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Bi-Real Net: Binarizing Deep Network Towards Real-Network Performance

机译:Bi-Real Net:二值化深网络朝着实际网络性能

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In this paper, we study 1-bit convolutional neural networks (CNNs), of which both the weights and activations are binary. While being efficient, the lacking of a representational capability and the training difficulty impede 1-bit CNNs from performing as well as real-valued networks. To this end, we propose Bi-Real net with a novel training algorithm to tackle these two challenges. To enhance the representational capability, we propagate the real-valued activations generated by each 1-bit convolution via a parameter-free shortcut. To address the training difficulty, we propose a training algorithm using a tighter approximation to the derivative of the sign function, a magnitude-aware binarization for weight updating, a better initialization method, and a two-step scheme for training a deep network. Experiments on ImageNet show that an 18-layer Bi-Real net with the proposed training algorithm achieves 56.4% top-1 classification accuracy, which is 10% higher than the state-of-the-arts (e.g., XNOR-Net), with a greater memory saving and a lower computational cost. Bi-Real net is also the first to scale up 1-bit CNNs to an ultra-deep network with 152 layers, and achieves 64.5% top-1 accuracy on ImageNet. A 50-layer Bi-Real net shows comparable performance to a real-valued network on the depth estimation task with merely a 0.3% accuracy gap.
机译:在本文中,我们研究了1位卷积神经网络(CNNS),其中权重和激活都是二进制的。虽然有效,但缺乏代表能力和训练难度阻碍了来自执行以及实值网络的1位CNN。为此,我们提出了双重实际网络,具有新颖的训练算法来解决这两个挑战。为了提高代表性能力,我们通过无参数快捷方式传播每个1位卷积产生的实际值激活。为了解决训练难度,我们向符号函数的导数提出了一种利用更严格的梯度的训练算法,重量更新的大小意识二值化,更好的初始化方法以及用于训练深网络的两步方案。 ImageNet的实验表明,具有所提出的培训算法的18层双Real网实现56.4%的前1个分类精度,比最先进的(例如,Xnor-net)高10%,更大的内存节省和较低的计算成本。 Bi-Real Net也是第一个向上扩展1位CNN的超深网络,具有152层,在ImageNet上实现64.5%的前1个精度。 50层双Real网显示了对深度估计任务的实际网络上的相当性能,仅具有0.3%的精度差距。

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