We propose a novel system for action sequence planning based on a combination of affordance recognition and a neural forward model predicting the effects of affordance execution. By performing affordance recognition on predicted futures, we avoid reliance on explicit affordance effect definitions for multi-step planning. Because the system learns affordance effects from experience data, the system can foresee not just the canonical effects of an affordance, but also situation-specific side-effects. This allows the system to avoid planning failures due to such non-canonical effects, and makes it possible to exploit non-canonical effects for realising a given goal. We evaluate the system in simulation, on a set of test tasks that require consideration of canonical and non-canonical affordance effects.
翻译:我们提出一个新的行动序列规划系统,其基础是配给承认和预测配给执行效果的神经前方模型。我们通过对预测的未来进行配给承认,避免依赖对多步规划的明确配给效应定义。由于该系统从经验数据中学会了承载效应,因此该系统不仅可以预见价格承受效应的罐头效应,而且可以预见特定情况的副作用。这使得该系统能够避免由于这种非癌症效应而规划失败,并有可能利用非癌症效应实现某一目标。我们根据一系列需要考虑罐头和非癌症负担效应的测试任务,在模拟中评估系统。