MEnsA: Mix-up Ensemble Average for Unsupervised Multi Target Domain
Adaptation on 3D Point Clouds
- URL: http://arxiv.org/abs/2304.01554v2
- Date: Thu, 6 Apr 2023 00:14:29 GMT
- Title: MEnsA: Mix-up Ensemble Average for Unsupervised Multi Target Domain
Adaptation on 3D Point Clouds
- Authors: Ashish Sinha, Jonghyun Choi
- Abstract summary: Unlabelled domain adaptation (UDA) addresses the problem of distribution shift between the unsupervised target domain and labelled source domain.
We propose to mix the feature representations from all domains together to achieve better domain adaptation performance by an ensemble average.
With the mixed representation, we use a domain classifier to improve at distinguishing the feature representations of source domain from those of target domains in a shared latent space.
- Score: 9.568577396815602
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Unsupervised domain adaptation (UDA) addresses the problem of distribution
shift between the unlabelled target domain and labelled source domain. While
the single target domain adaptation (STDA) is well studied in the literature
for both 2D and 3D vision tasks, multi-target domain adaptation (MTDA) is
barely explored for 3D data despite its wide real-world applications such as
autonomous driving systems for various geographical and climatic conditions. We
establish an MTDA baseline for 3D point cloud data by proposing to mix the
feature representations from all domains together to achieve better domain
adaptation performance by an ensemble average, which we call Mixup Ensemble
Average or MEnsA. With the mixed representation, we use a domain classifier to
improve at distinguishing the feature representations of source domain from
those of target domains in a shared latent space. In empirical validations on
the challenging PointDA-10 dataset, we showcase a clear benefit of our simple
method over previous unsupervised STDA and MTDA methods by large margins (up to
17.10% and 4.76% on averaged over all domain shifts).
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