Gluon Model Zoo¶
Overview¶
This document lists the model APIs in Gluon:
mxnet.gluon.model_zoo |
Predefined and pretrained models. |
mxnet.gluon.model_zoo.vision |
Module for pre-defined neural network models. |
The Gluon Model Zoo
API, defined in the gluon.model_zoo
package, provides pre-defined
and pre-trained models to help bootstrap machine learning applications.
In the rest of this document, we list routines provided by the gluon.model_zoo
package.
Vision¶
Module for pre-defined neural network models.
This module contains definitions for the following model architectures: - AlexNet - DenseNet - Inception V3 - ResNet V1 - ResNet V2 - SqueezeNet - VGG - MobileNet - MobileNetV2
You can construct a model with random weights by calling its constructor:
from mxnet.gluon.model_zoo import vision
resnet18 = vision.resnet18_v1()
alexnet = vision.alexnet()
squeezenet = vision.squeezenet1_0()
densenet = vision.densenet_161()
We provide pre-trained models for all the listed models.
These models can constructed by passing pretrained=True
:
from mxnet.gluon.model_zoo import vision
resnet18 = vision.resnet18_v1(pretrained=True)
alexnet = vision.alexnet(pretrained=True)
All pre-trained models expect input images normalized in the same way,
i.e. mini-batches of 3-channel RGB images of shape (N x 3 x H x W),
where N is the batch size, and H and W are expected to be at least 224.
The images have to be loaded in to a range of [0, 1] and then normalized
using mean = [0.485, 0.456, 0.406]
and std = [0.229, 0.224, 0.225]
.
The transformation should preferrably happen at preprocessing. You can use
mx.image.color_normalize
for such transformation:
image = image/255
normalized = mx.image.color_normalize(image,
mean=mx.nd.array([0.485, 0.456, 0.406]),
std=mx.nd.array([0.229, 0.224, 0.225]))
The following table summarizes the available models.
Alias | Network | # Parameters | Top-1 Accuracy | Top-5 Accuracy | Origin |
---|---|---|---|---|---|
alexnet | AlexNet | 61,100,840 | 0.5492 | 0.7803 | Converted from pytorch vision |
densenet121 | DenseNet-121 | 8,062,504 | 0.7497 | 0.9225 | Converted from pytorch vision |
densenet161 | DenseNet-161 | 28,900,936 | 0.7770 | 0.9380 | Converted from pytorch vision |
densenet169 | DenseNet-169 | 14,307,880 | 0.7617 | 0.9317 | Converted from pytorch vision |
densenet201 | DenseNet-201 | 20,242,984 | 0.7732 | 0.9362 | Converted from pytorch vision |
inceptionv3 | Inception V3 299x299 | 23,869,000 | 0.7755 | 0.9364 | Converted from pytorch vision |
mobilenet0.25 | MobileNet 0.25 | 475,544 | 0.5185 | 0.7608 | Trained with script |
mobilenet0.5 | MobileNet 0.5 | 1,342,536 | 0.6307 | 0.8475 | Trained with script |
mobilenet0.75 | MobileNet 0.75 | 2,601,976 | 0.6738 | 0.8782 | Trained with script |
mobilenet1.0 | MobileNet 1.0 | 4,253,864 | 0.7105 | 0.9006 | Trained with script |
mobilenetv2_1.0 | MobileNetV2 1.0 | 3,539,136 | 0.7192 | 0.9056 | Trained with script |
mobilenetv2_0.75 | MobileNetV2 0.75 | 2,653,864 | 0.6961 | 0.8895 | Trained with script |
mobilenetv2_0.5 | MobileNetV2 0.5 | 1,983,104 | 0.6449 | 0.8547 | Trained with script |
mobilenetv2_0.25 | MobileNetV2 0.25 | 1,526,856 | 0.5074 | 0.7456 | Trained with script |
resnet18_v1 | ResNet-18 V1 | 11,699,112 | 0.7093 | 0.8992 | Trained with script |
resnet34_v1 | ResNet-34 V1 | 21,814,696 | 0.7437 | 0.9187 | Trained with script |
resnet50_v1 | ResNet-50 V1 | 25,629,032 | 0.7647 | 0.9313 | Trained with script |
