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Papers/Train Till You Drop: Towards Stable and Robust Source-free...

Train Till You Drop: Towards Stable and Robust Source-free Unsupervised 3D Domain Adaptation

Björn Michele, Alexandre Boulch, Tuan-Hung Vu, Gilles Puy, Renaud Marlet, Nicolas Courty

2024-09-06Source-Free Domain AdaptationSemantic Segmentation3D Source-Free Domain Adaptation3D Semantic SegmentationUnsupervised Domain AdaptationDomain Adaptation
PaperPDFCode(official)

Abstract

We tackle the challenging problem of source-free unsupervised domain adaptation (SFUDA) for 3D semantic segmentation. It amounts to performing domain adaptation on an unlabeled target domain without any access to source data; the available information is a model trained to achieve good performance on the source domain. A common issue with existing SFUDA approaches is that performance degrades after some training time, which is a by product of an under-constrained and ill-posed problem. We discuss two strategies to alleviate this issue. First, we propose a sensible way to regularize the learning problem. Second, we introduce a novel criterion based on agreement with a reference model. It is used (1) to stop the training when appropriate and (2) as validator to select hyperparameters without any knowledge on the target domain. Our contributions are easy to implement and readily amenable for all SFUDA methods, ensuring stable improvements over all baselines. We validate our findings on various 3D lidar settings, achieving state-of-the-art performance. The project repository (with code) is: github.com/valeoai/TTYD.

Results

TaskDatasetMetricValueModel
Domain AdaptationSynLiDAR-to-SemanticPOSSmIoU39.1TTYD
Domain AdaptationnuScenes-to-SemanticKITTImIoU45.4TTYD
Domain AdaptationnuScenes-to-PandasetmIoU65.7TTYD
Domain AdaptationSynLiDAR-to-SemanticKITTImIoU32.4TTYD
Domain AdaptationnuScenes-to-SemanticPOSSmIoU64.5TTYD
Domain AdaptationnuScenes-to-Waymo Open DatasetmIoU55.5TTYD
Source-Free Domain AdaptationSynLiDAR-to-SemanticPOSSmIoU39.1TTYD
Source-Free Domain AdaptationnuScenes-to-SemanticKITTImIoU45.4TTYD
Source-Free Domain AdaptationnuScenes-to-PandasetmIoU65.7TTYD
Source-Free Domain AdaptationSynLiDAR-to-SemanticKITTImIoU32.4TTYD
Source-Free Domain AdaptationnuScenes-to-SemanticPOSSmIoU64.5TTYD
Source-Free Domain AdaptationnuScenes-to-Waymo Open DatasetmIoU55.5TTYD

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