Automatic Configuration of the Structure and Parameterization of Perception Pipelines

Vincent Dietrich, Bernd Kast, Michael Fiegert, Sebastian Albrecht, M. Beetz
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引用次数: 4

Abstract

The configuration of perception pipelines is a complex procedure that requires substantial amounts of engineering effort and knowledge. A pipeline consists of interconnected individual perception operators and their parameters, which leads to a large configuration space of pipeline structures and parameterizations. This configuration space has to be explored efficiently in order to find a solution that fulfills the specific requirements of the target application. In this paper, we present an approach to perform automatic configuration based on structure templates and sequential model-based optimization. The structure templates allow to reduce the search space and encode prior engineering knowledge. We introduce a structure template based on hypothesis generation, hypothesis refinement, and hypothesis testing to demonstrate the effectiveness of the approach. Experimental evaluation with state-of-the-art operators is performed on data from the T-LESS dataset as well as in a real-world robotic assembly task.
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感知管道结构的自动配置与参数化
感知管道的配置是一个复杂的过程,需要大量的工程努力和知识。管道由相互连接的单个感知算子及其参数组成,这导致管道结构和参数化的配置空间很大。必须有效地探索这个配置空间,以便找到满足目标应用程序特定需求的解决方案。本文提出了一种基于结构模板和序列模型优化的自动配置方法。结构模板允许减少搜索空间和编码先前的工程知识。我们引入了一个基于假设生成、假设细化和假设检验的结构模板来证明该方法的有效性。在T-LESS数据集以及现实世界的机器人装配任务中,使用最先进的操作员进行实验评估。
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