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ReXNet_en.md

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ReXNet series


Catalogue

Overview

ReXNet is proposed by NAVER AI Lab, which is based on new network design principles. Aiming at the problem of representative bottleneck in the existing network, a set of design principles are proposed. The author believes that the conventional design produce representational bottlenecks, which would affect model performance. To investigate the representational bottleneck, the author study the matrix rank of the features generated by ten thousand random networks. Besides, entire layer’s channel configuration is also studied to design more accurate network architectures. In the end, the author proposes a set of simple and effective design principles to mitigate the representational bottleneck. paper

Accuracy, FLOPs and Parameters

Models Top1 Top5 Reference
top1
FLOPs
(G)
Params
(M)
ReXNet_1_0 77.46 93.70 77.9 0.415 4.838
ReXNet_1_3 79.13 94.64 79.5 0.683 7.611
ReXNet_1_5 80.06 95.12 80.3 0.900 9.791
ReXNet_2_0 81.22 95.36 81.6 1.561 16.449
ReXNet_3_0 82.09 96.12 82.8 3.445 34.833

Inference speed and other information are coming soon.