选择性三维扫描的生长神经气体网络评价

A. Crétu, E. Petriu, P. Payeur
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引用次数: 21

摘要

本文解决了先进机器人应用的智能传感问题,并且是我们在自动选择固定和移动传感器观察区域的创新方法领域的研究的延续,以便在没有人类指导的情况下仅收集相关测量值。本文提出的不断增长的神经气体网络解决方案可以自适应地从稀疏收集的3D测量数据中选择感兴趣的区域进行进一步采样,与之前提出的神经气体解决方案相比,在用户干预、结果扫描大小和训练时间方面具有几个优势。在选择性视觉采样的背景下,给出了实验结果和对比分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of growing neural gas networks for selective 3D scanning
This paper addresses the issue of intelligent sensing for advanced robotic applications and is a continuation of our research in the area of innovative approaches for automatic selection of regions of observation for fixed and mobile sensors to collect only relevant measurements without human guidance. The growing neural gas network solution proposed here for adaptively selecting regions of interest for further sampling from a cloud of sparsely collected 3D measurements provides several advantages over the previously proposed neural gas solution in terms of user intervention, size of resulting scan and training time. Experimental results and comparative analysis are presented in the context of selective vision sampling.
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