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Main Authors: Guerin, Joris, Bansal, Shray, Shaban, Amirreza, Mann, Paulo, Gazula, Harshvardhan
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2410.08592
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author Guerin, Joris
Bansal, Shray
Shaban, Amirreza
Mann, Paulo
Gazula, Harshvardhan
author_facet Guerin, Joris
Bansal, Shray
Shaban, Amirreza
Mann, Paulo
Gazula, Harshvardhan
contents Transfer learning has become an essential tool in modern computer vision, allowing practitioners to leverage backbones, pretrained on large datasets, to train successful models from limited annotated data. Choosing the right backbone is crucial, especially for small datasets, since final performance depends heavily on the quality of the initial feature representations. While prior work has conducted benchmarks across various datasets to identify universal top-performing backbones, we demonstrate that backbone effectiveness is highly dataset-dependent, especially in low-data scenarios where no single backbone consistently excels. To overcome this limitation, we introduce dataset-specific backbone selection as a new research direction and investigate its practical viability in low-data regimes. Since exhaustive evaluation is computationally impractical for large backbone pools, we formalize Vision Backbone Efficient Selection (VIBES) as the problem of searching for high-performing backbones under computational constraints. We define the solution space, propose several heuristics, and demonstrate VIBES feasibility for low-data image classification by performing experiments on four diverse datasets. Our results show that even simple search strategies can find well-suited backbones within a pool of over $1300$ pretrained models, outperforming generic benchmark recommendations within just ten minutes of search time on a single GPU (NVIDIA RTX A5000).
format Preprint
id arxiv_https___arxiv_org_abs_2410_08592
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Vision Backbone Efficient Selection for Image Classification in Low-Data Regimes
Guerin, Joris
Bansal, Shray
Shaban, Amirreza
Mann, Paulo
Gazula, Harshvardhan
Computer Vision and Pattern Recognition
Artificial Intelligence
Machine Learning
Transfer learning has become an essential tool in modern computer vision, allowing practitioners to leverage backbones, pretrained on large datasets, to train successful models from limited annotated data. Choosing the right backbone is crucial, especially for small datasets, since final performance depends heavily on the quality of the initial feature representations. While prior work has conducted benchmarks across various datasets to identify universal top-performing backbones, we demonstrate that backbone effectiveness is highly dataset-dependent, especially in low-data scenarios where no single backbone consistently excels. To overcome this limitation, we introduce dataset-specific backbone selection as a new research direction and investigate its practical viability in low-data regimes. Since exhaustive evaluation is computationally impractical for large backbone pools, we formalize Vision Backbone Efficient Selection (VIBES) as the problem of searching for high-performing backbones under computational constraints. We define the solution space, propose several heuristics, and demonstrate VIBES feasibility for low-data image classification by performing experiments on four diverse datasets. Our results show that even simple search strategies can find well-suited backbones within a pool of over $1300$ pretrained models, outperforming generic benchmark recommendations within just ten minutes of search time on a single GPU (NVIDIA RTX A5000).
title Vision Backbone Efficient Selection for Image Classification in Low-Data Regimes
topic Computer Vision and Pattern Recognition
Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2410.08592