基于多类高斯过程分类的不确定性户外场景语义分类

Rohan Paul, Rudolph Triebel, D. Rus, P. Newman
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引用次数: 31

摘要

提出了一种基于监督的多类高斯过程(GP)分类的三维点云数据语义分类方法。与其他方法相比,特别是支持向量机,这可能是迄今为止这项任务中最常用的方法,gp的主要优点是提供关于结果类标签的信息不确定性估计。正如我们在实验中所展示的那样,这些不确定性估计可以通过忽略不确定的类标签来改进分类,或者更重要的是,它们可以作为训练数据中某些类的代表性不足的指示。这意味着GP分类器更适合终身学习框架,在终身学习框架中,并不是所有的类都是最初表示的,而是在机器人操作期间到达新的训练数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semantic categorization of outdoor scenes with uncertainty estimates using multi-class gaussian process classification
This paper presents a novel semantic categorization method for 3D point cloud data using supervised, multiclass Gaussian Process (GP) classification. In contrast to other approaches, and particularly Support Vector Machines, which probably are the most used method for this task to date, GPs have the major advantage of providing informative uncertainty estimates about the resulting class labels. As we show in experiments, these uncertainty estimates can either be used to improve the classification by neglecting uncertain class labels or - more importantly - they can serve as an indication of the under-representation of certain classes in the training data. This means that GP classifiers are much better suited in a lifelong learning framework, where not all classes are represented initially, but instead new training data arrives during the operation of the robot.
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