基于图像处理提高机器人抓取鲁棒性的方法

Kristóf Takács, R. Elek, T. Haidegger
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引用次数: 0

摘要

图像处理技术对机器人和工业自动化的大多数领域都产生了巨大的影响。实时方法通常用于复杂的自动化任务,协助决策或直接指导机器人和机械,而后处理通常用于系统和过程的回顾性评估。虽然基于人工智能的图像处理算法(通常依赖于神经网络)现在更常见,但“经典”图像处理方法也可以有效地用于大多数现代应用。本文重点研究了基于光流的图像处理,通过提出基于光流的解决方案来解决机器人辅助手术和食品加工等不同领域的现代挑战,证明了其效率。本文介绍的应用领域是基于一种智能机器人抓手,旨在支持肉类工业中的自动化机器人细胞。在实现的实时算法的帮助下,该夹持器能够进行滑移检测并安全夹持柔软、光滑的组织。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Processing-Based Methods to Improve the Robustness of Robotic Gripping
Image processing techniques are having a huge impact on most fields of robotics and industrial automation. Real-time methods are usually employed in complex automation tasks, assisting with decision making or directly guiding robots and machinery, while post-processing is usually used for retrospective assessment of systems and processes. While artificial intelligence-based image processing algorithms (relying usually on neural networks) are more common nowadays, “classical” image processing methods can also be used effectively for most modern applications. This paper focuses on optical flow-based image processing, proving its efficiency by presenting optical flow-based solutions for modern challenges in different fields of robotics, such as robot-assisted surgery and food processing. The application domain introduced in this paper is based on a smart robotic gripper designed to support automated robot cells in the meat industry. The gripper is capable of slip detection and secure gripping of soft, slippery tissues with the help of the implemented real-time algorithm.
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