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Unsupervised Feature Extraction from RGB-D Data for Object Classification: a Case Study on the YCB Object and Model Set

机译:从RGB-D数据中进行无监督的特征提取以进行对象分类:以YCB对象和模型集为例

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Object recognition has attracted increasing attention of researchers due to its numerous applications. For instance, it enables robots to carry out tasks like searching for an object in an unstructured environment or retrieving a tool for a human co-worker. In this study, we present a new technique for unsupervised feature extraction from red, green, blue, plus depth (RGB-D) data, which is then combined with several classifiers to perform object recognition. Specifically, our architecture segments all objects in a table top scene through an unsupervised clustering technique. It focuses separately on each object to extract both shape and visual features. We conduct experiments on a subset of 20 objects selected from the YCB object and model set and evaluate the performance of several classifiers. The most effective one achieves an accuracy of 99.7% when trained and tested on samples acquired with the same conditions (equipment and environment). Results degrade when the system is trained with YCB data and tested with data acquired from a Kinect sensor in online laboratorial implementation.
机译:对象识别由于其众多的应用而引起了研究人员的越来越多的关注。例如,它使机器人能够执行诸如在非结构化环境中搜索对象或为人类同事检索工具之类的任务。在这项研究中,我们提出了一种新技术,用于从红色,绿色,蓝色和深度(RGB-D)数据中进行无监督的特征提取,然后将其与多个分类器组合以执行对象识别。具体来说,我们的体系结构通过无监督的聚类技术对桌面场景中的所有对象进行了细分。它分别关注每个对象,以提取形状和视觉特征。我们对从YCB对象和模型集中选择的20个对象的子集进行实验,并评估几个分类器的性能。对在相同条件(设备和环境)下采集的样本进行培训和测试时,最有效的样本可达到99.7%的准确度。当使用YCB数据训练系统并使用在线实验室实施中从Kinect传感器获取的数据进行测试时,结果会降低。

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