resnet101_v1 | ResNet-101 V1 | 44,695,144 | 0.7834 | 0.9401 | Trained with script |
resnet152_v1 | ResNet-152 V1 | 60,404,072 | 0.7900 | 0.9438 | Trained with script |
resnet18_v2 | ResNet-18 V2 | 11,695,796 | 0.7100 | 0.8992 | Trained with script |
resnet34_v2 | ResNet-34 V2 | 21,811,380 | 0.7440 | 0.9208 | Trained with script |
resnet50_v2 | ResNet-50 V2 | 25,595,060 | 0.7711 | 0.9343 | Trained with script |
resnet101_v2 | ResNet-101 V2 | 44,639,412 | 0.7853 | 0.9417 | Trained with script |
resnet152_v2 | ResNet-152 V2 | 60,329,140 | 0.7921 | 0.9431 | Trained with script |
squeezenet1.0 | SqueezeNet 1.0 | 1,248,424 | 0.5611 | 0.7909 | Converted from pytorch vision |
squeezenet1.1 | SqueezeNet 1.1 | 1,235,496 | 0.5496 | 0.7817 | Converted from pytorch vision |
vgg11 | VGG-11 | 132,863,336 | 0.6662 | 0.8734 | Converted from pytorch vision |
vgg13 | VGG-13 | 133,047,848 | 0.6774 | 0.8811 | Converted from pytorch vision |
vgg16 | VGG-16 | 138,357,544 | 0.7323 | 0.9132 | Trained with script |
vgg19 | VGG-19 | 143,667,240 | 0.7411 | 0.9135 | Trained with script |
vgg11_bn | VGG-11 with batch normalization | 132,874,344 | 0.6859 | 0.8872 | Converted from pytorch vision |
vgg13_bn | VGG-13 with batch normalization | 133,059,624 | 0.6884 | 0.8882 | Converted from pytorch vision |
vgg16_bn | VGG-16 with batch normalization | 138,374,440 | 0.7310 | 0.9176 | Trained with script |
vgg19_bn | VGG-19 with batch normalization | 143,689,256 | 0.7433 | 0.9185 | Trained with script |
get_model |
Returns a pre-defined model by name |
ResNet¶
resnet18_v1 |
ResNet-18 V1 model from “Deep Residual Learning for Image Recognition” paper. |
resnet34_v1 |
ResNet-34 V1 model from “Deep Residual Learning for Image Recognition” paper. |
resnet50_v1 |
ResNet-50 V1 model from “Deep Residual Learning for Image Recognition” paper. |
resnet101_v1 |
ResNet-101 V1 model from “Deep Residual Learning for Image Recognition” paper. |
resnet152_v1 |
ResNet-152 V1 model from “Deep Residual Learning for Image Recognition” paper. |
resnet18_v2 |
ResNet-18 V2 model from “Identity Mappings in Deep Residual Networks” paper. |
resnet34_v2 |
ResNet-34 V2 model from “Identity Mappings in Deep Residual Networks” paper. |
resnet50_v2 |
ResNet-50 V2 model from “Identity Mappings in Deep Residual Networks” paper. |
resnet101_v2 |
ResNet-101 V2 model from “Identity Mappings in Deep Residual Networks” paper. |
resnet152_v2 |
ResNet-152 V2 model from “Identity Mappings in Deep Residual Networks” paper. |
ResNetV1 |
ResNet V1 model from “Deep Residual Learning for Image Recognition” paper. |
ResNetV2 |
ResNet V2 model from “Identity Mappings in Deep Residual Networks” paper. |
BasicBlockV1 |
BasicBlock V1 from “Deep Residual Learning for Image Recognition” paper. |
BasicBlockV2 |
BasicBlock V2 from “Identity Mappings in Deep Residual Networks” paper. |
BottleneckV1 |
Bottleneck V1 from “Deep Residual Learning for Image Recognition” paper. |
BottleneckV2 |
Bottleneck V2 from “Identity Mappings in Deep Residual Networks” paper. |
get_resnet |
ResNet V1 model from “Deep Residual Learning for Image Recognition” paper. |
VGG¶
vgg11 |
VGG-11 model from the “Very Deep Convolutional Networks for Large-Scale Image Recognition” paper. |
vgg13 |
VGG-13 model from the “Very Deep Convolutional Networks for Large-Scale Image Recognition” paper. |
vgg16 |
