In object tracking and state estimation problems, ambiguous evidence such as imprecise measurements and the absence of detections can contain valuable information and thus be leveraged to further refine the probabilistic belief state. In particular, knowledge of a sensor's bounded field-of-view can be exploited to incorporate evidence of where an object was not observed. This paper presents a systematic approach for incorporating knowledge of the field-of-view geometry and position and object inclusion/exclusion evidence into object state densities and random finite set multi-object cardinality distributions. The resulting state estimation problem is nonlinear and solved using a new Gaussian mixture approximation based on recursive component splitting. Based on this approximation, a novel Gaussian mixture Bernoulli filter for imprecise measurements is derived and demonstrated in a tracking problem using only natural language statements as inputs. This paper also considers the relationship between bounded fields-of-view and cardinality distributions for a representative selection of multi-object distributions, which can be used for sensor planning, as is demonstrated through a problem involving a multi-Bernoulli process with up to one-hundred potential objects.
翻译:在物体跟踪和状态估计问题中,不精确测量和没有检测等模糊证据可以包含宝贵的信息,从而可以用来进一步完善概率判断状态。特别是,可以利用对传感器封闭视野的了解,纳入未观测物体的现场证据。本文件提出一种系统的方法,将观察现场的几何和位置知识以及物体包容/排除证据纳入物体的密度和随机有限多物体集聚分布中。由此产生的国家估计问题是非线性,通过基于递归组成部分分离的新的高斯混合近似法来解决。基于这一近似法,在跟踪问题时,可以产生并展示关于不精确测量的新型高斯混合物伯努利混合物过滤法,仅使用自然语言说明作为投入。本文还考虑了为具有代表性地选择多物体分布而有代表性的观察领域和主要分布法之间的关系,这可以通过涉及多贝努利进程、多达100个潜在物体的问题来证明。