Dianting Liu, M. Shyu
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引用次数: 15

摘要

在多媒体语义分析和视频检索领域,自动目标检测技术起着重要的作用。没有对对象级特征的分析,很难实现高性能的语义检索。运动目标检测作为目标检测研究的一个分支,近年来也成为一个研究热点并取得了很大的进展。本文提出了一种融合视频序列中时空信息的运动目标检测与检索模型,利用本文提出的积分密度方法(从积分图像的思想出发)以无监督的方式快速识别运动区域。首先,将视频帧上的关键信息定位为高斯差分(DoG)函数结果的最大值和最小值;另一方面,利用同步分割和类参数估计(sppe)框架结果的多样性,得到相邻帧的运动图。运动地图将关键信息位置过滤为暗示存在移动对象的关键运动位置(kml)。除了显示运动区域外,运动地图还显示运动方向,指导所提出的积分密度方法快速准确地定位运动区域。实验结果表明,将全局视觉信息与局部视觉信息相结合,可以提高概念检索的性能。
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Effective Moving Object Detection and Retrieval via Integrating Spatial-Temporal Multimedia Information
In the area of multimedia semantic analysis and video retrieval, automatic object detection techniques play an important role. Without the analysis of the object-level features, it is hard to achieve high performance on semantic retrieval. As a branch of object detection study, moving object detection also becomes a hot research field and gets a great amount of progress recently. This paper proposes a moving object detection and retrieval model that integrates the spatial and temporal information in video sequences and uses the proposed integral density method (adopted from the idea of integral images) to quickly identify the motion regions in an unsupervised way. First, key information locations on video frames are achieved as maxima and minima of the result of Difference of Gaussian (DoG) function. On the other hand, a motion map of adjacent frames is obtained from the diversity of the outcomes from Simultaneous Partition and Class Parameter Estimation (SPCPE) framework. The motion map filters key information locations into key motion locations (KMLs) where the existence of moving objects is implied. Besides showing the motion zones, the motion map also indicates the motion direction which guides the proposed integral density approach to quickly and accurately locate the motion regions. The detection results are not only illustrated visually, but also verified by the promising experimental results which show the concept retrieval performance can be improved by integrating the global and local visual information.
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