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A Study Of Parking-Slot Detection With The Aid Of Pixel-Level Domain Adaptation

机译:像素级域自适应辅助的停车位检测研究

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The self-parking system is an important component of self-driving vehicles. Such a system needs to detect and locate the parking-slots from surround-view images, and then guide the vehicle to the designated parking-slot. In the real world, the appearances and environmental conditions of parking-slots can be rich and varied. Thus, to train the parking-slot detection model, it is necessary to collect and label a huge quantity of surround-view images covering as many real cases as possible. Such a process is cumbersome and costly, and will be repeated whenever encountering an unseen parking condition that is quite different from the ones covered by existing training set. To this end, in this paper we propose an extensible pipeline, namely FakePS, to assist parking-slot detection model training by making use of synthetic data. Specifically, with FakePS, we can first build various simulated parking scenes and collect labeled surround-view images automatically. Besides, we resort to pixel-level domain adaptation strategies to enhance the realism of the synthetic images using unlabeled real images while preserving their label information. The efficacy of FakePS has been corroborated by experimental results.
机译:自动停车系统是自动驾驶汽车的重要组成部分。这样的系统需要从环视图像检测并定位停车位,然后将车辆引导至指定的停车位。在现实世界中,停车位的外观和环境条件可能会丰富多样。因此,为了训练停车位检测模型,有必要收集并标记覆盖尽可能多的真实情况的大量的环视图像。这样的过程麻烦且成本高昂,并且每当遇到与现有训练集所涵盖的停车条件完全不同的看不见的停车条件时,将重复该过程。为此,在本文中,我们提出了一条可扩展的管道,即FakePS,以利用合成数据来辅助停车位检测模型的训练。具体来说,使用FakePS,我们可以首先构建各种模拟的停车场景并自动收集带标签的环绕视图图像。此外,我们诉诸像素级域自适应策略,以使用未标记的真实图像增强合成图像的真实性,同时保留其标记信息。实验结果证实了FakePS的功效。

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