VGG-16 model from the “Very Deep Convolutional Networks for Large-Scale Image Recognition” paper. |
vgg19 |
VGG-19 model from the “Very Deep Convolutional Networks for Large-Scale Image Recognition” paper. |
vgg11_bn |
VGG-11 model with batch normalization from the “Very Deep Convolutional Networks for Large-Scale Image Recognition” paper. |
vgg13_bn |
VGG-13 model with batch normalization from the “Very Deep Convolutional Networks for Large-Scale Image Recognition” paper. |
vgg16_bn |
VGG-16 model with batch normalization from the “Very Deep Convolutional Networks for Large-Scale Image Recognition” paper. |
vgg19_bn |
VGG-19 model with batch normalization from the “Very Deep Convolutional Networks for Large-Scale Image Recognition” paper. |
VGG |
VGG model from the “Very Deep Convolutional Networks for Large-Scale Image Recognition” paper. |
get_vgg |
VGG model from the “Very Deep Convolutional Networks for Large-Scale Image Recognition” paper. |
Alexnet¶
alexnet |
AlexNet model from the “One weird trick...” paper. |
AlexNet |
AlexNet model from the “One weird trick...” paper. |
DenseNet¶
densenet121 |
Densenet-BC 121-layer model from the “Densely Connected Convolutional Networks” paper. |
densenet161 |
Densenet-BC 161-layer model from the “Densely Connected Convolutional Networks” paper. |
densenet169 |
Densenet-BC 169-layer model from the “Densely Connected Convolutional Networks” paper. |
densenet201 |
Densenet-BC 201-layer model from the “Densely Connected Convolutional Networks” paper. |
DenseNet |
Densenet-BC model from the “Densely Connected Convolutional Networks” paper. |
SqueezeNet¶
squeezenet1_0 |
SqueezeNet 1.0 model from the “SqueezeNet: AlexNet-level accuracy with 50x fewer parameters and <0.5MB model size” paper. |
squeezenet1_1 |
SqueezeNet 1.1 model from the official SqueezeNet repo. |
SqueezeNet |
SqueezeNet model from the “SqueezeNet: AlexNet-level accuracy with 50x fewer parameters and <0.5MB model size” paper. |
Inception¶
inception_v3 |
Inception v3 model from “Rethinking the Inception Architecture for Computer Vision” paper. |
Inception3 |
Inception v3 model from “Rethinking the Inception Architecture for Computer Vision” paper. |
MobileNet¶
MobileNet |
MobileNet model from the “MobileNets: Efficient Convolutional Neural Networks for Mobile Vision Applications” paper. |
MobileNetV2 |
MobileNetV2 model from the “Inverted Residuals and Linear Bottlenecks: Mobile Networks for Classification, Detection and Segmentation” paper. |
API Reference¶
Predefined and pretrained models.
Module for pre-defined neural network models.
This module contains definitions for the following model architectures: - AlexNet - DenseNet - Inception V3 - ResNet V1 - ResNet V2 - SqueezeNet - VGG - MobileNet - MobileNetV2
You can construct a model with random weights by calling its constructor:
from mxnet.gluon.model_zoo import vision
resnet18 = vision.resnet18_v1()
alexnet = vision.alexnet()
squeezenet = vision.squeezenet1_0()
densenet = vision.densenet_161()
We provide pre-trained models for all the listed models.
These models can constructed by passing pretrained=True
:
from mxnet.gluon.model_zoo import vision
resnet18 = vision.resnet18_v1(pretrained=True)
alexnet = vision.alexnet(pretrained=True)
All pre-trained models expect input images normalized in the same way,
i.e. mini-batches of 3-channel RGB images of shape (N x 3 x H x W),
where N is the batch size, and H and W are expected to be at least 224.
