Knowledge Distillation Methods for Efficient Unsupervised Adaptation Across Multiple Domains
Le Thanh Nguyen-Meidine, Atif Belal, Madhu Kiran, Jose Dolz,, Louis-Antoine Blais-Morin, Eric Granger

TL;DR
This paper introduces a progressive knowledge distillation method for unsupervised domain adaptation of CNNs, enabling models to adapt and compress across multiple target domains with improved accuracy and efficiency.
Contribution
The paper presents a novel progressive knowledge distillation approach for simultaneous unsupervised domain adaptation and model compression across multiple domains.
Findings
Achieves higher accuracy across target domains compared to state-of-the-art methods.
Requires comparable or lower CNN complexity while maintaining performance.
Effective for both single-target and multi-target domain adaptation scenarios.
Abstract
Beyond the complexity of CNNs that require training on large annotated datasets, the domain shift between design and operational data has limited the adoption of CNNs in many real-world applications. For instance, in person re-identification, videos are captured over a distributed set of cameras with non-overlapping viewpoints. The shift between the source (e.g. lab setting) and target (e.g. cameras) domains may lead to a significant decline in recognition accuracy. Additionally, state-of-the-art CNNs may not be suitable for such real-time applications given their computational requirements. Although several techniques have recently been proposed to address domain shift problems through unsupervised domain adaptation (UDA), or to accelerate/compress CNNs through knowledge distillation (KD), we seek to simultaneously adapt and compress CNNs to generalize well across multiple target…
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Taxonomy
MethodsKnowledge Distillation
