Vision Models Playground

This is a trained model from the Vision Models Playground repository. Link to the repository: https://github.com/Akrielz/vision_models_playground

Model

This model is a custom implementation of ResNetYoloV1 from the vision_models_playground.models.segmentation.yolo_v1 module. Please look in the config file for more information about the model architecture.

Usage

To load the torch model, you can use the following code snippet:

import torch
from vision_models_playground.utility.hub import load_vmp_model_from_hub


model = load_vmp_model_from_hub("Akriel/ResNetYoloV1")

x = torch.randn(...)
y = model(x)  # y will be of type torch.Tensor

To load the pipeline that includes the model, you can use the following code snippet:

from vision_models_playground.utility.hub import load_vmp_pipeline_from_hub

pipeline = load_vmp_pipeline_from_hub("Akriel/ResNetYoloV1")

x = raw_data  # raw_data will be of type pipeline.input_type
y = pipeline(x)  # y will be of type pipeline.output_type

Metrics

The model was evaluated on the following dataset: YoloPascalVocDataset from vision_models_playground.datasets.yolo_pascal_voc_dataset

These are the results of the evaluation:

  • MulticlassAccuracy: 0.7241
  • MulticlassAveragePrecision: 0.7643
  • MulticlassAUROC: 0.9684
  • Dice: 0.7241
  • MulticlassF1Score: 0.7241
  • LossTracker: 4.1958

Additional Information

The train and evaluation runs are also saved using tensorboard. You can use the following command to visualize the runs:

tensorboard --logdir ./model
tensorboard --logdir ./eval
Downloads last month

-

Downloads are not tracked for this model. How to track
Inference Providers NEW
This model is not currently available via any of the supported Inference Providers.
The model cannot be deployed to the HF Inference API: The model has no library tag.

Space using Akriel/ResNetYoloV1 1