The images have to be loaded in to a range of [0, 1] and then normalized
using mean = [0.485, 0.456, 0.406]
and std = [0.229, 0.224, 0.225]
.
The transformation should preferrably happen at preprocessing. You can use
mx.image.color_normalize
for such transformation:
image = image/255
normalized = mx.image.color_normalize(image,
mean=mx.nd.array([0.485, 0.456, 0.406]),
std=mx.nd.array([0.229, 0.224, 0.225]))
-
mxnet.gluon.model_zoo.vision.
get_model
(name, **kwargs)[source] Returns a pre-defined model by name
Parameters: - name (str) – Name of the model.
- pretrained (bool) – Whether to load the pretrained weights for model.
- classes (int) – Number of classes for the output layer.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
- root (str, default '$MXNET_HOME/models') – Location for keeping the model parameters.
Returns: The model.
Return type:
-
class
mxnet.gluon.model_zoo.vision.
AlexNet
(classes=1000, **kwargs)[source] AlexNet model from the “One weird trick...” paper.
Parameters: classes (int, default 1000) – Number of classes for the output layer.
-
class
mxnet.gluon.model_zoo.vision.
BasicBlockV1
(channels, stride, downsample=False, in_channels=0, **kwargs)[source] BasicBlock V1 from “Deep Residual Learning for Image Recognition” paper. This is used for ResNet V1 for 18, 34 layers.
Parameters: - channels (int) – Number of output channels.
- stride (int) – Stride size.
- downsample (bool, default False) – Whether to downsample the input.
- in_channels (int, default 0) – Number of input channels. Default is 0, to infer from the graph.
-
class
mxnet.gluon.model_zoo.vision.
BasicBlockV2
(channels, stride, downsample=False, in_channels=0, **kwargs)[source] BasicBlock V2 from “Identity Mappings in Deep Residual Networks” paper. This is used for ResNet V2 for 18, 34 layers.
Parameters: - channels (int) – Number of output channels.
- stride (int) – Stride size.
- downsample (bool, default False) – Whether to downsample the input.
- in_channels (int, default 0) – Number of input channels. Default is 0, to infer from the graph.
-
class
mxnet.gluon.model_zoo.vision.
BottleneckV1
(channels, stride, downsample=False, in_channels=0, **kwargs)[source] Bottleneck V1 from “Deep Residual Learning for Image Recognition” paper. This is used for ResNet V1 for 50, 101, 152 layers.
Parameters: - channels (int) – Number of output channels.
- stride (int) – Stride size.
- downsample (bool, default False) – Whether to downsample the input.
- in_channels (int, default 0) – Number of input channels. Default is 0, to infer from the graph.
-
class
mxnet.gluon.model_zoo.vision.
BottleneckV2
(channels, stride, downsample=False, in_channels=0, **kwargs)[source] Bottleneck V2 from “Identity Mappings in Deep Residual Networks” paper. This is used for ResNet V2 for 50, 101, 152 layers.
Parameters: - channels (int) – Number of output channels.
- stride (int) – Stride size.
- downsample (bool, default False) – Whether to downsample the input.
- in_channels (int, default 0) – Number of input channels. Default is 0, to infer from the graph.
-
class
mxnet.gluon.model_zoo.vision.
DenseNet
(num_init_features, growth_rate, block_config, bn_size=4, dropout=0, classes=1000, **kwargs)[source] Densenet-BC model from the “Densely Connected Convolutional Networks” paper.
Parameters: - num_init_features (int) – Number of filters to learn in the first convolution layer.
- growth_rate (int) – Number of filters to add each layer (k in the paper).
- block_config (list of int) – List of integers for numbers of layers in each pooling block.
- bn_size (int, default 4) – Multiplicative factor for number of bottle neck layers. (i.e. bn_size * k features in the bottleneck layer)
- dropout (float, default 0) – Rate of dropout after each dense layer.
- classes (int, default 1000) – Number of classification classes.
-
class
mxnet.gluon.model_zoo.vision.
Inception3
(classes=1000, **kwargs)[source] Inception v3 model from “Rethinking the Inception Architecture for Computer Vision” paper.
