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RepVGG series


Catalogue

1. Overview

RepVGG (Making VGG-style ConvNets Great Again) series model is a simple but powerful convolutional neural network architecture proposed by Tsinghua University (Guiguang Ding's team), MEGVII Technology (Jian Sun et al.), HKUST and Aberystwyth University in 2021. The architecture has an inference time agent similar to VGG. The main body is composed of 3x3 convolution and relu stack, while the training time model has multi branch topology. The decoupling of training time and inference time is realized by re-parameterization technology, so the model is called repvgg. paper.

2. Accuracy, FLOPs and Parameters

Models Top1 Top5 Reference
top1
FLOPs
(G)
RepVGG_A0 0.7131 0.9016 0.7241
RepVGG_A1 0.7380 0.9146 0.7446
RepVGG_A2 0.7571 0.9264 0.7648
RepVGG_B0 0.7450 0.9213 0.7514
RepVGG_B1 0.7773 0.9385 0.7837
RepVGG_B2 0.7813 0.9410 0.7878
RepVGG_B1g2 0.7732 0.9359 0.7778
RepVGG_B1g4 0.7675 0.9335 0.7758
RepVGG_B2g4 0.7881 0.9448 0.7938
RepVGG_B3g4 0.7965 0.9485 0.8021

Params, FLOPs, Inference speed and other information are coming soon.