Seeking Similarities over Differences: Similarity-based Domain Alignment
for Adaptive Object Detection
- URL: http://arxiv.org/abs/2110.01428v1
- Date: Mon, 4 Oct 2021 13:09:56 GMT
- Title: Seeking Similarities over Differences: Similarity-based Domain Alignment
for Adaptive Object Detection
- Authors: Farzaneh Rezaeianaran, Rakshith Shetty, Rahaf Aljundi, Daniel Olmeda
Reino, Shanshan Zhang, Bernt Schiele
- Abstract summary: We propose a framework that generalizes the components commonly used by Unsupervised Domain Adaptation (UDA) algorithms for detection.
Specifically, we propose a novel UDA algorithm, ViSGA, that leverages the best design choices and introduces a simple but effective method to aggregate features at instance-level.
We show that both similarity-based grouping and adversarial training allows our model to focus on coarsely aligning feature groups, without being forced to match all instances across loosely aligned domains.
- Score: 86.98573522894961
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In order to robustly deploy object detectors across a wide range of
scenarios, they should be adaptable to shifts in the input distribution without
the need to constantly annotate new data. This has motivated research in
Unsupervised Domain Adaptation (UDA) algorithms for detection. UDA methods
learn to adapt from labeled source domains to unlabeled target domains, by
inducing alignment between detector features from source and target domains.
Yet, there is no consensus on what features to align and how to do the
alignment. In our work, we propose a framework that generalizes the different
components commonly used by UDA methods laying the ground for an in-depth
analysis of the UDA design space. Specifically, we propose a novel UDA
algorithm, ViSGA, a direct implementation of our framework, that leverages the
best design choices and introduces a simple but effective method to aggregate
features at instance-level based on visual similarity before inducing group
alignment via adversarial training. We show that both similarity-based grouping
and adversarial training allows our model to focus on coarsely aligning feature
groups, without being forced to match all instances across loosely aligned
domains. Finally, we examine the applicability of ViSGA to the setting where
labeled data are gathered from different sources. Experiments show that not
only our method outperforms previous single-source approaches on Sim2Real and
Adverse Weather, but also generalizes well to the multi-source setting.
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