In order to operate in human environments, a robot's semantic perception has to overcome open-world challenges such as novel objects and domain gaps. Autonomous deployment to such environments therefore requires robots to update their knowledge and learn without supervision. We investigate how a robot can autonomously discover novel semantic classes and improve accuracy on known classes when exploring an unknown environment. To this end, we develop a general framework for mapping and clustering that we then use to generate a self-supervised learning signal to update a semantic segmentation model. In particular, we show how clustering parameters can be optimized during deployment and that fusion of multiple observation modalities improves novel object discovery compared to prior work.
翻译:为了在人类环境中运作,机器人的语义感必须克服开放世界的挑战,如新物体和域间差距。 因此,在这种环境中的自主部署要求机器人更新知识和学习而不受监督。 我们调查机器人如何在探索未知环境时自主发现新语义类,提高已知阶级的准确性。 为此,我们开发了一个测绘和集群总框架,然后用来生成一个自监督的学习信号,以更新语义分化模型。 特别是,我们展示了在部署期间如何优化组合参数,以及多种观测模式的结合可以改善与先前工作相比的新文物发现。