夜间语义分割与实例级数据增强:黑暗苏黎世基准的案例研究

Alex Liu, Zhifeng Xiao
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引用次数: 0

摘要

语义分割一直是自动驾驶技术栈中的核心学习任务。然而,目前基于深度学习的模型在夜间由于光照不足而表现不佳。在本研究中,我们提出了一种实例级的数据增强方法,增加低资源类的数量和多样性,从而为训练算法提供更多的低资源类的实例,从而鼓励模型学习更多的特征和模式,从而更好地区分原始训练集中呈现的低资源类。我们在Dark Zurich数据集上验证了该方法,这是一个典型的数据集,包含白天、黄昏和夜间拍摄的驾驶场景图像。以“person”类为例,应用实例级数据增强方法。实验结果表明,与SOTA相比,IoU提高了4.52%。结果证明了所提出方法的有效性,表明在实例级增加低资源类是一种有前途的策略,可以与其他性能提升方法一起有效补充。
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Nighttime Semantic Segmentation with Instance-level Data Augmentation: a Case Study of the Dark Zurich Benchmark
Semantic segmentation has been a core learning task in the autonomous driving technology stack. However, current deep learning-based models do not perform well at nighttime due to the low illumination. In this study, we present an instance-level data augmentation method to increase the quantity and diversity for the low-resource classes to feed more instances of these classes to the training algorithm, with an aim to encourage the model to learn more features and patterns to better distinguish the low-resource classes presented in the original training set. We validate the method on the Dark Zurich dataset, a typical dataset that contains driving scene images taking at daytime e, twilight, and nighttime. We take the ``person'' class as an example and apply the instance-level data augmentation method. Experimental results have shown significant improvement compared to the SOTA, lifting the IoU by 4.52%. The results demonstrate the efficacy of the proposed method, indicating that the augmenting low-resource classes at the instance level is a promising strategy and can be an effective complement alongside other performance boosting methods.
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