Neural Networks2022,Vol.15015.DOI:10.1016/j.neunet.2022.02.017

Learning online visual invariances for novel objects via supervised and self-supervised training

Biscione, Valerio Bowers, Jeffrey S.
Neural Networks2022,Vol.15015.DOI:10.1016/j.neunet.2022.02.017

Learning online visual invariances for novel objects via supervised and self-supervised training

Biscione, Valerio 1Bowers, Jeffrey S.1
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作者信息

  • 1. Dept Psychol,Univ Bristol
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Abstract

Humans can identify objects following various spatial transformations such as scale and viewpoint. This extends to novel objects, after a single presentation at a single pose, sometimes referred to as online invariance. CNNs have been proposed as a compelling model of human vision, but their ability to identify objects across transformations is typically tested on held-out samples of trained categories after extensive data augmentation. This paper assesses whether standard CNNs can support human-like online invariance by training models to recognize images of synthetic 3D objects that undergo several transformations: rotation, scaling, translation, brightness, contrast, and viewpoint. Through the analysis of models' internal representations, we show that standard supervised CNNs trained on transformed objects can acquire strong invariances on novel classes even when trained with as few as 50 objects taken from 10 classes. This extended to a different dataset of photographs of real objects. We also show that these invariances can be acquired in a self-supervised way, through solving the same/different task. We suggest that this latter approach may be similar to how humans acquire invariances. Crown Copyright (C) 2022 Published by Elsevier Ltd. All rights reserved.

Key words

Invariant representation/Internal representation/Convolutional neural networks/Unsupervised learning/Online invariance/DISCRIMINATION/MODELS

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出版年

2022
Neural Networks

Neural Networks

EISCI
ISSN:0893-6080
被引量4
参考文献量55
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