Real-Time Fully Unsupervised Domain Adaptation for Lane Detection in Autonomous Driving

K. Bhardwaj, Zishen Wan, A. Raychowdhury, R. Goldhahn
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引用次数: 1

Abstract

While deep neural networks are being utilized heavily for autonomous driving, they need to be adapted to new unseen environmental conditions for which they were not trained. We focus on a safety critical application of lane detection, and propose a lightweight, fully unsupervised, real-time adaptation approach that only adapts the batch-normalization parameters of the model. We demonstrate that our technique can perform inference, followed by on-device adaptation, under a tight constraint of 30 FPS on Nvidia Jetson Orin. It shows similar accuracy (avg. of 92.19%) as a state-of-the-art semi-supervised adaptation algorithm but which does not support real-time adaptation.
基于实时全无监督域自适应的自动驾驶车道检测
虽然深度神经网络被大量用于自动驾驶,但它们需要适应新的、未被训练过的、看不见的环境条件。我们专注于车道检测的安全关键应用,并提出了一种轻量级,完全无监督的实时自适应方法,该方法仅适应模型的批归一化参数。我们证明了我们的技术可以在Nvidia Jetson Orin上30 FPS的严格约束下执行推理,然后进行设备上的适应。它显示出与最先进的半监督自适应算法相似的精度(平均为92.19%),但不支持实时自适应。
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