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3D irregular object recognition for twist-lock handling system

机译:扭锁处理系统的3D不规则物体识别

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The handling of twist-locks has been a heavy burden for the container industry. There have been many efforts in developing automated twist-lock handling solutions. To address this challenge, we are developing a customized mobile manipulator for twist-lock grasping. The technical challenge is 3D irregular object recognition in unstructured port environment. In this paper, we use PCA and KPCA to do two-level object recognition only depending on depth information to determine the basic instance and pose information for twist-lock grasping. The extensive experiments are carried out to select the optimal recognition parameters, investigate the performance of PCA, KPCA and compare their performance. Since depth images are insensitive to changes in lighting conditions, the experimental results show that the proposed approach based on depth information is effective to address the issues and solve problems caused by rust and painting peeled off of twist-lock handling in unstructured port environment.
机译:扭锁的处理已成为集装箱行业的沉重负担。在开发自动扭锁处理解决方案方面已经进行了许多努力。为了应对这一挑战,我们正在开发一种用于扭锁抓取的定制移动机械手。技术挑战是在非结构化端口环境中进行3D不规则物体识别。在本文中,我们仅根据深度信息使用PCA和KPCA进行两级对象识别,以确定基本实例和姿势信息以进行扭锁抓紧。进行了广泛的实验,以选择最佳的识别参数,研究PCA,KPCA的性能并比较它们的性能。由于深度图像对光照条件的变化不敏感,因此实验结果表明,基于深度信息的方法可以有效解决非结构化港口环境中因旋锁处理而生锈和油漆剥落而引起的问题。

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