Disambiguation of One-Shot Visual Classification Tasks: A Simplex-Based
Approach
- URL: http://arxiv.org/abs/2301.06372v1
- Date: Mon, 16 Jan 2023 11:37:05 GMT
- Title: Disambiguation of One-Shot Visual Classification Tasks: A Simplex-Based
Approach
- Authors: Yassir Bendou, Lucas Drumetz, Vincent Gripon, Giulia Lioi and Bastien
Pasdeloup
- Abstract summary: We present a strategy which aims at detecting the presence of multiple objects in a given shot.
This strategy is based on identifying the corners of a simplex in a high dimensional space.
We show the ability of the proposed method to slightly, yet statistically significantly, improve accuracy in extreme settings.
- Score: 8.436437583394998
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The field of visual few-shot classification aims at transferring the
state-of-the-art performance of deep learning visual systems onto tasks where
only a very limited number of training samples are available. The main solution
consists in training a feature extractor using a large and diverse dataset to
be applied to the considered few-shot task. Thanks to the encoded priors in the
feature extractors, classification tasks with as little as one example (or
"shot'') for each class can be solved with high accuracy, even when the shots
display individual features not representative of their classes. Yet, the
problem becomes more complicated when some of the given shots display multiple
objects. In this paper, we present a strategy which aims at detecting the
presence of multiple and previously unseen objects in a given shot. This
methodology is based on identifying the corners of a simplex in a high
dimensional space. We introduce an optimization routine and showcase its
ability to successfully detect multiple (previously unseen) objects in raw
images. Then, we introduce a downstream classifier meant to exploit the
presence of multiple objects to improve the performance of few-shot
classification, in the case of extreme settings where only one shot is given
for its class. Using standard benchmarks of the field, we show the ability of
the proposed method to slightly, yet statistically significantly, improve
accuracy in these settings.
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