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首页> 外文期刊>IEEE Transactions on Image Processing >Receptive Field Size Versus Model Depth for Single Image Super-Resolution
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Receptive Field Size Versus Model Depth for Single Image Super-Resolution

机译:接受场大小与单图像超分辨率的模型深度

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The performance of single image super-resolution (SISR) has been largely improved by innovative designs of deep architectures. An important claim raised by these designs is that the deep models have large receptive field size and strong nonlinearity. However, we are concerned about the question that which factor, receptive field size or model depth, is more critical for SISR. Towards revealing the answers, in this paper, we propose a strategy based on dilated convolution to investigate how the two factors affect the performance of SISR. Our findings from exhaustive investigations suggest that SISR is more sensitive to the changes of receptive field size than to the model depth variations, and that the model depth must be congruent with the receptive field size to produce improved performance. These findings inspire us to design a shallower architecture which can save computational and memory cost while preserving comparable effectiveness with respect to a much deeper architecture.
机译:通过深度架构的创新设计,单幅图像超分辨率(SISR)的性能已经很大程度上得到了改善。这些设计提出的一个重要索赔是深层模型具有大的接受场大小和强烈的非线性。但是,我们担心对SISR更为关键的因素,接受场大小或模型深度的问题。在揭示答案中,在本文中,我们提出了一种基于扩张卷积的战略,以研究两个因素如何影响SISR的表现。我们从详尽的调查中的调查结果表明,SISR对接受场大小的变化比模型深度变化更敏感,并且模型深度必须与接受场大小一致,以产生改进的性能。这些发现激发了我们设计较浅的架构,可以节省资金和内存成本,同时保持关于更深层次的架构的可比效果。

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