Su Zhen, Sun Mang, Jiang He, Ma Xiang, Zhang Rui, Lv Chen, Kou Qiqi, Cheng Deqiang
School of Information and Control Engineering, China University of Mining and Technology, Xuzhou 221116, China.
Key Laboratory of System Control and Information Processing, Ministry of Education, Shanghai 200240, China.
Sensors (Basel). 2024 Sep 24;24(19):6174. doi: 10.3390/s24196174.
To enhance the performance of super-resolution models, neural networks frequently employ module stacking. However, this approach inevitably results in an excessive proliferation of parameter counts and information redundancy, ultimately constraining the deployment of these models on mobile devices. To surmount this limitation, this study introduces the application of Dual-path Large Kernel Learning (DLKL) to the task of image super-resolution. Within the DLKL framework, we harness a multiscale large kernel decomposition technique to efficiently establish long-range dependencies among pixels. This network not only maintains excellent performance but also significantly mitigates the parameter burden, achieving an optimal balance between network performance and efficiency. When compared with other prevalent algorithms, DLKL exhibits remarkable proficiency in generating images with sharper textures and structures that are more akin to natural ones. It is particularly noteworthy that on the challenging texture dataset Urban100, the network proposed in this study achieved a significant improvement in Peak Signal-to-Noise Ratio (PSNR) for the ×4 upscaling task, with an increase of 0.32 dB and 0.19 dB compared with the state-of-the-art HAFRN and MICU networks, respectively. This remarkable result not only validates the effectiveness of the present model in complex image super-resolution tasks but also highlights its superior performance and unique advantages in the field.
为了提高超分辨率模型的性能,神经网络经常采用模块堆叠。然而,这种方法不可避免地导致参数数量过度增加和信息冗余,最终限制了这些模型在移动设备上的部署。为了克服这一限制,本研究将双路径大内核学习(DLKL)应用于图像超分辨率任务。在DLKL框架内,我们利用多尺度大内核分解技术有效地建立像素之间的长距离依赖关系。该网络不仅保持了优异的性能,还显著减轻了参数负担,在网络性能和效率之间实现了最佳平衡。与其他流行算法相比,DLKL在生成纹理和结构更清晰、更接近自然图像方面表现出卓越的能力。特别值得注意的是,在具有挑战性的纹理数据集Urban100上,本研究提出的网络在×4放大任务的峰值信噪比(PSNR)方面取得了显著提高,分别比最先进的HAFRN和MICU网络提高了0.32 dB和0.19 dB。这一显著结果不仅验证了本模型在复杂图像超分辨率任务中的有效性,还突出了其在该领域的卓越性能和独特优势。