Rasool M J Aashik, Ahmed Shabir, Sharif S M A, Sevara Mardieva, Whangbo Taeg Keun
Department of IT Convergence Engineering, Gachon University, Sujeong-Gu, Seongnam-si 461-701, Gyeonggi-do, Republic of Korea.
Opt-AI Inc., LG Sciencepark, Seoul 07520, Republic of Korea.
Sensors (Basel). 2025 Apr 2;25(7):2242. doi: 10.3390/s25072242.
Single-image super-resolution imaging methods are increasingly being employed owing to their immense applicability in numerous domains, such as medical imaging, display manufacturing, and digital zooming. Despite their widespread usability, the existing learning-based super-resolution (SR) methods are computationally expensive and inefficient for resource-constrained IoT devices. In this study, we propose a lightweight model based on a multi-agent reinforcement-learning approach that employs multiple agents at the pixel level to construct super-resolution images by following the asynchronous actor-critic policy. The agents iteratively select a predefined set of actions to be executed within five time steps based on the new image state, followed by the action that maximizes the cumulative reward. We thoroughly evaluate and compare our proposed method with existing super-resolution methods. Experimental results illustrate that the proposed method can outperform the existing models in both qualitative and quantitative scores despite having significantly less computational complexity. The practicability of the proposed method is confirmed further by evaluating it on numerous IoT platforms, including edge devices.
由于单图像超分辨率成像方法在医学成像、显示器制造和数字变焦等众多领域具有巨大的适用性,因此越来越受到人们的青睐。尽管其具有广泛的可用性,但现有的基于学习的超分辨率(SR)方法计算成本高昂,对于资源受限的物联网设备效率低下。在本研究中,我们提出了一种基于多智能体强化学习方法的轻量级模型,该模型在像素级别采用多个智能体,通过遵循异步行为者-评论家策略来构建超分辨率图像。智能体根据新的图像状态,在五个时间步长内迭代选择一组预定义的动作来执行,然后选择使累积奖励最大化的动作。我们对提出的方法与现有的超分辨率方法进行了全面评估和比较。实验结果表明,尽管所提出的方法计算复杂度显著降低,但在定性和定量评分方面均优于现有模型。通过在包括边缘设备在内的众多物联网平台上对其进行评估,进一步证实了所提出方法的实用性。