resnet18-xnor-binary-onnx-0001

Use Case and High-Level Description

This is a classical classification network for 1000 classes trained on ImageNet. The difference is that most convolutional layers were replaced by binary ones that can be implemented as XNOR+POPCOUNT operations. Only input, final and shortcut layers were kept as FP32, all the rest convolutional layers are replaced by binary convolution layers.

Specification

Metric

Value

Image size

224x224

Source framework

PyTorch*

Accuracy

The quality metrics calculated on ImageNet validation dataset is 61.71% accuracy

Metric

Value

Accuracy top-1 (ImageNet)

61.71%

Inputs

A blob with a BGR image and the shape 1, 3, 224, 224 in the format B, C, H, W, where:

  • B – batch size

  • C – number of channels

  • H – image height

  • W – image width

It is supposed that input is BGR in 0..255 range

Outputs

The output is a blob with the shape 1, 1000 in the format B, C, where:

  • B - batch size

  • C - predicted probabilities for each class in logits format

Demo usage

The model can be used in the following demos provided by the Open Model Zoo to show its capabilities: