Multi-class fruit classification using RGB-D data for indoor robots

Lixing Jiang, A. Koch, S. Scherer, A. Zell
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引用次数: 21

Abstract

In this paper we present an effective and robust system to classify fruits under varying pose and lighting conditions tailored for an object recognition system on a mobile platform. Therefore, we present results on the effectiveness of our underlying segmentation method using RGB as well as depth cues for the specific technical setup of our robot. A combination of RGB low-level visual feature descriptors and 3D geometric properties is used to retrieve complementary object information for the classification task. The unified approach is validated using two multi-class RGB-D fruit categorization datasets. Experimental results compare different feature sets and classification methods and highlight the effectiveness of the proposed features using a Random Forest classifier.
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基于RGB-D数据的室内机器人多类水果分类
在本文中,我们提出了一个有效的和鲁棒的系统来分类水果在不同的姿态和光照条件下,为移动平台上的目标识别系统量身定制。因此,我们展示了我们使用RGB的底层分割方法的有效性的结果,以及我们机器人的特定技术设置的深度线索。结合RGB低级视觉特征描述符和3D几何属性来检索分类任务的互补对象信息。使用两个多类RGB-D水果分类数据集对统一方法进行了验证。实验结果比较了不同的特征集和分类方法,并突出了使用随机森林分类器提出的特征的有效性。
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