Application of semi-supervised learning with Voronoi Graph for place classification

Lei Shi, S. Kodagoda, G. Dissanayake
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引用次数: 16

Abstract

Representation of spaces including both geometric and semantic information enables a robot to perform high-level tasks in complex environments. Therefore, in recent years identifying and semantically labeling the environments based on onboard sensors has become an important competency for mobile robots. Supervised learning algorithms have been extensively used for this purpose with SVM-based solutions showing good generalization properties. The CRF-based approaches take the advantage of connectivity information of samples thereby provide a mechanism to capture complex dependencies. Blending the complementary strengths of Support Vector Machine (SVM) and Conditional Random Field (CRF), there have been algorithms to exploit the advantages of both to enhance the overall accuracy of place classification in indoor environments. However, experiments show that none of the above approaches deal well with diversified testing data. In this paper, we focus mainly on the generalization ability of the model and propose a semi-supervised learning strategy, which essentially improves the performance of the system. Experiments have been carried out on six real-world maps from different universities around the world and the results from rigorous testing demonstrate the feasibility of the approach.
Voronoi图半监督学习在地点分类中的应用
包含几何和语义信息的空间表示使机器人能够在复杂环境中执行高级任务。因此,近年来,基于车载传感器的环境识别和语义标注已经成为移动机器人的一项重要能力。监督学习算法已被广泛用于此目的,基于svm的解决方案显示出良好的泛化特性。基于crf的方法利用了样本的连通性信息,从而提供了一种捕获复杂依赖关系的机制。结合支持向量机(SVM)和条件随机场(CRF)的互补优势,已有算法利用两者的优势来提高室内环境中位置分类的整体精度。然而,实验表明,上述方法都不能很好地处理多样化的测试数据。在本文中,我们主要关注模型的泛化能力,并提出了一种半监督学习策略,从本质上提高了系统的性能。实验在世界各地不同大学的六张真实地图上进行,严格测试的结果证明了这种方法的可行性。
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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