4.7 Article

Learn Fast, Segment Well: Fast Object Segmentation Learning on the iCub Robot

期刊

IEEE TRANSACTIONS ON ROBOTICS
卷 -, 期 -, 页码 -

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TRO.2022.3164331

关键词

Robots; Training; Pipelines; Feature extraction; Proposals; Image segmentation; Object detection; Efficient instance segmentation learning; humanoid robots; object detection; segmentation and categorization; visual learning

类别

资金

  1. ERA-NET CHIST-ERA
  2. Center for Brains, Minds and Machines (CBMM) - NSF STC [CCF-1231216]
  3. European Research Council [SLING 819789]
  4. AFOSR [FA9550-18-1-7009, FA9550-17-1-0390, BAA-AFRL-AFOSR-2016-0007]
  5. EU [NoMADS-DLV-777826]

向作者/读者索取更多资源

In this study, we focus on designing a fast instance segmentation learning pipeline for robotic applications. The pipeline utilizes a pre-trained CNN for feature extraction and fast-to-train Kernel-based classifiers to adapt to the presence of novel objects or different domains. Additionally, a training protocol is proposed to shorten the training time.
The visual system of a robot has different requirements depending on the application: it may require high accuracy or reliability, be constrained by limited resources or need fast adaptation to dynamically changing environments. In this work, we focus on the instance segmentation task and provide a comprehensive study of different techniques that allow adapting an object segmentation model in presence of novel objects or different domains. We propose a pipeline for fast instance segmentation learning designed for robotic applications where data come in stream. It is based on an hybrid method leveraging on a pre-trained CNN for feature extraction and fast-to-train Kernel-based classifiers. We also propose a training protocol that allows to shorten the training time by performing feature extraction during the data acquisition. We benchmark the proposed pipeline on two robotics datasets and we deploy it on a real robot, i.e. the iCub humanoid. To this aim, we adapt our method to an incremental setting in which novel objects are learned on-line by the robot. The code to reproduce the experiments is publicly available on GitHub.

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