3D object classification for mobile robots in home-environments using web-data

W. Wohlkinger, M. Vincze
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引用次数: 23

Abstract

Building knowledge for robots can be tedious, especially if focused on object class recognition in home environments where hundreds of everyday-objects - some with a huge intra class variability - can be found. Object recognition and especially object class recognition is a key capability in home-robotics. Achieving deployable results from state-of-.the-art algorithms is not yet achievable when the number of classes increases and near real-time is the goal. Hence, we propose to exploit contextual knowledge by using sensor and hardware constraints from the robotics and home domains and show how to use the internet as a source for obtaining the required data for building a fast, vision based object categorization system for robotics. In this paper, we give an overview of the available constraints and advantages of using a robot to set priors for object classification and propose a system which covers automated model acquisition from the web, domain simulation, descriptor generation, 3D data processing from dense stereo and classification for a - not too far - robot scenario in an internet-connected home-environment. In this work we show that this system is capable of being used in home robotics in a fast and robust way for recognition of object classes commonly found in such environments, including but not limited to chairs and mugs. We also discuss challenges and missing pieces in the framework and useful extensions.
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基于网络数据的家庭环境下移动机器人三维目标分类
为机器人构建知识可能是乏味的,特别是如果专注于在家庭环境中识别物体类别,在家庭环境中可以找到数百个日常物体-其中一些具有巨大的类内可变性。物体识别,特别是物体类别识别是家庭机器人的关键技术。从状态中获得可部署的结果。当类的数量增加并且接近实时是目标时,最先进的算法还无法实现。因此,我们建议利用机器人和家庭领域的传感器和硬件约束来利用上下文知识,并展示如何使用互联网作为获取所需数据的来源,以构建一个快速的、基于视觉的机器人对象分类系统。在本文中,我们概述了使用机器人设置先验对象分类的可用约束和优点,并提出了一个系统,该系统涵盖了从网络中自动获取模型,领域仿真,描述符生成,密集立体三维数据处理以及在互联网连接的家庭环境中不太遥远的机器人场景分类。在这项工作中,我们证明了该系统能够以一种快速而稳健的方式用于家庭机器人中,用于识别此类环境中常见的对象类别,包括但不限于椅子和马克杯。我们还讨论了框架中的挑战和缺失部分以及有用的扩展。
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