Parameters: classes (int, default 1000) – Number of classification classes.
-
class
mxnet.gluon.model_zoo.vision.
MobileNet
(multiplier=1.0, classes=1000, **kwargs)[source] MobileNet model from the “MobileNets: Efficient Convolutional Neural Networks for Mobile Vision Applications” paper.
Parameters: - multiplier (float, default 1.0) – The width multiplier for controling the model size. Only multipliers that are no less than 0.25 are supported. The actual number of channels is equal to the original channel size multiplied by this multiplier.
- classes (int, default 1000) – Number of classes for the output layer.
-
class
mxnet.gluon.model_zoo.vision.
MobileNetV2
(multiplier=1.0, classes=1000, **kwargs)[source] MobileNetV2 model from the “Inverted Residuals and Linear Bottlenecks: Mobile Networks for Classification, Detection and Segmentation” paper.
Parameters: - multiplier (float, default 1.0) – The width multiplier for controling the model size. The actual number of channels is equal to the original channel size multiplied by this multiplier.
- classes (int, default 1000) – Number of classes for the output layer.
-
class
mxnet.gluon.model_zoo.vision.
ResNetV1
(block, layers, channels, classes=1000, thumbnail=False, **kwargs)[source] ResNet V1 model from “Deep Residual Learning for Image Recognition” paper.
Parameters: - block (HybridBlock) – Class for the residual block. Options are BasicBlockV1, BottleneckV1.
- layers (list of int) – Numbers of layers in each block
- channels (list of int) – Numbers of channels in each block. Length should be one larger than layers list.
- classes (int, default 1000) – Number of classification classes.
- thumbnail (bool, default False) – Enable thumbnail.
-
class
mxnet.gluon.model_zoo.vision.
ResNetV2
(block, layers, channels, classes=1000, thumbnail=False, **kwargs)[source] ResNet V2 model from “Identity Mappings in Deep Residual Networks” paper.
Parameters: - block (HybridBlock) – Class for the residual block. Options are BasicBlockV1, BottleneckV1.
- layers (list of int) – Numbers of layers in each block
- channels (list of int) – Numbers of channels in each block. Length should be one larger than layers list.
- classes (int, default 1000) – Number of classification classes.
- thumbnail (bool, default False) – Enable thumbnail.
-
class
mxnet.gluon.model_zoo.vision.
SqueezeNet
(version, classes=1000, **kwargs)[source] SqueezeNet model from the “SqueezeNet: AlexNet-level accuracy with 50x fewer parameters and <0.5MB model size” paper. SqueezeNet 1.1 model from the official SqueezeNet repo. SqueezeNet 1.1 has 2.4x less computation and slightly fewer parameters than SqueezeNet 1.0, without sacrificing accuracy.
Parameters: - version (str) – Version of squeezenet. Options are ‘1.0’, ‘1.1’.
- classes (int, default 1000) – Number of classification classes.
-
class
mxnet.gluon.model_zoo.vision.
VGG
(layers, filters, classes=1000, batch_norm=False, **kwargs)[source] VGG model from the “Very Deep Convolutional Networks for Large-Scale Image Recognition” paper.
Parameters: - layers (list of int) – Numbers of layers in each feature block.
- filters (list of int) – Numbers of filters in each feature block. List length should match the layers.
- classes (int, default 1000) – Number of classification classes.
- batch_norm (bool, default False) – Use batch normalization.
-
mxnet.gluon.model_zoo.vision.
alexnet
(pretrained=False, ctx=cpu(0), root=u'/work/mxnet/docs/build_version_doc/apache-mxnet/v1.5.x/models', **kwargs)[source] AlexNet model from the “One weird trick...” paper.
Parameters: - pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
- root (str, default $MXNET_HOME/models) – Location for keeping the model parameters.
-
mxnet.gluon.model_zoo.vision.
densenet121
(**kwargs)[source] Densenet-BC 121-layer model from the “Densely Connected Convolutional Networks” paper.
Parameters: - pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
- root (str, default '$MXNET_HOME/models') – Location for keeping the model parameters.
