Getting more from the scene for autonomous navigation: demo III XUV program

M. Rosemblum, B. Gothard, J. Jaczkowski
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引用次数: 0

Abstract

The authors have applied a systems philosophy to the computer vision problem, and they have designed a system called O-NAV (Object NAVigation) that can harness all of the computer vision technology to date, and combine these approaches into one integrated system. In O-NAV, no one sub-component bears the burden of the problem. In other words, it is not expected that algorithms alone will solve the computer vision problem. If we choose effective sensing that inherently performs some level of scene discrimination at the phenomenology level, algorithms will be handed a partially analyzed scene before they ever encounter the raw image data. The algorithms have been designed to exploit an optimized processing hardware infrastructure, to maximize computation for the "real-time" application of autonomous robot navigation.
从现场获得更多的自主导航:演示III XUV程序
作者将系统哲学应用于计算机视觉问题,他们设计了一个称为O-NAV(目标导航)的系统,该系统可以利用迄今为止所有的计算机视觉技术,并将这些方法组合成一个集成系统。在O-NAV中,没有一个子组件承担问题的负担。换句话说,不能指望仅靠算法就能解决计算机视觉问题。如果我们选择在现象学层面上固有地执行某种程度的场景识别的有效传感,算法将在遇到原始图像数据之前获得部分分析过的场景。该算法旨在利用优化的处理硬件基础设施,最大限度地提高自主机器人导航“实时”应用的计算能力。
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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