利用RGB和LiDAR的自我约束进行无监督训练

Andreas Hubert, Janis Jung, Konrad Doll
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引用次数: 0

摘要

单幅图像上的手部检测是一个深入研究的领域,目前已经有了合理的解决方案。然而,在特定领域内对检测器进行微调仍然是一项繁琐的任务。无监督的训练过程可以减少创建特定领域数据集和模型所需的工作量。此外,同一物理空间的不同模态,这里的颜色和深度数据,以不同的方式表示对象,从而允许利用。我们引入并评估了一个培训管道,以无监督的方式利用这些模式。通过为数据源选择合适的自我强加约束,可以省略监督。我们将我们的训练结果与地面真值训练结果进行了比较,并表明使用这些模态,可以在没有单个注释的情况下扩展域,例如用于检测有色手套。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploiting Self-Imposed Constraints on RGB and LiDAR for Unsupervised Training
Hand detection on single images is an intensively researched area, and reasonable solutions are already available today. However, fine-tuning detectors within a specific domain remains a tedious task. Unsupervised training procedures can reduce the effort required to create domain-specific datasets and models. In addition, different modalities of the same physical space, here color and depth data, represent objects differently and thus allow for exploitation. We introduce and evaluate a training pipeline to exploit the modalities in an unsupervised manner. The supervision is omitted by choosing suitable self-imposed constraints for the data source. We compare our training results with ground truth training results and show that with these modalities, the domain can be extended without a single annotation, e.g., for detecting colored gloves.
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