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Multimodal Aggregation Approach for Memory Vision-Voice Indoor Navigation with Meta-Learning
Vision and voice are two vital keys for agents' interaction and learning. In this paper, we present a novel indoor navigation model called Memory Vision-Voice Indoor Navigation (MVV-IN), which receives voice commands and analyzes multimodal information of visual observation in order to enhance...
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Published in: | arXiv.org 2020-09 |
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creator | Yan, Liqi Liu, Dongfang Song, Yaoxian Yu, Changbin |
description | Vision and voice are two vital keys for agents' interaction and learning. In this paper, we present a novel indoor navigation model called Memory Vision-Voice Indoor Navigation (MVV-IN), which receives voice commands and analyzes multimodal information of visual observation in order to enhance robots' environment understanding. We make use of single RGB images taken by a first-view monocular camera. We also apply a self-attention mechanism to keep the agent focusing on key areas. Memory is important for the agent to avoid repeating certain tasks unnecessarily and in order for it to adapt adequately to new scenes, therefore, we make use of meta-learning. We have experimented with various functional features extracted from visual observation. Comparative experiments prove that our methods outperform state-of-the-art baselines. |
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subjects | Color imagery Feature extraction Image enhancement Indoor navigation Learning Vision Visual observation Voice |
title | Multimodal Aggregation Approach for Memory Vision-Voice Indoor Navigation with Meta-Learning |
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