Visual saliency has emerged as a major visualization tool for interpreting deep reinforcement learning (RL) agents. However, much of the existing research uses it as an analyzing tool rather than an inductive bias for policy learning. In this work, we use visual attention as an inductive bias for RL agents. We propose a novel self-supervised attention learning approach which can 1. learn to select regions of interest without explicit annotations, and 2. act as a plug for existing deep RL methods to improve the learning performance. We empirically show that the self-supervised attention-aware deep RL methods outperform the baselines in the context of both the rate of convergence and performance. Furthermore, the proposed self-supervised atte...
In this paper, we aim to enhance self-attention (SA) mechanism for deep metric learning in visual pe...
Abstract: Classification-based reinforcement learning (RL) methods have recently been pro-posed as a...
We propose a method of integrating top-down and bottom-up attention, presenting a robotic implementa...
There has recently been significant interest in training reinforcement learning (RL) agents in visio...
In this paper, we introduce a new approach to Reinforcement Learning (RL) called “supervised attenti...
Reinforcement learning is becoming increasingly popular due to its cumulative feats in mainstream ga...
Deep Reinforcement Learning (RL) is often criticized for being data inefficient and in exible to ch...
Humans demonstrate an incredible capacity to learn novel tasks in complex dynamic environments. Rein...
We propose a framework that uses learned human visual attention model to guide the learning process ...
The multidimensional nature of our environment raises a fundamental question in the study of learnin...
In vision-based reinforcement learning (RL) tasks, it is prevalent to assign auxiliary tasks with a ...
The emergence of deep learning has transformed the way researchers approach complex machine percepti...
International audienceDeep reinforcement learning policies, despite their outstanding efficiency in ...
Abstract. The innovation of this work is the provision of a system that learns visual encodings of a...
Recently, deep reinforcement learning (RL) has been a hot topic due to its high capability in solvin...
In this paper, we aim to enhance self-attention (SA) mechanism for deep metric learning in visual pe...
Abstract: Classification-based reinforcement learning (RL) methods have recently been pro-posed as a...
We propose a method of integrating top-down and bottom-up attention, presenting a robotic implementa...
There has recently been significant interest in training reinforcement learning (RL) agents in visio...
In this paper, we introduce a new approach to Reinforcement Learning (RL) called “supervised attenti...
Reinforcement learning is becoming increasingly popular due to its cumulative feats in mainstream ga...
Deep Reinforcement Learning (RL) is often criticized for being data inefficient and in exible to ch...
Humans demonstrate an incredible capacity to learn novel tasks in complex dynamic environments. Rein...
We propose a framework that uses learned human visual attention model to guide the learning process ...
The multidimensional nature of our environment raises a fundamental question in the study of learnin...
In vision-based reinforcement learning (RL) tasks, it is prevalent to assign auxiliary tasks with a ...
The emergence of deep learning has transformed the way researchers approach complex machine percepti...
International audienceDeep reinforcement learning policies, despite their outstanding efficiency in ...
Abstract. The innovation of this work is the provision of a system that learns visual encodings of a...
Recently, deep reinforcement learning (RL) has been a hot topic due to its high capability in solvin...
In this paper, we aim to enhance self-attention (SA) mechanism for deep metric learning in visual pe...
Abstract: Classification-based reinforcement learning (RL) methods have recently been pro-posed as a...
We propose a method of integrating top-down and bottom-up attention, presenting a robotic implementa...