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Binarized Neural Network for Single Image Super Resolution

机译:单图像超分辨率二金条化神经网络

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Lighter model and faster inference are the focus of current single image super-resolution (SISR) research. However, existing methods are still hard to be applied in real-world applications due to the heavy computation requirement. Model quantization is an effective way to significantly reduce model size and computation time. In this work, we investigate the binary neural network-based SISR problem and propose a novel model binarization method. Specially, we design a bit-accumulation mechanism (BAM) to approximate the full-precision convolution with a value accumulation scheme, which can gradually refine the precision of quantization along the direction of model inference. In addition, we further construct an efficient model structure based on the BAM for lower computational complexity and parameters. Extensive experiments show the proposed model outperforms the state-of-the-art binarization methods by large margins on 4 benchmark datasets, specially by average more than 0.7 dB in terms of Peak Signal-to-Noise Ratio on Set5 dataset.
机译:更轻的模型和更快的推理是当前单图像超分辨率(SISR)研究的重点。然而,由于沉重的计算要求,现有方法仍然很难应用于现实世界应用中。模型量化是显着降低模型大小和计算时间的有效方法。在这项工作中,我们调查了基于二元神经网络的SISR问题并提出了一种新型模型二值化方法。特别地,我们设计了一个位累积机制(BAM),以近似具有值累积方案的全精度卷积,这可以逐渐细化沿着模型推断方向的量化精度。另外,我们进一步构建基于BAM的有效模型结构,以降低计算复杂性和参数。广泛的实验表明,在Set5数据集上的峰值信噪比方面,所提出的模型在4个基准数据集中的大型边距,特别是平均大于0.7 dB的最新的二值化方法。

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