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Active object recognition using vocabulary trees

机译:使用词汇树进行活动对象识别

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For mobile robots to perform certain tasks in human environments, fast and accurate object classification is essential. Actively exploring objects by changing viewpoints promises an increase in the accuracy of object classification. This paper presents an efficient feature-based active vision system for the recognition and verification of objects that are occluded, appear in cluttered scenes and may be visually similar to other objects present. This system is designed using a selector-observer framework where the selector is responsible for the automatic selection of the next best viewpoint and a Bayesian ‘observer’ updates the belief hypothesis and provides feedback. A new method for automatically selecting the ‘next best viewpoint’ is presented using vocabulary trees. It is used to calculate a weighting for each feature based on its perceived uniqueness, allowing the system to select the viewpoint with the greatest number of ‘unique’ features. The process is sped-up as new images are only captured at the ‘next best viewpoint’ and processed when the belief hypothesis of an object is below some pre-defined threshold. The system also provides a certainty measure for the objects identity. This system out performs randomly selecting a viewpoint as it processes far fewer viewpoints to recognise and verify objects in a scene.
机译:对于移动机器人要在人类环境中执行某些任务,快速准确的对象分类至关重要。通过改变视点积极地探索物体有望提高物体分类的准确性。本文提出了一种有效的基于特征的主动视觉系统,用于识别和验证被遮挡,出现在混乱场景中并且可能在视觉上类似于其他物体的物体。该系统是使用选择器-观察器框架设计的,其中选择器负责自动选择下一个最佳视点,而贝叶斯“观察器”则更新置信假设并提供反馈。介绍了一种使用词汇树自动选择“下一个最佳视点”的新方法。它用于根据每个特征的感知唯一性来计算权重,从而使系统能够选择具有最多“独特”特征的视点。由于仅在“下一个最佳视点”捕获新图像并在对象的置信假设低于某个预定阈值时进行处理,因此加快了该过程。该系统还提供对象身份的确定性度量。该系统执行随机选择的视点,因为它处理的视点要少得多,以识别和验证场景中的对象。

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