Object detection plays a deep role in visual systems by identifying instances for downstream algorithms. In industrial scenarios, however, a slight change in manufacturing systems would lead to costly data re-collection and human annotation processes to re-train models. Existing solutions such as semi-supervised and few-shot methods either rely on numerous human annotations or suffer low performance. In this work, we explore a novel object detector based on interactive perception (ODIP), which can be adapted to novel domains in an automated manner. By interacting with a grasping system, ODIP accumulates visual observations of novel objects, learning to identify previously unseen instances without human-annotated data. Extensive experiments show ODIP outperforms both the generic object detector and state-of-the-art few-shot object detector fine-tuned in traditional manners. A demo video is provided to further illustrate the idea.
翻译:在工业场景中,如果制造系统稍有变化,就会导致数据重新收集费用高昂,再培训模型的人类批注过程费用高昂。现有的解决方案,例如半监督的和少发的方法,要么依靠许多人的描述,要么低效。在这项工作中,我们探索基于交互感知的新颖的物体探测器(ODIP),该探测器可以自动地适应新的领域。通过与捕捉系统的互动,ODIP积累了对新物体的视觉观测,学会在没有人类附加说明数据的情况下识别以前未见的事例。广泛的实验显示ODIP比通用物体探测器和最先进的、最先进的、最先进的、以传统方式微量的物体探测器都优化。提供了演示视频,以进一步说明这一想法。