Multiple object tracking using an automatic variable-dimension particle filter

J. Arróspide, L. Salgado, M. Nieto
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引用次数: 6

Abstract

Object tracking through particle filtering has been widely addressed in recent years. However, most works assume a constant number of objects or utilize an external detector that monitors the entry or exit of objects in the scene. In this work, a novel tracking method based on particle filtering that is able to automatically track a variable number of objects is presented. As opposed to classical prior data assignment approaches, adaptation of tracks to the measurements is managed globally. Additionally, the designed particle filter is able to generate hypotheses on the presence of new objects in the scene, and to confirm or dismiss them by gradually adapting to the global observation. The method is especially suited for environments where traditional object detectors render noisy measurements and frequent artifacts, such as that given by a camera mounted on a vehicle, where it is proven to yield excellent results.
使用自动变维粒子滤波的多目标跟踪
近年来,粒子滤波的目标跟踪问题得到了广泛的研究。然而,大多数作品都假设物体的数量是恒定的,或者利用一个外部探测器来监控场景中物体的进出。本文提出了一种新的基于粒子滤波的跟踪方法,该方法能够自动跟踪可变数量的目标。与经典的先验数据分配方法相反,轨道对测量的适应是全局管理的。此外,所设计的粒子滤波器能够对场景中新物体的存在产生假设,并通过逐渐适应全局观察来确认或排除这些假设。该方法特别适用于传统目标探测器产生噪声测量和频繁人工制品的环境,例如安装在车辆上的相机,在这种环境中,它被证明可以产生出色的结果。
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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