Francesco Bagattini

1paper

1 Paper

LGDec 23, 2021
A Robust Initialization of Residual Blocks for Effective ResNet Training without Batch Normalization

Enrico Civitelli, Alessio Sortino, Matteo Lapucci et al.

Batch Normalization is an essential component of all state-of-the-art neural networks architectures. However, since it introduces many practical issues, much recent research has been devoted to designing normalization-free architectures. In this paper, we show that weights initialization is key to train ResNet-like normalization-free networks. In particular, we propose a slight modification to the summation operation of a block output to the skip-connection branch, so that the whole network is correctly initialized. We show that this modified architecture achieves competitive results on CIFAR-10, CIFAR-100 and ImageNet without further regularization nor algorithmic modifications.