在手握探索过程中,从手的配置中识别物体

D. Faria, J. Lobo, J. Dias
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引用次数: 6

摘要

在这项工作中,我们使用手的配置和接触点在手的对象探索来识别被操纵的对象。与物体形状相关联的不同接触点可以在潜在空间中表示,并位于接触点空间中的低维非线性流形上,适合建模和识别。通过高斯混合模型将手部配置与特定对象关联并学习,然后通过在手部对象探索过程中识别手部配置,我们可以生成待识别候选对象的假设。这个过程从数据库中选择一组最可能的对象。在手握物体探索期间积累的接触点集(物体形状的部分体积)与从数据库中选择的集(最可能的候选物体)相匹配。结果提出了人类对物体的操纵,但这也可以应用于假手,虽然我们没有解决手的控制,只有物体识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying objects from hand configurations during in-hand exploration
In this work we use hand configuration and contact points during in-hand object exploration to identify the manipulated objects. Different contact points associated to an object shape can be represented in a latent space and lie on a lower dimensional non-linear manifold in the contact points space which is suitable for modelling and recognition. Associating and learning hand configurations to specific objects by means of Gaussian mixture models, later by identifying the hand configuration during the in-hand object exploration we can generate hypotheses of candidate objects to be identified. This process selects a set of the most probable objects from a database. The accumulated set of contact points (partial volume of the object shape) during the object in-hand exploration is matched to the set selected from the database (most probable candidate objects). Results are presented for human manipulation of objects, but this can also be applied to artificial hands, although we have not addressed the hand control, only the object identification.
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