Probabilistic Programming Languages for Modeling Autonomous Systems

Seyed Mahdi Shamsi, Gian Pietro Farina, Marco Gaboardi, N. Napp
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引用次数: 3

Abstract

We present a robotic development framework called ROSPPL, which can accomplish many of the essential probabilistic tasks that comprise modern autonomous systems and is based on a general purpose probabilistic programming language (PPL). Benefiting from ROS integration, a short PPL program in our framework is capable of controlling a robotic system, estimating its current state online, as well as automatically calibrating parameters and detecting errors, simply through probabilistic model and policy specification. The advantage of our approach lies in its generality which makes it useful for quickly designing and prototyping of new robots. By directly modeling the interconnection of random variables, decoupled from the inference engine, our design benefits from robustness, re-usability, upgradability, and ease of specification. In this paper, we use a SDV as an example of a complex autonomous system, to show how different sub-components of such system could be implemented using a probabilistic programming language, in a way that the system is capable of reasoning about itself. Our set of use-cases include localization, mapping, fault detection, calibration, and planning.
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自治系统建模的概率编程语言
我们提出了一个名为ROSPPL的机器人开发框架,它可以完成许多组成现代自治系统的基本概率任务,并基于通用概率编程语言(PPL)。得益于ROS集成,我们的框架中的一个简短的PPL程序能够控制机器人系统,在线估计其当前状态,以及通过概率模型和策略规范自动校准参数和检测错误。我们的方法的优点在于它的通用性,这使得它有助于快速设计和原型的新机器人。通过直接对随机变量的互连建模,与推理引擎解耦,我们的设计从鲁棒性、可重用性、可升级性和易于规范中获益。在本文中,我们使用SDV作为一个复杂自治系统的例子,以展示如何使用概率编程语言实现这种系统的不同子组件,以一种系统能够对自身进行推理的方式。我们的用例集包括定位、映射、故障检测、校准和规划。
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