计算机科学
迭代重建
计算机视觉
卷积(计算机科学)
机制(生物学)
人工智能
图像处理
图像分辨率
图像复原
图像(数学)
物理
人工神经网络
量子力学
标识
DOI:10.1117/1.jei.33.6.063024
摘要
Currently, with the development of deep learning techniques and large models, designing efficient network models has become one of the hot topics in research. In the field of image super-resolution reconstruction, although deep convolutional neural networks have made significant progress, the increase in network complexity has led to an increase in computational overhead and excessive consumption of computational resources on high-performance devices (e.g., GPU). To address this issue, a network for image super-resolution reconstruction based on partial convolution (Pconv) and an improved agent attention mechanism is proposed. By reducing redundant computations and memory access, the network can more effectively extract spatial features, significantly reducing computational complexity while maintaining superior performance. Through experiments comparing recent methods on public datasets in terms of performance metrics, the proposed network model demonstrates leading results in objective quantitative measures, promising to provide a more efficient and viable solution for image super-resolution reconstruction tasks.
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