3D Object Detection Based on Point Cloud Data

Dewi Mutiara Sari, Dadet Pramadihanto, Alfan Rizaldy Pratama, Bayu Sandi Marta
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引用次数: 2

Abstract

In the Industrial robotic, computer vision is an important part of the system. The popular object used in the industrial field is a 3D pipe. The problem that is currently being developed is how to detect an object. This research aims to estimate the object detection that is, in this case, is a 3D pipe in various lighting conditions. The camera used in this research is Time of Flight. The methods applied are Remove NaN data for Pre-processing, Random Sample Consensus (RANSAC) for Segmentation, Euclidean Distance for Clustering, and Viewpoint Feature Histogram (VFH) for the object detection. A study conducted on five different objects found that the system could detect each one with a success rate of 100% for the first object, 98.05 percent for the second object, 93.97 percent for the third object, 94 percent for the fourth object, and 99.48 percent for the fifth object. Overall, the system's accuracy in detecting the object is 97.1 percent when four different lighting conditions are applied to five different objects in total.
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基于点云数据的三维目标检测
在工业机器人中,计算机视觉是系统的重要组成部分。工业领域常用的对象是3D管道。目前正在开发的问题是如何检测一个物体。本研究的目的是估计物体的检测,在本例中,是一个三维管道在各种光照条件下。本研究使用的相机是Time of Flight。采用去除NaN数据进行预处理,随机样本一致性(RANSAC)进行分割,欧式距离(Euclidean Distance)进行聚类,视点特征直方图(VFH)进行目标检测。对5个不同的物体进行研究的结果显示,该系统对第一个物体的检测成功率为100%,对第二个物体的检测成功率为98.05%,对第三个物体的检测成功率为93.97%,对第四个物体的检测成功率为94%,对第五个物体的检测成功率为99.48%。总的来说,当四种不同的照明条件应用于五个不同的物体时,该系统检测物体的准确率为97.1%。
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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31
审稿时长
10 weeks
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