People tracking using robust motion detection and estimation

Markus Latzel, Emilie Darcourt, John K. Tsotsos
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引用次数: 5

Abstract

Real world computer vision systems highly depend on reliable, robust retrieval of motion cues to make accurate decisions about their surroundings. In this paper, we present a simple, yet high performance low-level filter for motion tracking in digitized video signals. The algorithm is based on constant characteristics of a common, 2-frame interlaced video signal, yet results presented in this paper show its applicability to highly compressed, noisy image sequences as well. In general, our approach uses a computationally low-cost solution to define the area of interest for tracking of multiple, moving objects. Despite its simplicity, it compares very well to existing approaches due to its robustness towards environmental changes. To demonstrate this, we present results of processing a sequence of JPEG-compressed monocular images of a parking lot in order to track pedestrians, cars and bicycles. Despite a high level of noise and changing lighting conditions, the algorithm successfully segments a moving object and tracks its position along a trajectory.
人跟踪采用鲁棒运动检测和估计
现实世界的计算机视觉系统高度依赖于可靠、健壮的运动线索检索,以对周围环境做出准确的决策。在本文中,我们提出了一个简单的,但高性能的低电平滤波器的运动跟踪在数字化视频信号。该算法基于常见的两帧隔行视频信号的恒定特性,但本文的结果表明它也适用于高度压缩的噪声图像序列。一般来说,我们的方法使用计算成本低的解决方案来定义跟踪多个移动对象的兴趣区域。尽管它很简单,但由于它对环境变化的稳健性,它与现有的方法相比非常好。为了证明这一点,我们展示了处理停车场的一系列jpeg压缩单眼图像以跟踪行人,汽车和自行车的结果。尽管存在高水平的噪声和不断变化的照明条件,该算法还是成功地分割了一个移动物体,并沿着轨迹跟踪其位置。
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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