论文标题
视频信号中移动对象的最大似然速度估计
Maximum Likelihood Speed Estimation of Moving Objects in Video Signals
论文作者
论文摘要
在许多计算机视觉应用中,用于运动分析的视频处理解决方案是从人类活动识别到对象检测的关键任务。特别是,速度估计算法可能与街道监控和环境监视等环境有关。在大多数现实的情况下,对图像平面的框架对象的投影可能会受到主要与透视转换或周期性行为相关的动态变化的影响。因此,高级速度估计技术需要依靠可靠的对象检测算法来处理潜在的几何修饰。所提出的方法由一系列预处理操作组成,旨在减少或忽略影响感兴趣对象的观点效应,然后基于最大可能性(ML)原理的估计阶段,其中估算了前景对象的速度。 ML估计方法实际上代表了可以利用以获得可靠结果的合并统计工具。在一组真实的视频记录上评估了所提出的算法的性能,并将其与块匹配运动估计算法进行了比较。获得的结果表明,所提出的方法表现出良好和稳健的性能。
Video processing solutions for motion analysis are key tasks in many computer vision applications, ranging from human activity recognition to object detection. In particular, speed estimation algorithms may be relevant in contexts such as street monitoring and environment surveillance. In most realistic scenarios, the projection of a framed object of interest onto the image plane is likely to be affected by dynamic changes mainly related to perspectival transformations or periodic behaviours. Therefore, advanced speed estimation techniques need to rely on robust algorithms for object detection that are able to deal with potential geometrical modifications. The proposed method is composed of a sequence of pre-processing operations, that aim to reduce or neglect perspetival effects affecting the objects of interest, followed by the estimation phase based on the Maximum Likelihood (ML) principle, where the speed of the foreground objects is estimated. The ML estimation method represents, indeed, a consolidated statistical tool that may be exploited to obtain reliable results. The performance of the proposed algorithm is evaluated on a set of real video recordings and compared with a block-matching motion estimation algorithm. The obtained results indicate that the proposed method shows good and robust performance.