Recurrent 3D attentional networks for end-to-end active object recognition
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Active vision is inherently attention-driven: an agent actively selects views to attend in order to rapidly perform a vision task while improving its internal representation of the scene being observed. Inspired by the recent success of attention-based models in 2D vision tasks based on single RGB images, we address multi-view depth-based active object recognition using an attention mechanism, by use of an end-to-end recurrent 3D attentional network. The architecture takes advantage of a recurrent neural network to store and update an internal representation. Our model, trained with 3D shape datasets, is able to iteratively attend the best views targeting an object of interest for recognizing it. To realize 3D view selection, we derive a 3D spatial transformer network. It is differentiable, allowing training with backpropagation, and so achieving much faster convergence than the reinforcement learning employed by most existing attention-based models. Experiments show that our method, with only depth input, achieves state-of-the-art next-best-view performance both in terms of time taken and recognition accuracy.
Keywordsactive object recognition recurrent neural network next-best-view 3D attention
We thank the anonymous reviewers for their valuable comments. This work was supported, in part, by National Natural Science Foundation of China (Nos. 61572507, 61622212, and 61532003). Min Liu is supported by the China Scholarship Council.
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