-
mxnet.gluon.model_zoo.vision.
densenet161
(**kwargs)[source] Densenet-BC 161-layer model from the “Densely Connected Convolutional Networks” paper.
Parameters: - pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
- root (str, default '$MXNET_HOME/models') – Location for keeping the model parameters.
-
mxnet.gluon.model_zoo.vision.
densenet169
(**kwargs)[source] Densenet-BC 169-layer model from the “Densely Connected Convolutional Networks” paper.
Parameters: - pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
- root (str, default '$MXNET_HOME/models') – Location for keeping the model parameters.
-
mxnet.gluon.model_zoo.vision.
densenet201
(**kwargs)[source] Densenet-BC 201-layer model from the “Densely Connected Convolutional Networks” paper.
Parameters: - pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
- root (str, default '$MXNET_HOME/models') – Location for keeping the model parameters.
-
mxnet.gluon.model_zoo.vision.
get_mobilenet
(multiplier, pretrained=False, ctx=cpu(0), root=u'/work/mxnet/docs/build_version_doc/apache-mxnet/v1.5.x/models', **kwargs)[source] MobileNet model from the “MobileNets: Efficient Convolutional Neural Networks for Mobile Vision Applications” paper.
Parameters: - multiplier (float) – The width multiplier for controling the model size. Only multipliers that are no less than 0.25 are supported. The actual number of channels is equal to the original channel size multiplied by this multiplier.
- pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
- root (str, default $MXNET_HOME/models) – Location for keeping the model parameters.
-
mxnet.gluon.model_zoo.vision.
get_mobilenet_v2
(multiplier, pretrained=False, ctx=cpu(0), root=u'/work/mxnet/docs/build_version_doc/apache-mxnet/v1.5.x/models', **kwargs)[source] MobileNetV2 model from the “Inverted Residuals and Linear Bottlenecks: Mobile Networks for Classification, Detection and Segmentation” paper.
Parameters: - multiplier (float) – The width multiplier for controling the model size. Only multipliers that are no less than 0.25 are supported. The actual number of channels is equal to the original channel size multiplied by this multiplier.
- pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
- root (str, default $MXNET_HOME/models) – Location for keeping the model parameters.
-
mxnet.gluon.model_zoo.vision.
get_resnet
(version, num_layers, pretrained=False, ctx=cpu(0), root=u'/work/mxnet/docs/build_version_doc/apache-mxnet/v1.5.x/models', **kwargs)[source] ResNet V1 model from “Deep Residual Learning for Image Recognition” paper. ResNet V2 model from “Identity Mappings in Deep Residual Networks” paper.
Parameters: - version (int) – Version of ResNet. Options are 1, 2.
- num_layers (int) – Numbers of layers. Options are 18, 34, 50, 101, 152.
- pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
- root (str, default $MXNET_HOME/models) – Location for keeping the model parameters.
-
mxnet.gluon.model_zoo.vision.
get_vgg
(num_layers, pretrained=False, ctx=cpu(0), root=u'/work/mxnet/docs/build_version_doc/apache-mxnet/v1.5.x/models', **kwargs)[source] VGG model from the “Very Deep Convolutional Networks for Large-Scale Image Recognition” paper.
Parameters: - num_layers (int) – Number of layers for the variant of densenet. Options are 11, 13, 16, 19.
- pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
- root (str, default $MXNET_HOME/models) – Location for keeping the model parameters.
-
mxnet.gluon.model_zoo.vision.
inception_v3
(pretrained=False, ctx=cpu(0), root=u'/work/mxnet/docs/build_version_doc/apache-mxnet/v1.5.x/models', **kwargs)[source] Inception v3 model from “Rethinking the Inception Architecture for Computer Vision” paper.
Parameters: - pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
- root (str, default $MXNET_HOME/models) – Location for keeping the model parameters.
-
mxnet.gluon.model_zoo.vision.
mobilenet0_25
(**kwargs)[source] MobileNet model from the “MobileNets: Efficient Convolutional Neural Networks for Mobile Vision Applications” paper, with width multiplier 0.25.
