Using Unlabeled Data for Increasing Low-Shot Classification Accuracy of
Relevant and Open-Set Irrelevant Images
- URL: http://arxiv.org/abs/2010.00721v2
- Date: Fri, 3 Jun 2022 18:59:19 GMT
- Title: Using Unlabeled Data for Increasing Low-Shot Classification Accuracy of
Relevant and Open-Set Irrelevant Images
- Authors: Spiridon Kasapis, Geng Zhang, Jonathon Smereka and Nickolas
Vlahopoulos
- Abstract summary: In search, exploration, and reconnaissance tasks performed with autonomous ground vehicles, an image classification capability is needed.
We present an open-set low-shot classifier that uses, during its training, a modest number of labeled images for each relevant class.
It is capable of identifying images from the relevant classes, determining when a candidate image is irrelevant, and it can further recognize categories of irrelevant images that were not included in the training.
- Score: 0.4110108749051655
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In search, exploration, and reconnaissance tasks performed with autonomous
ground vehicles, an image classification capability is needed for specifically
identifying targeted objects (relevant classes) and at the same time recognize
when a candidate image does not belong to anyone of the relevant classes
(irrelevant images). In this paper, we present an open-set low-shot classifier
that uses, during its training, a modest number (less than 40) of labeled
images for each relevant class, and unlabeled irrelevant images that are
randomly selected at each epoch of the training process. The new classifier is
capable of identifying images from the relevant classes, determining when a
candidate image is irrelevant, and it can further recognize categories of
irrelevant images that were not included in the training (unseen). The proposed
low-shot classifier can be attached as a top layer to any pre-trained feature
extractor when constructing a Convolutional Neural Network.
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