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Autonomous acquisition of generic handheld objects in unstructured environments via sequential back-tracking for object recognition

机译:通过顺序回溯进行对象识别,在非结构化环境中自主获取通用手持对象

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Robots operating in human environments must have the ability to autonomously acquire object representations in order to perform object search and recognition tasks without human intervention. However, autonomous acquisition of object appearance model in an unstructured and cluttered human environment is a challenging task, since the object boundaries are unknown in prior. In this paper, we present a novel method to solve the problem of unknown object boundaries for handheld objects in an unstructured environment using robotic vision. The objective is to solve the problem of object segmentation without prior knowledge of the objects that human interacts with daily. In particular, we present a method that segments handheld objects by observing human-object interaction process, and performs incremental learning on the acquired models using SVM. The unknown object boundary is estimated using sequential back-tracking via exploitation of affine relationship of consecutive frames. The segmentation is achieved using identified optimal object boundaries, and the extracted models are used to perform future object search and recognition tasks.
机译:在人类环境中运行的机器人必须具有自主获取对象表示的能力,以便在无需人工干预的情况下执行对象搜索和识别任务。然而,在无结构且混乱的人类环境中自主获取对象外观模型是一项具有挑战性的任务,因为对象边界事先是未知的。在本文中,我们提出了一种新颖的方法,可以使用机器人视觉解决非结构化环境中手持对象的未知对象边界问题。目的是在无需事先了解人类每天与之交互的对象的情况下解决对象分割的问题。特别是,我们提出了一种通过观察人与对象的交互过程来分割手持对象的方法,并使用SVM对获取的模型进行增量学习。未知对象边界是通过利用连续帧的仿射关系使用顺序回溯来估计的。使用已识别的最佳对象边界实现分割,并且提取的模型用于执行将来的对象搜索和识别任务。

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