MEAL: Manifold Embedding-based Active Learning
- URL: http://arxiv.org/abs/2106.11858v1
- Date: Tue, 22 Jun 2021 15:22:56 GMT
- Title: MEAL: Manifold Embedding-based Active Learning
- Authors: Deepthi Sreenivasaiah, Thomas Wollmann
- Abstract summary: Active learning helps learning from small amounts of data by suggesting the most promising samples for labeling.
We propose a new pool-based method for active learning, which proposes promising image regions, in each acquisition step.
We find that our active learning method achieves better performance on CamVid compared to other methods, while on Cityscapes, the performance lift was negligible.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: Image segmentation is a common and challenging task in autonomous driving.
Availability of sufficient pixel-level annotations for the training data is a
hurdle. Active learning helps learning from small amounts of data by suggesting
the most promising samples for labeling. In this work, we propose a new
pool-based method for active learning, which proposes promising image regions,
in each acquisition step. The problem is framed in an exploration-exploitation
framework by combining an embedding based on Uniform Manifold Approximation to
model representativeness with entropy as uncertainty measure to model
informativeness. We applied our proposed method to the challenging autonomous
driving data sets CamVid and Cityscapes and performed a quantitative comparison
with state-of-the-art methods. We find that our active learning method achieves
better performance on CamVid compared to other methods, while on Cityscapes,
the performance lift was negligible.
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