Multiple Hypothesis for Object Class Disambiguation from Multiple Observations

Susana Brandão, M. Veloso, J. Costeira
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引用次数: 5

Abstract

The current paper addresses the problem of object identification from multiple3D partial views, collected from different view angles with the objective of disambiguating between similar objects. We assume a mobile robot equipped with a depth sensor that autonomously collects observations from an object from different positions, with no previous known pattern. The challenge is to efficiently combine the set of observations into a single classification. We approach the problem with a multiple hypothesis filter that allows to combine information from a sequence of observations given the robot movement. We further innovate by off-line learning neighborhoods between possible hypothesis based on the similarity of observations. Such neighborhoods translate directly the ambiguity between objects, and allow to transfer the knowledge of one object to the other. In this paper we introduce our algorithm, Multiple Hypothesis for Object Class Disambiguation from Multiple Observations, and evaluate its accuracy and efficiency.
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基于多重观测的对象类消歧的多重假设
本文解决了从不同视角收集的多三维局部视图中识别物体的问题,目的是消除相似物体之间的歧义。我们假设一个移动机器人配备了深度传感器,可以自主地从不同位置收集物体的观测数据,没有先前已知的模式。挑战在于如何有效地将一组观察结果合并到一个分类中。我们用一个多假设过滤器来解决这个问题,该过滤器允许从给定机器人运动的一系列观察中组合信息。我们通过离线学习基于观察相似性的可能假设之间的邻域来进一步创新。这样的邻域直接翻译了物体之间的模糊性,并允许将一个物体的知识转移到另一个物体。本文介绍了一种基于多重观测的多假设目标类消歧算法,并对其准确性和效率进行了评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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