Parameters: - pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
-
mxnet.gluon.model_zoo.vision.
mobilenet0_5
(**kwargs)[source] MobileNet model from the “MobileNets: Efficient Convolutional Neural Networks for Mobile Vision Applications” paper, with width multiplier 0.5.
Parameters: - pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
-
mxnet.gluon.model_zoo.vision.
mobilenet0_75
(**kwargs)[source] MobileNet model from the “MobileNets: Efficient Convolutional Neural Networks for Mobile Vision Applications” paper, with width multiplier 0.75.
Parameters: - pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
-
mxnet.gluon.model_zoo.vision.
mobilenet1_0
(**kwargs)[source] MobileNet model from the “MobileNets: Efficient Convolutional Neural Networks for Mobile Vision Applications” paper, with width multiplier 1.0.
Parameters: - pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
-
mxnet.gluon.model_zoo.vision.
mobilenet_v2_0_25
(**kwargs)[source] MobileNetV2 model from the “Inverted Residuals and Linear Bottlenecks: Mobile Networks for Classification, Detection and Segmentation” paper.
Parameters: - pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
-
mxnet.gluon.model_zoo.vision.
mobilenet_v2_0_5
(**kwargs)[source] MobileNetV2 model from the “Inverted Residuals and Linear Bottlenecks: Mobile Networks for Classification, Detection and Segmentation” paper.
Parameters: - pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
-
mxnet.gluon.model_zoo.vision.
mobilenet_v2_0_75
(**kwargs)[source] MobileNetV2 model from the “Inverted Residuals and Linear Bottlenecks: Mobile Networks for Classification, Detection and Segmentation” paper.
Parameters: - pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
-
mxnet.gluon.model_zoo.vision.
mobilenet_v2_1_0
(**kwargs)[source] MobileNetV2 model from the “Inverted Residuals and Linear Bottlenecks: Mobile Networks for Classification, Detection and Segmentation” paper.
Parameters: - pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
-
mxnet.gluon.model_zoo.vision.
resnet101_v1
(**kwargs)[source] ResNet-101 V1 model from “Deep Residual Learning for Image Recognition” paper.
Parameters: - pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
- root (str, default '$MXNET_HOME/models') – Location for keeping the model parameters.
-
mxnet.gluon.model_zoo.vision.
resnet101_v2
(**kwargs)[source] ResNet-101 V2 model from “Identity Mappings in Deep Residual Networks” paper.
Parameters: - pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
- root (str, default '$MXNET_HOME/models') – Location for keeping the model parameters.
-
mxnet.gluon.model_zoo.vision.
resnet152_v1
(**kwargs)[source] ResNet-152 V1 model from “Deep Residual Learning for Image Recognition” paper.
Parameters: - pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
- root (str, default '$MXNET_HOME/models') – Location for keeping the model parameters.
-
mxnet.gluon.model_zoo.vision.
resnet152_v2
(**kwargs)[source] ResNet-152 V2 model from “Identity Mappings in Deep Residual Networks” paper.
Parameters: - pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
- root (str, default '$MXNET_HOME/models') – Location for keeping the model parameters.
-
mxnet.gluon.model_zoo.vision.
resnet18_v1
(**kwargs)[source] ResNet-18 V1 model from “Deep Residual Learning for Image Recognition” paper.
Parameters: - pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
- root (str, default '$MXNET_HOME/models') – Location for keeping the model parameters.
-
mxnet.gluon.model_zoo.vision.
resnet18_v2
(**kwargs)[source] ResNet-18 V2 model from “Identity Mappings in Deep Residual Networks” paper.
Parameters: - pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
- root (str, default '$MXNET_HOME/models') – Location for keeping the model parameters.
-
mxnet.gluon.model_zoo.vision.
resnet34_v1
(**kwargs)[source] ResNet-34 V1 model from “Deep Residual Learning for Image Recognition” paper.
Parameters: - pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
- root (str, default '$MXNET_HOME/models') – Location for keeping the model parameters.
-
mxnet.gluon.model_zoo.vision.
resnet34_v2
(**kwargs)[source] ResNet-34 V2 model from “Identity Mappings in Deep Residual Networks” paper.
