Deep Active Ensemble Sampling For Image Classification
Salman Mohamadi, Gianfranco Doretto, Donald A. Adjeroh

TL;DR
This paper introduces a novel active learning framework combining uncertainty and geometric methods with semi/self-supervised techniques, significantly improving data efficiency and accuracy in deep image classification tasks.
Contribution
It presents an integrated approach for efficient exploration/exploitation in active learning and a training protocol leveraging semi/self-supervised learning, advancing deep active learning methods.
Findings
Achieves performance comparable to supervised learning on multiple datasets.
Provides a tunable trade-off between computational cost and accuracy.
Establishes a new baseline in deep active learning performance.
Abstract
Conventional active learning (AL) frameworks aim to reduce the cost of data annotation by actively requesting the labeling for the most informative data points. However, introducing AL to data hungry deep learning algorithms has been a challenge. Some proposed approaches include uncertainty-based techniques, geometric methods, implicit combination of uncertainty-based and geometric approaches, and more recently, frameworks based on semi/self supervised techniques. In this paper, we address two specific problems in this area. The first is the need for efficient exploitation/exploration trade-off in sample selection in AL. For this, we present an innovative integration of recent progress in both uncertainty-based and geometric frameworks to enable an efficient exploration/exploitation trade-off in sample selection strategy. To this end, we build on a computationally efficient approximate…
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Taxonomy
TopicsMachine Learning and Algorithms · Anomaly Detection Techniques and Applications · Fault Detection and Control Systems
