基于合成数据的深度神经网络训练用于越野车辆检测

Eunchong Kim, Kanghyun Park, Hunmin Yang, Se-Yoon Oh
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引用次数: 1

摘要

随着深度学习技术的发展,使用卷积神经网络进行车辆检测已成为自动驾驶和ADAS领域的主流。利用这一点,尽管需要进行艰苦的数据采集和地面真值标注,但仍产生了大量的真实图像数据集。作为替代方案,引入了虚拟生成的图像。这使得数据收集和注释更加容易,但同时也带来了另一种问题,称为“领域差距”。例如,在越野车辆检测中,既要采集真实图像,又要避开域间隙合成图像,难以生成越野图像数据集。本文以越野陆军坦克检测为研究对象,引入了一种基于领域随机化的越野场景合成图像发生器。我们使用在真实通用对象数据集上预训练的特征提取器生成的低级特征在合成数据集上训练深度学习模型。使用该方法,我们将模型精度提高到0.86 AP@0.5IOU,优于naïve域随机化方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Training Deep Neural Networks with Synthetic Data for Off-Road Vehicle Detection
In tandem with growing deep learning technology, vehicle detection using convolutional neural network is now become a mainstream in the field of autonomous driving and ADAS. Taking advantage of this, lots of real image datasets have been produced in spite of the painstaking work of data collection and ground truth annotation. As an alternative, virtually generated images are introduced. This makes data collection and annotation much easier, but a different kind of problem called ‘domain gap’ is announced. For instance, in off-road vehicle detection, there is a difficulty in producing off-road image dataset not only by collecting real images, but also by synthesizing images sidestepping the domain gap. In this paper, focusing on the off-road army tank detection, we introduce a synthetic image generator using domain randomization on off-road scene context. We train a deep learning model on synthetic dataset using low level features form feature extractor pre-trained on real common object dataset. With proposed method, we improve the model accuracy to 0.86 AP@0.5IOU, outperforming naïve domain randomization approach.
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