Parameters: - pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
- root (str, default '$MXNET_HOME/models') – Location for keeping the model parameters.
-
mxnet.gluon.model_zoo.vision.
resnet50_v1
(**kwargs)[source] ResNet-50 V1 model from “Deep Residual Learning for Image Recognition” paper.
Parameters: - pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
- root (str, default '$MXNET_HOME/models') – Location for keeping the model parameters.
-
mxnet.gluon.model_zoo.vision.
resnet50_v2
(**kwargs)[source] ResNet-50 V2 model from “Identity Mappings in Deep Residual Networks” paper.
Parameters: - pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
- root (str, default '$MXNET_HOME/models') – Location for keeping the model parameters.
-
mxnet.gluon.model_zoo.vision.
squeezenet1_0
(**kwargs)[source] SqueezeNet 1.0 model from the “SqueezeNet: AlexNet-level accuracy with 50x fewer parameters and <0.5MB model size” paper.
Parameters: - pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
- root (str, default '$MXNET_HOME/models') – Location for keeping the model parameters.
-
mxnet.gluon.model_zoo.vision.
squeezenet1_1
(**kwargs)[source] SqueezeNet 1.1 model from the official SqueezeNet repo. SqueezeNet 1.1 has 2.4x less computation and slightly fewer parameters than SqueezeNet 1.0, without sacrificing accuracy.
Parameters: - pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
- root (str, default '$MXNET_HOME/models') – Location for keeping the model parameters.
-
mxnet.gluon.model_zoo.vision.
vgg11
(**kwargs)[source] VGG-11 model from the “Very Deep Convolutional Networks for Large-Scale Image Recognition” paper.
Parameters: - pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
- root (str, default '$MXNET_HOME/models') – Location for keeping the model parameters.
-
mxnet.gluon.model_zoo.vision.
vgg11_bn
(**kwargs)[source] VGG-11 model with batch normalization from the “Very Deep Convolutional Networks for Large-Scale Image Recognition” paper.
Parameters: - pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
- root (str, default '$MXNET_HOME/models') – Location for keeping the model parameters.
-
mxnet.gluon.model_zoo.vision.
vgg13
(**kwargs)[source] VGG-13 model from the “Very Deep Convolutional Networks for Large-Scale Image Recognition” paper.
Parameters: - pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
- root (str, default '$MXNET_HOME/models') – Location for keeping the model parameters.
-
mxnet.gluon.model_zoo.vision.
vgg13_bn
(**kwargs)[source] VGG-13 model with batch normalization from the “Very Deep Convolutional Networks for Large-Scale Image Recognition” paper.
Parameters: - pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
- root (str, default '$MXNET_HOME/models') – Location for keeping the model parameters.
-
mxnet.gluon.model_zoo.vision.
vgg16
(**kwargs)[source] VGG-16 model from the “Very Deep Convolutional Networks for Large-Scale Image Recognition” paper.
Parameters: - pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
- root (str, default '$MXNET_HOME/models') – Location for keeping the model parameters.
-
mxnet.gluon.model_zoo.vision.
vgg16_bn
(**kwargs)[source] VGG-16 model with batch normalization from the “Very Deep Convolutional Networks for Large-Scale Image Recognition” paper.
Parameters: - pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
- root (str, default '$MXNET_HOME/models') – Location for keeping the model parameters.
-
mxnet.gluon.model_zoo.vision.
vgg19
(**kwargs)[source] VGG-19 model from the “Very Deep Convolutional Networks for Large-Scale Image Recognition” paper.
Parameters: - pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
- root (str, default '$MXNET_HOME/models') – Location for keeping the model parameters.
-
mxnet.gluon.model_zoo.vision.
vgg19_bn
(**kwargs)[source] VGG-19 model with batch normalization from the “Very Deep Convolutional Networks for Large-Scale Image Recognition” paper.
Parameters: - pretrained (bool, default False) – Whether to load the pretrained weights for model.
- ctx (Context, default CPU) – The context in which to load the pretrained weights.
- root (str, default '$MXNET_HOME/models') – Location for keeping the model parameters.