Fast and Automatic Object Registration for Human-Robot Collaboration in Industrial Manufacturing

Manuela Geiß, Martin Baresch, Georgios C. Chasparis, Edwin Schweiger, Nico Teringl, Michaela Zwick
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引用次数: 2

Abstract

We present an end-to-end framework for fast retraining of object detection models in human-robot-collaboration. Our Faster R-CNN based setup covers the whole workflow of automatic image generation and labeling, model retraining on-site as well as inference on a FPGA edge device. The intervention of a human operator reduces to providing the new object together with its label and starting the training process. Moreover, we present a new loss, the intraspread-objectosphere loss, to tackle the problem of open world recognition. Though it fails to completely solve the problem, it significantly reduces the number of false positive detections of unknown objects.
工业制造中人机协作的快速自动目标配准
我们提出了一个端到端框架,用于在人机协作中快速再训练目标检测模型。我们基于更快R-CNN的设置涵盖了自动图像生成和标记、现场模型再训练以及在FPGA边缘设备上进行推理的整个工作流程。人类操作员的干预减少到提供新对象及其标签并开始训练过程。此外,为了解决开放世界的识别问题,我们提出了一种新的损失,即扩展对象域内损失。虽然它不能完全解决问题,但它大大减少了对未知物体的误报检测。
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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