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Development of structured light based bin picking system using primitive models

机译:使用原始模型开发基于结构化光的垃圾箱拣选系统

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As a part of factory automation, bin picking systems perform pick-and-place tasks for randomly oriented parts from bins or boxes. Conventional bin picking systems can estimate the pose of an object only if the system has complete knowledge of the object (e.g., as a result of the geometric features of the object being provided by an image or a computer-aided design model). However, these systems require the features visible in an image to calculate the pose of an object, and they require additional setup time for an operator to register the reference model every time that the workpiece changed. In this article, we propose a structured light based bin picking system that makes use of primitive models that involve a small amount of prior knowledge. To obtain a reliable 3D range image for comparison with conventional systems, we use a structured light sensor with gray-coded patterns. With the 3D range image, the pose of the object is estimated with the use of primitive segmentation, rotational symmetric object modeling, and recognition. Through experiments that involve an industrial robot, we validated that the proposed method could be employed for a bin picking system.
机译:作为工厂自动化的一部分,垃圾箱拣选系统执行从垃圾箱或盒子中随机定向的零件的拾取和放置任务。仅当系统完全了解对象时(例如,由于由图像或计算机辅助设计模型提供的对象的几何特征),常规的垃圾收集系统才可以估计对象的姿势。但是,这些系统需要图像中可见的特征来计算对象的姿势,并且每次工件更换时,它们都需要额外的设置时间供操作员注册参考模型。在本文中,我们提出了一种结构化的基于光的箱式拣选系统,该系统利用了涉及少量先验知识的原始模型。为了获得可靠的3D范围图像以与常规系统进行比较,我们使用带有灰度编码图案的结构化光传感器。对于3D范围图像,可以使用原始分割,旋转对称对象建模和识别来估计对象的姿态。通过涉及工业机器人的实验,我们验证了所提出的方法可用于垃圾箱拣选系统。

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