Simulated mental imagery for robotic task planning

Front Neurorobot. 2023 Aug 24:17:1218977. doi: 10.3389/fnbot.2023.1218977. eCollection 2023.

Abstract

Traditional AI-planning methods for task planning in robotics require a symbolically encoded domain description. While powerful in well-defined scenarios, as well as human-interpretable, setting this up requires a substantial effort. Different from this, most everyday planning tasks are solved by humans intuitively, using mental imagery of the different planning steps. Here, we suggest that the same approach can be used for robots too, in cases which require only limited execution accuracy. In the current study, we propose a novel sub-symbolic method called Simulated Mental Imagery for Planning (SiMIP), which consists of perception, simulated action, success checking, and re-planning performed on 'imagined' images. We show that it is possible to implement mental imagery-based planning in an algorithmically sound way by combining regular convolutional neural networks and generative adversarial networks. With this method, the robot acquires the capability to use the initially existing scene to generate action plans without symbolic domain descriptions, while at the same time, plans remain human-interpretable, different from deep reinforcement learning, which is an alternative sub-symbolic approach. We create a data set from real scenes for a packing problem of having to correctly place different objects into different target slots. This way efficiency and success rate of this algorithm could be quantified.

Keywords: artificial neural network; deep learning; human-interpretable; mental imagery; robotic planning.

Grants and funding

The research leading to these results has received funding from the German Science Foundation WO 388/16-1 and the European Commission, H2020-ICT-2018-20/H2020-ICT-2019-2, GA no. 871352, ReconCycle.