稀疏多视图帧运动视频中物体的交互式三维标注

Q1 Social Sciences
Kotaro Oomori, Wataru Kawabe, Fabrice Matulic, Takeo Igarashi, Keita Higuchi
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引用次数: 0

摘要

分割和确定RGB视频中感兴趣对象的3D边界框对于增强现实、导航和机器人等各种应用来说是一项重要的任务。监督机器学习技术通常用于此,但它们需要训练数据集:由人类注释者使用标签工具手动定义的带有相关3D边界框的图像集。然而,使用传统的3D操作工具在2D界面上精确放置3D边界框是很困难的。为了减轻这种负担,我们提出了一种新的技术,通过简单地在从不同角度显示对象的视频序列的多个帧上绘制2D边界矩形,可以创建3D边界框。该方法利用从视频中重建的密集三维点云,通过对二维矩形的反投影选择目标,计算出紧密拟合的三维边界框。我们展示了我们的界面的具体应用场景,包括训练数据集的创建和编辑3D空间和视频。与传统的三维标注工具进行了比较,结果表明我们的方法具有更高的精度。我们还确认用我们的界面创建的边界框具有较低的方差,可能产生更一致的标签和数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Interactive 3D Annotation of Objects in Moving Videos from Sparse Multi-view Frames
Segmenting and determining the 3D bounding boxes of objects of interest in RGB videos is an important task for a variety of applications such as augmented reality, navigation, and robotics. Supervised machine learning techniques are commonly used for this, but they need training datasets: sets of images with associated 3D bounding boxes manually defined by human annotators using a labelling tool. However, precisely placing 3D bounding boxes can be difficult using conventional 3D manipulation tools on a 2D interface. To alleviate that burden, we propose a novel technique with which 3D bounding boxes can be created by simply drawing 2D bounding rectangles on multiple frames of a video sequence showing the object from different angles. The method uses reconstructed dense 3D point clouds from the video and computes tightly fitting 3D bounding boxes of desired objects selected by back-projecting the 2D rectangles. We show concrete application scenarios of our interface, including training dataset creation and editing 3D spaces and videos. An evaluation comparing our technique with a conventional 3D annotation tool shows that our method results in higher accuracy. We also confirm that the bounding boxes created with our interface have a lower variance, likely yielding more consistent labels and datasets.
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来源期刊
Proceedings of the ACM on Human-Computer Interaction
Proceedings of the ACM on Human-Computer Interaction Social Sciences-Social Sciences (miscellaneous)
CiteScore
5.90
自引率
0.00%
发文量
257
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