No Data Augmentation? Alternative Regularizations for Effective Training on Small Datasets

09/04/2023
by   Lorenzo Brigato, et al.
0

Solving image classification tasks given small training datasets remains an open challenge for modern computer vision. Aggressive data augmentation and generative models are among the most straightforward approaches to overcoming the lack of data. However, the first fails to be agnostic to varying image domains, while the latter requires additional compute and careful design. In this work, we study alternative regularization strategies to push the limits of supervised learning on small image classification datasets. In particular, along with the model size and training schedule scaling, we employ a heuristic to select (semi) optimal learning rate and weight decay couples via the norm of model parameters. By training on only 1 (i.e., 50 images per class) and testing on ciFAIR-10, a variant of the original CIFAR without duplicated images, we reach a test accuracy of 66.5 the best state-of-the-art methods.

READ FULL TEXT
research
01/09/2018

Data Augmentation by Pairing Samples for Images Classification

Data augmentation is a widely used technique in many machine learning ta...
research
08/16/2021

Towards Efficient and Data Agnostic Image Classification Training Pipeline for Embedded Systems

Nowadays deep learning-based methods have achieved a remarkable progress...
research
09/30/2019

RandAugment: Practical data augmentation with no separate search

Recent work has shown that data augmentation has the potential to signif...
research
11/23/2021

Using mixup as regularization and tuning hyper-parameters for ResNets

While novel computer vision architectures are gaining traction, the impa...
research
05/04/2023

LatentAugment: Dynamically Optimized Latent Probabilities of Data Augmentation

Although data augmentation is a powerful technique for improving the per...
research
02/01/2019

ColorNet: Investigating the importance of color spaces for image classification

Image classification is a fundamental application in computer vision. Re...
research
07/15/2020

Data-Efficient Deep Learning Method for Image Classification Using Data Augmentation, Focal Cosine Loss, and Ensemble

In general, sufficient data is essential for the better performance and ...

Please sign up or login with your details

Forgot password? Click here to reset