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Model Architectures

The model architectures included come from a wide variety of sources. Sources, including papers, original impl ("reference code") that I rewrote / adapted, and PyTorch impl that I leveraged directly ("code") are listed below.

Most included models have pretrained weights. The weights are either: 1. from their original sources 2. ported by myself from their original impl in a different framework (e.g. Tensorflow models) 3. trained from scratch using the included training script

The validation results for the pretrained weights can be found here

Cross-Stage Partial Networks [cspnet.py]

DenseNet [densenet.py]

DLA [dla.py]

Dual-Path Networks [dpn.py]

HRNet [hrnet.py]

Inception-V3 [inception_v3.py]

Inception-V4 [inception_v4.py]

Inception-ResNet-V2 [inception_resnet_v2.py]

NASNet-A [nasnet.py]

PNasNet-5 [pnasnet.py]

EfficientNet [efficientnet.py]

MobileNet-V3 [mobilenetv3.py]

RegNet [regnet.py]

ResNet, ResNeXt [resnet.py]

Res2Net [res2net.py]

ResNeSt [resnest.py]

ReXNet [rexnet.py]

Selective-Kernel Networks [sknet.py]

SelecSLS [selecsls.py]

Squeeze-and-Excitation Networks [senet.py]

NOTE: I am deprecating this version of the networks, the new ones are part of resnet.py * Paper: Squeeze-and-Excitation Networks - https://arxiv.org/abs/1709.01507 * Code: https://github.com/Cadene/pretrained-models.pytorch

TResNet [tresnet.py]

VovNet V2 and V1 [vovnet.py]

Xception [xception.py]

Xception (Modified Aligned, Gluon) [gluon_xception.py]

Xception (Modified Aligned, TF) [aligned_xception.py]