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Attention-from-motion: A Factorization Approach For Detecting Attention Objects In Motion

机译:运动中的注意力:一种检测运动中注意对象的分解方法

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This paper introduces the notion of attention-from-motion in which the objective is to identify, from an image sequence, only those object in motions that capture visual attention (VA). Following the important concept in film production, viz, the tracking shot, we define the attention object in motion (AOM) as those that are tracked by the camera. Three components are proposed to form an attention-from-motion framework: (ⅰ) a new factorization form of the measurement matrix to describe dynamic geometry of moving object observed by moving camera; (ⅱ) determination of single AOM based on the analysis of certain structure on the motion matrix; (ⅲ) an iterative framework for detecting multiple AOMs. The proposed analysis of structure from factorization enables the detection of AOMs even when only partial data is available due to occlusion and over-segmentation. Without recovering the motion of either object or camera, the proposed method can detect AOM robustly from any combination of camera motion and object motion and even for degenerate motion.
机译:本文介绍了“运动注意”的概念,其目的是从图像序列中仅识别那些捕获视觉注意(VA)的运动中的对象。遵循电影制作中的重要概念,即跟踪镜头,我们将运动中的注意对象(AOM)定义为由相机跟踪的对象。提出了由运动引起注意的三个组成部分:(ⅰ)测量矩阵的一种新的因式分解形式,用于描述运动摄像机观测到的运动对象的动态几何形状; (ⅱ)基于对运动矩阵的某些结构的分析来确定单个AOM; (ⅲ)用于检测多个AOM的迭代框架。所提出的基于因式分解的结构分析即使在由于遮挡和过度分割而仅可获得部分数据的情况下,也能够检测AOM。在不恢复物体或摄像机运动的情况下,所提出的方法可以从摄像机运动和物体运动的任何组合甚至对于简并运动中可靠地检测AOM。

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