calibration information: while the resulting motion estimates would be incorrect, the partition of the domain into salient vs. non-salient is unaffected. We demonstrate our algorithm on video footage from helicopters, airplanes, and ground vehicles.
可操作的显著性检测:独立的运动检测,不需要独立的运动估计
我们提出了一个模型和一种算法来检测从移动摄像机拍摄的视频中的显著区域。我们特别感兴趣的是捕捉场景中独立移动的小物体,比如从空中或地面车辆上看到的车辆和人。许多感兴趣的场景挑战了现有的基于背景减除(背景运动过于复杂)、多体运动估计(视差不足)和遮挡检测(均匀纹理背景区域)的方案。我们采用稳健的统计推断方法来同时估计最大减少的回归量,并选择违反零假设(极域变形下的共可见性)的区域作为“显著”。我们表明,即使在没有相机校准信息的情况下,我们的算法也可以执行:虽然所得到的运动估计是不正确的,但将域划分为显著与非显著是不受影响的。我们在直升机、飞机和地面车辆的视频片段上演示了我们的算法。
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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