Object Detection in Tensor Decomposition Based Multi Target Tracking

F. Govaers
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引用次数: 0

Abstract

Non-linear filtering arises in many sensor applications such as for instance robotics, military reconnaissance, advanced driver assistance systems and other safety and security data processing algorithms. Since a closed-form of the Bayesian estimation approach is intractable in general, approximative methods have to be applied. Kalman or particle based approaches have the drawback of either a Gaussian approximation or a curse of dimensionality which both leads to a reduction in the performance in challenging scenarios. An approach to overcome this situation is state estimation using decomposed tensors. In this paper the Sequential Likelihood Ratio Test (SLRT) for object detection in tensor decomposition based target tracking is presented. The scheme closely follows the well-known and often applied approach of the track-oriented MHT.
基于张量分解的多目标跟踪中的目标检测
非线性滤波出现在许多传感器应用中,例如机器人,军事侦察,高级驾驶辅助系统和其他安全和安全数据处理算法。由于贝叶斯估计方法的封闭形式通常是难以处理的,因此必须应用近似方法。卡尔曼或基于粒子的方法有一个缺点,要么是高斯近似,要么是维数诅咒,这两者都会导致在具有挑战性的场景下性能下降。克服这种情况的一种方法是使用分解张量进行状态估计。本文提出了基于张量分解的目标跟踪中目标检测的序列似然比检验方法。该方案密切遵循众所周知且经常应用的面向轨道的MHT方法。
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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