用视觉径向基函数网络和近端策略优化解决部分可观测的三维视觉任务

IF 4 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Machine learning and knowledge extraction Pub Date : 2023-12-01 DOI:10.3390/make5040091
Julien Hautot, Céline Teulière, Nourddine Azzaoui
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引用次数: 0

摘要

近几十年来,视觉强化学习(RL)得到了广泛的研究。现有的方法通常由多个网络组成,需要大量的计算能力来解决来自高维数据(如图像)的部分可观察任务。使用状态表示学习(SRL)已经被证明可以通过将高维数据简化为紧凑的表示来提高视觉强化学习的性能,但仍然经常依赖于深度网络和环境。相比之下,我们提出了一种更轻、更通用的方法,可以在未经训练的情况下从原始图像中提取稀疏和局部特征。我们使用视觉径向基函数网络(VRBFN)来实现这一目标,该网络具有显著的实用优势,包括由于其两个线性层而具有最小复杂性的高效和准确的训练。对于现实世界的应用,它的可扩展性和抗噪声的弹性是必不可少的,因为真实的传感器会受到变化和噪声的影响。与cnn不同,cnn可能需要大量的再训练,这个网络可能只需要轻微的微调。我们使用近端策略优化(PPO)来测试VRBFN表示解决不同RL任务的效率。我们在五种不同的第一人称部分可观察场景下,对我们的提取方法与五种经典视觉RL和SRL方法进行了大规模的研究和比较。我们表明,这种方法呈现出诸如稀疏性和对噪声的鲁棒性等吸引人的特征,并且在五个提议的场景中的四个场景中,训练强化学习代理时获得的结果优于其他测试方法。
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Solving Partially Observable 3D-Visual Tasks with Visual Radial Basis Function Network and Proximal Policy Optimization
Visual Reinforcement Learning (RL) has been largely investigated in recent decades. Existing approaches are often composed of multiple networks requiring massive computational power to solve partially observable tasks from high-dimensional data such as images. Using State Representation Learning (SRL) has been shown to improve the performance of visual RL by reducing the high-dimensional data into compact representation, but still often relies on deep networks and on the environment. In contrast, we propose a lighter, more generic method to extract sparse and localized features from raw images without training. We achieve this using a Visual Radial Basis Function Network (VRBFN), which offers significant practical advantages, including efficient and accurate training with minimal complexity due to its two linear layers. For real-world applications, its scalability and resilience to noise are essential, as real sensors are subject to change and noise. Unlike CNNs, which may require extensive retraining, this network might only need minor fine-tuning. We test the efficiency of the VRBFN representation to solve different RL tasks using Proximal Policy Optimization (PPO). We present a large study and comparison of our extraction methods with five classical visual RL and SRL approaches on five different first-person partially observable scenarios. We show that this approach presents appealing features such as sparsity and robustness to noise and that the obtained results when training RL agents are better than other tested methods on four of the five proposed scenarios.
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CiteScore
6.30
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0.00%
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审稿时长
7 weeks
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