Self-Supervised Robust Feature Matching Pipeline for Teach and Repeat Navigation

Sensors (Basel). 2022 Apr 7;22(8):2836. doi: 10.3390/s22082836.

Abstract

The performance of deep neural networks and the low costs of computational hardware has made computer vision a popular choice in many robotic systems. An attractive feature of deep-learned methods is their ability to cope with appearance changes caused by day-night cycles and seasonal variations. However, deep learning of neural networks typically relies on large numbers of hand-annotated images, which requires significant effort for data collection and annotation. We present a method that allows autonomous, self-supervised training of a neural network in visual teach-and-repeat (VT&R) tasks, where a mobile robot has to traverse a previously taught path repeatedly. Our method is based on a fusion of two image registration schemes: one based on a Siamese neural network and another on point-feature matching. As the robot traverses the taught paths, it uses the results of feature-based matching to train the neural network, which, in turn, provides coarse registration estimates to the feature matcher. We show that as the neural network gets trained, the accuracy and robustness of the navigation increases, making the robot capable of dealing with significant changes in the environment. This method can significantly reduce the data annotation efforts when designing new robotic systems or introducing robots into new environments. Moreover, the method provides annotated datasets that can be deployed in other navigation systems. To promote the reproducibility of the research presented herein, we provide our datasets, codes and trained models online.

Keywords: artificial neural network; computer vision; deep learning; long-term autonomy; mobile robot; self-supervised machine learning; visual teach and repeat navigation.

MeSH terms

  • Data Curation
  • Hand*
  • Neural Networks, Computer*
  • Reproducibility of Results
  • Research Design