基于自监督预训练视觉变压器的单目机器人导航

Miguel A. Saavedra-Ruiz, Sacha Morin, L. Paull
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引用次数: 2

摘要

在这项工作中,我们考虑了使用少量注释图像学习单眼机器人导航的感知模型的问题。采用无标签自监督方法预训练的视觉变形器(Vision Transformer, ViT),利用70张训练图像成功训练了Duckietown环境下的粗图像分割模型。我们的模型在$8\ × 8$ patch级别执行粗图像分割,并且可以调整推理分辨率以平衡预测粒度和实时感知约束。我们研究了如何最好地使ViT适应我们的任务和环境,并发现一些轻量级架构可以在可用的帧速率下产生良好的单图像分割,即使在CPU上也是如此。所得到的感知模型被用作一个简单而鲁棒的视觉伺服代理的主干,我们将其部署在差动驱动移动机器人上,以执行两项任务:车道跟随和避障。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Monocular Robot Navigation with Self-Supervised Pretrained Vision Transformers
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 $8\times 8$ 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.
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