CVLGOct 14, 2021

A Comprehensive Study on Torchvision Pre-trained Models for Fine-grained Inter-species Classification

arXiv:2110.07097v123 citations
Originality Synthesis-oriented
AI Analysis

It provides a guideline for computer vision researchers to select transfer learning models, but it is incremental as it focuses on comparing existing models with a minor architectural tweak.

This study evaluated Torchvision pre-trained models for fine-grained image classification on four datasets, finding that using a Spinal fully-connected layer improved performance in most cases, with specific accuracy gains reported (e.g., on 10 Monkey Species, 225 Bird Species, Fruits 360, and Oxford 102 Flowers).

This study aims to explore different pre-trained models offered in the Torchvision package which is available in the PyTorch library. And investigate their effectiveness on fine-grained images classification. Transfer Learning is an effective method of achieving extremely good performance with insufficient training data. In many real-world situations, people cannot collect sufficient data required to train a deep neural network model efficiently. Transfer Learning models are pre-trained on a large data set, and can bring a good performance on smaller datasets with significantly lower training time. Torchvision package offers us many models to apply the Transfer Learning on smaller datasets. Therefore, researchers may need a guideline for the selection of a good model. We investigate Torchvision pre-trained models on four different data sets: 10 Monkey Species, 225 Bird Species, Fruits 360, and Oxford 102 Flowers. These data sets have images of different resolutions, class numbers, and different achievable accuracies. We also apply their usual fully-connected layer and the Spinal fully-connected layer to investigate the effectiveness of SpinalNet. The Spinal fully-connected layer brings better performance in most situations. We apply the same augmentation for different models for the same data set for a fair comparison. This paper may help future Computer Vision researchers in choosing a proper Transfer Learning model.

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