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IdleSR: Efficient Super-Resolution Network with Multi-scale IdleBlocks

机译:IDLESR:高效的超分辨率网络,具有多级IdleBlocks

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In recent years, deep learning approaches have achieved impressive results in single image super-resolution (SISR). However, most of these models require high computational and memory resources beyond the capability of most mobile and embedded devices. How to significantly reduce the number of operations and parameters while maintaining the performance is a meaningful and challenging problem. To address this problem, we propose an efficient super-resolution network with multi-scale IdleBlocks called IdleSR. Firstly, inspired by information multi-distillation blocks and hybrid composition of IdleBlocks, we construct efficient multi-scale IdleBlocks at the granularity of residual block. Secondly, we replace two 3×3 kernels in residual blocks by a 5 × 1 kernel and a 1 × 5 kernel, decreasing parameters and operations dramatically. Thirdly, we use gradient scaling, large input patch size and extra data during training phase to compensate dropped performance. The experiments show that IdleSR can achieve a much better tradeoff among parameter, runtime and performance than start-of-the-art methods.
机译:近年来,深入学习方法已经实现了单一图像超分辨率(SISR)的令人印象深刻的结果。然而,这些模型中的大多数需要高计算和内存资源,超出大多数移动设备和嵌入式设备的能力。如何显着减少操作数量和参数的数量,同时保持性能是一个有意义和具有挑战性的问题。为了解决这个问题,我们提出了一个有效的超分辨率网络,其中包含了一个名为iDLESR的多级IdleBlocks。首先,通过信息的信息多蒸馏块和挡风机组的混合组成,我们构建了在剩余块的粒度下的有效的多尺度idleblocks。其次,我们通过5×1内核和1×5内核在剩余块中替换两个3×3内核,显着降低参数和操作。第三,我们在训练阶段使用梯度缩放,大输入补丁大小和额外数据来补偿掉落的性能。实验表明,IDLESR可以在参数,运行时和性能之间实现更好的权衡而不是最初的方法。

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