基于代价敏感深度学习模型的交通信号分类

T. Tsoi, Charles Wheelus
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引用次数: 3

摘要

深度学习在现实世界中有许多成功的应用,包括用于驾驶员辅助系统和自动驾驶汽车的交通信号识别。准确检测交通信号指示对于确保自动驾驶的安全至关重要。过去许多关于交通信号识别的研究已经完成,包括检测、分类和跟踪,由于交通信号显示的性质,数据集通常是高度不平衡的。然而,大多数研究简单地忽略了少数群体,没有考虑交通信号指示固有的成本敏感信息。本文评估了几种适用于交通信号分类中深度学习模型的代价敏感技术。在评估中使用卷积神经网络(CNN)作为基线模型。然后将成本敏感技术(包括成本比例拒绝抽样和成本敏感损失函数的使用)应用于基线CNN模型,以评估和比较使用成本信息在交通信号分类中的效果。在此评估中假设了任意的成本信息,但所得到的模型并没有提高预测的准确性。未来的研究可能会考虑更精心制作的成本信息和/或其他成本敏感技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Traffic Signal Classification with Cost-Sensitive Deep Learning Models
Deep learning has many successful real-world applications including traffic signal recognition, which are used in driver assistance systems and autonomous vehicles. Accurate detection of traffic signal indications is critical to ensure safety under autonomous driving. Many past studies have been completed on traffic signal recognition including detection, classification and tracking with datasets which are typically highly imbalanced due to the nature of traffic signal displays. However, most studies simply ignored the minority classes and did not consider cost-sensitive information inherent to traffic signal indications. This paper evaluated several cost-sensitive techniques applicable to deep learning models in traffic signal classification. A convolutional neural network (CNN) was used in the evaluation as the baseline model. Cost-sensitive techniques including cost-proportionate rejection sampling and the use of cost-sensitive loss function was then applied to the baseline CNN model to evaluate and compare the effects of using cost information in traffic signal classification. Arbitrary cost information was assumed in this evaluation, but the resulting models did not improve accuracy in prediction. Future studies may consider more carefully crafted cost information and/or other cost-sensitive techniques.
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