Monocular Robot Navigation with Self-Supervised Pretrained Vision Transformers

Monocular Robot Navigation
with Self-Supervised Pretrained Vision Transformers

Duckietown’s infrastructure is used by researchers worldwide to push the boundaries of knowledge. Of the many outstanding works published, today we’d like to highlight “Monocular Robot Navigation with Self-Supervised Pretrained Vision Transformers” by Saavedra-Ruiz et al. at the University of Montreal.

Using visual transformers (ViT) for understanding their surroundings, Duckiebots are made capable of detecting and avoiding obstacles, while safely driving inside lanes. ViT is an emerging machine vision technique that has its root in Natural Language Processing (NLP) applications. The use of this architecture is recent and promising in Computer Vision. Enjoy the read and don’t forget to reproduce these results on your Duckiebots!

“In this work, we consider the problem of learning a perception model for monocular robot navigation using few annotated images. Using a Vision Transformer (ViT) pretrained with a label-free self-supervised method, we successfully train a coarse image segmentation model for the Duckietown environment using 70 training images. Our model performs coarse image segmentation at the 8×8 patch level, and the inference resolution can be adjusted to balance prediction granularity and real-time perception constraints. We study how best to adapt a ViT to our task and environment, and find that some lightweight architectures can yield good single-image segmentations at a usable frame rate, even on CPU. The resulting perception model is used as the backbone for a simple yet robust visual servoing agent, which we deploy on a differential drive mobile robot to perform two tasks: lane following and obstacle avoidance.”


“We propose to train a classifier to predict labels for every 8×8 patch in an image. Our classifier is a fully-connected network which we apply over ViT patch encodings to predict a coarse segmentation mask:”


“In this work, we study how embodied agents with visionbased motion can benefit from ViTs pretrained via SSL methods. Specifically, we train a perception model with only 70 images to navigate a real robot in two monocular visual-servoing tasks. Additionally, in contrast to previous SSL literature for general computer vision tasks, our agent appears to benefit more from small high-throughput models rather than large high-capacity ones. We demonstrate how ViT architectures can flexibly adapt their inference resolution based on available resources, and how they can be used in robotic application depending on the precision needed by the embodied agent. Our approach is based on predicting labels for 8×8 image patches, and is not well-suited for predicting high-resolution segmentation masks, in which case an encoder-decoder architecture should be preferred. The low resolution of our predictions does not seem to hinder navigation performance however, and we foresee as an interesting research direction how those high-throughput low-resolution predictions affect safety-critical applications. Moreover, training perception models in an SSL fashion on sensory data from the robot itself rather than generic image datasets (e.g., ImageNet) appears to be a promising research avenue, and is likely to yield visual representations that are better adapted to downstream visual servoing applications.”

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