Developmental Bayesian Optimization of Black-Box with Visual Similarity-Based Transfer Learning

Maxime Petit, Amaury Depierre, Xiaofang Wang, E. Dellandréa, Liming Chen
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引用次数: 2

Abstract

We present a developmental framework based on a long-term memory and reasoning mechanisms (Vision Similarity and Bayesian Optimisation). This architecture allows a robot to optimize autonomously hyper-parameters that need to be tuned from any action and/or vision module, treated as a black-box. The learning can take advantage of past experiences (stored in the episodic and procedural memories) in order to warm-start the exploration using a set of hyper-parameters previously optimized from objects similar to the new unknown one (stored in a semantic memory). As example, the system has been used to optimized 9 continuous hyper-parameters of a professional software (Kamido) both in simulation and with a real robot (industrial robotic arm Fanuc) with a total of 13 different objects. The robot is able to find a good object-specific optimization in 68 (simulation) or 40 (real) trials. In simulation, we demonstrate the benefit of the transfer learning based on visual similarity, as opposed to an amnesic learning (i.e. learning from scratch all the time). Moreover, with the real robot, we show that the method consistently outperforms the manual optimization from an expert with less than 2 hours of training time to achieve more than 88% of success.
基于视觉相似性迁移学习的黑箱发展贝叶斯优化
我们提出了一个基于长期记忆和推理机制(视觉相似性和贝叶斯优化)的发展框架。这种架构允许机器人自主优化超参数,这些参数需要从任何动作和/或视觉模块中进行调整,被视为黑盒。学习可以利用过去的经验(存储在情景和程序记忆中),以便使用先前从与新未知对象相似的对象(存储在语义记忆中)优化的一组超参数来预热探索。例如,该系统已用于优化专业软件(Kamido)的9个连续超参数,包括仿真和真实机器人(Fanuc工业机械臂),共有13个不同的对象。机器人能够在68次(模拟)或40次(真实)试验中找到一个良好的特定对象优化。在模拟中,我们展示了基于视觉相似性的迁移学习的好处,而不是遗忘学习(即从头开始学习)。此外,对于真实的机器人,我们表明该方法始终优于专家在不到2小时的训练时间内进行的手动优化,成功率超过88%。
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