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首页> 外文期刊>Engineering Applications of Artificial Intelligence >Learning RGB-D descriptors of garment parts for informed robot grasping
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Learning RGB-D descriptors of garment parts for informed robot grasping

机译:学习服装零件的RGB-D描述子,以进行有意识的机器人抓取

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摘要

Robotic handling of textile objects in household environments is an emerging application that has recently received considerable attention thanks to the development of domestic robots. Most current approaches follow a multiple re-grasp strategy for this purpose, in which clothes are sequentially grasped from different points until one of them yields a desired configuration. In this work we propose a vision-based method, built on the Bag of Visual Words approach, that combines appearance and 3D information to detect parts suitable for grasping in clothes, even when they are highly wrinkled. We also contribute a new, annotated, garment part dataset that can be used for benchmarking classification, part detection, and segmentation algorithms. The dataset is used to evaluate our approach and several state-of-the-art 3D descriptors for the task of garment part detection. Results indicate that appearance is a reliable source of information, but that augmenting it with 3D information can help the method perform better with new clothing items.
机译:家用环境中对纺织品的机器人处理是一种新兴的应用,由于家用机器人的发展,近来受到了广泛的关注。为此目的,大多数当前方法遵循多次重新抓紧策略,在该策略中,从不同的位置顺序抓紧衣服,直到其中之一产生所需的构造为止。在这项工作中,我们提出了一种基于视觉的方法,该方法建立在“视觉单词袋”方法的基础上,该方法结合了外观和3D信息以检测适合抓握在衣服上的零件,即使它们皱得很厉害。我们还提供了一个新的带注释的服装零件数据集,该数据集可用于基准分类,零件检测和分段算法。该数据集用于评估我们的方法和服装零件检测任务的几个最新3D描述符。结果表明外观是可靠的信息来源,但是通过3D信息对其进行扩充可以帮助该方法在新的服装上表现更好。

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