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Papers/Learning to Learn How to Learn: Self-Adaptive Visual Navig...

Learning to Learn How to Learn: Self-Adaptive Visual Navigation Using Meta-Learning

Mitchell Wortsman, Kiana Ehsani, Mohammad Rastegari, Ali Farhadi, Roozbeh Mottaghi

2018-12-03CVPR 2019 6Meta-LearningVisual NavigationReinforcement LearningMeta Reinforcement Learning
PaperPDFCode(official)Code

Abstract

Learning is an inherently continuous phenomenon. When humans learn a new task there is no explicit distinction between training and inference. As we learn a task, we keep learning about it while performing the task. What we learn and how we learn it varies during different stages of learning. Learning how to learn and adapt is a key property that enables us to generalize effortlessly to new settings. This is in contrast with conventional settings in machine learning where a trained model is frozen during inference. In this paper we study the problem of learning to learn at both training and test time in the context of visual navigation. A fundamental challenge in navigation is generalization to unseen scenes. In this paper we propose a self-adaptive visual navigation method (SAVN) which learns to adapt to new environments without any explicit supervision. Our solution is a meta-reinforcement learning approach where an agent learns a self-supervised interaction loss that encourages effective navigation. Our experiments, performed in the AI2-THOR framework, show major improvements in both success rate and SPL for visual navigation in novel scenes. Our code and data are available at: https://github.com/allenai/savn .

Results

TaskDatasetMetricValueModel
Visual NavigationAI2-THORSPL (All)16.15SAVN
Visual NavigationAI2-THORSPL (L≥5)13.91SAVN
Visual NavigationAI2-THORSuccess Rate (All)40.86SAVN
Visual NavigationAI2-THORSuccess Rate (L≥5)28.7SAVN

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