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3D Model Multiple Semantic Automatic Annotation for Small Scale Labeled Data Set

机译:小型标签数据集的3D模型多语义自动注释

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Automatically assigning keywords to 3D models is of great interest as it allows one to retrieve, index, organize and understand large collections of 3D models. Most Methods require high sample size for training, so the data quality is in high demand. For small scale labeled data set, we propose a semi-supervised method to realize the 3D models multiple semantic annotation, which needs only a small amount of hand tagged information provided by users. The proposed technique utilizes low-level shape features and the keywords are assigned using a graphed-based label transfer mechanism to expand the training dataset. A weighted metric learning method is used to learn the distance measure from the extended dataset. Then multiple semantic annotation task can be completed on the learned distance measure. The proposed method outperforms the current state-of-the-art methods on the small scale labeled dataset and large unlabelled dataset. We believe that such measure will provide a strong platform to label 3D models when a small amount of labeled models were given.
机译:自动为3D模型分配关键字非常有趣,因为它允许人们检索,索引,组织和理解3D模型的大量集合。大多数方法需要大量样本进行训练,因此对数据质量有很高的要求。对于小规模的标注数据集,我们提出了一种半监督方法来实现3D模型的多语义标注,该方法仅需要用户提供的少量手工标注信息。所提出的技术利用了低级的形状特征,并且使用基于图形的标签传递机制来分配关键字以扩展训练数据集。加权度量学习方法用于从扩展数据集中学习距离度量。然后可以在学习到的距离度量上完成多个语义注释任务。在小规模标记数据集和大型未标记数据集上,所提出的方法优于当前的最新方法。我们相信,当少量标记的模型被提供时,这种措施将为标记3D模型提供一个强大的平台。

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