Factors of Influence for Transfer Learning across Diverse Appearance Domains and Task Types
Thomas Mensink, Jasper Uijlings, Alina Kuznetsova, Michael Gygli,, Vittorio Ferrari

TL;DR
This paper systematically investigates how transfer learning performance varies across different image domains and task types in computer vision, providing practical guidelines for effective transfer learning strategies.
Contribution
It conducts over 2000 experiments across diverse domains and tasks, revealing key factors influencing transfer learning success and offering concrete recommendations.
Findings
Image domain is the most critical factor for positive transfer.
Including the target domain in the source dataset improves transfer performance.
Transfer across different task types can be beneficial but depends on specific task compatibility.
Abstract
Transfer learning enables to re-use knowledge learned on a source task to help learning a target task. A simple form of transfer learning is common in current state-of-the-art computer vision models, i.e. pre-training a model for image classification on the ILSVRC dataset, and then fine-tune on any target task. However, previous systematic studies of transfer learning have been limited and the circumstances in which it is expected to work are not fully understood. In this paper we carry out an extensive experimental exploration of transfer learning across vastly different image domains (consumer photos, autonomous driving, aerial imagery, underwater, indoor scenes, synthetic, close-ups) and task types (semantic segmentation, object detection, depth estimation, keypoint detection). Importantly, these are all complex, structured output tasks types relevant to modern computer vision…
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